Round Robin Shutouts

At this year’s World Tour Finals, we were spared the knottiest sort of round robin tiebreakers.  Each group had a clear winner (Rafael Nadal and Novak Djokovic) who went undefeated, along with another player (David Ferrer and Richard Gasquet) who failed to win a single match.

Since 1987, 33 players have recorded a 3-0 record in Tour Finals round-robin play.  This year is the first time since 2010 (Nadal and Roger Federer) that two players have done so, and before that, we have to go back to 2005 (Federer and Nikolay Davydenko).  It’s not that rare of an event–this year is the 11th time since 1987 that two players have beaten every opponent in their group.

Undefeated players are hardly guaranteed further advances, however.  Those 33 undefeated competitors have a mere 17-16 record in the semifinals, and the 17 men who reached the final won the title only nine times, against nine final-round losses.  (Twice, two undefeated players faced off in the finals–the aforementioned 2010 event along with 1993, when Michael Stich and Pete Sampras contested the title.)

The tiny sample of three round-robin matches pales in predictive value next to the old standby of ATP ranking.  In the last 26 years, the higher-ranked player has won 16 finals.  In the more top-heavy 21st century, the title has gone to the man with the superior ranking 11 of 13 times.  (Advantage: Nadal.)

That said, the gap between the two finalists is traditionally greater than it is expected to be tomorrow.  (If Stanislas Wawrinka upsets Novak Djokovic in the second semifinal, you can disregard this paragraph.  Sorry, Stan, but I’m betting against you.)  Only twice in the round-robin era have the top two players in the ATP rankings met in the concluding match of the Tour Finals–2010 (again) and 2012 (Djokovic d. Federer).

Not a shutout, but shut out

Exactly as many players–33 through 2012–have gone 0-3 in the round robin as the number who did the opposite.  Ferrer and Gasquet find themselves in quality company.

Ferrer is the 7th player ranked in the top three to lose three round robin matches.  In 2001, #1 Gustavo Kuerten was winless, only a year after claiming the championship.  Jim Courier (1993), Juan Carlos Ferrero (2003), and Nadal (2009) went 0-3 from a #2 ranking, while Thomas Muster (1995) and Djokovic (2007) did so while ranked #3.

Ferrer is notable for another dubious achievement: going 0-3 twice.  He previously did so in 2010, so this year, he matches the mark of Michael Chang, the only other man in the round-robin era to post multiple 0-3s, having gone winless in both 1989 and 1992.

His age may work against him, but there is a glimmer of hope for Ferrer.  Four players (including Kuerten, mentioned above) have gone 0-3 at one Tour Finals and won the title at another.  Andre Agassi was winless in 1989, then won the event in 1990.  Stich was 0-3 in 1991, then claimed the title in 1993.  As we’ve seen, Djokovic failed to win a single match in 2007, yet came back to win the tournament in 2008.  (Then did so again last year.)

If Nadal wins tomorrow, we can add one more name to this list, in his case finally adding the trophy to his collection four years after suffering through a winless week.  His 4-0 record so far this week may be no guarantee of success in the final, but it will hardly count against him.

Match reports: I charted today’s Federer-Nadal semifinal, as well as yesterday’s Federer-del Potro match.  Click the links for exhaustive serve, return, and shot statistics.

Worth a read: Carl Bialik analyzes ATP rematches–pairings like Fed-Delpo that faced off in back-to-back weeks.  As usual, we have to rewrite the rules for Rafa.

2013 World Tour Finals Forecast

The field for the World Tour Finals next week is set, and the round robin groups are determined.  That allows us to simulate the event, and–using my player ratings–project the outcome.  (My ratings don’t yet incorporate Paris results. David Ferrer and Roger Federer may get mild boosts once their showings this week are considered.)

Obviously, Rafael Nadal is your favorite.  He has a substantial advantage in every category. He’s more likely than any other contender to progress through the round robin stage undefeated, to reach the final four, to play in the title match, and to win the championship.

Not only is Nadal the best player in the field–even on hard courts–but he was also favored by the draw.  For all of Ferrer’s success in Bercy, he is a weaker hard-court player than Juan Martin del Potro, who will play in Novak Djokovic‘s half during the round robin stage.  Federer, despite his decline, is a still more of a hard-court threat than Tomas Berdych–and Nadal drew Berdych.  The only disadvantage in Nadal’s fortunes is represented by Stanislas Wawrinka, who is considerably more dangerous than Richard Gasquet.  As the forecast below shows, Gasquet is very unlikely to be a factor here.

Here is the complete forecast, showing each player’s chances of winning 3, 2, 1, or 0 matches in the round robin, along with reaching the semis, reaching the final, and winning the event:

Player     3-0  2-1  1-2  0-3     SF      F      W  
Nadal      35%  44%  18%   3%  81.0%  49.2%  31.1%  
Djokovic   25%  45%  26%   5%  70.8%  43.0%  25.0%  
Ferrer      8%  34%  42%  16%  42.4%  16.4%   6.0%  
Del Potro  15%  41%  35%   9%  55.9%  29.4%  14.1%  
Federer    11%  37%  39%  12%  48.4%  23.8%  10.7%  
Berdych     7%  32%  43%  18%  39.6%  15.2%   5.4%  
Wawrinka    6%  31%  43%  19%  37.0%  13.7%   4.8%  
Gasquet     4%  22%  45%  29%  24.9%   9.3%   3.1%

As I mentioned above, while Nadal (and, to a lesser extent, the other three members of his group) got the fortunate draw, the impact isn’t that great.  Here is a “draw-neutral” forecast, which randomizes the group assignments with each simulation:

Player        SF      F      W  
Nadal      77.9%  48.4%  30.2%  
Djokovic   74.4%  43.8%  25.7%  
Ferrer     40.6%  16.0%   5.9%  
del Potro  57.3%  30.2%  14.5%  
Federer    50.5%  24.4%  10.6%  
Berdych    37.7%  14.6%   5.3%  
Wawrinka   32.4%  12.4%   4.3%  
Gasquet    29.3%  10.2%   3.4%

The biggest losers in the draw ceremony were Djokovic and Gasquet.  While Novak’s chances of reaching and winning the final are similar, the draw pushed his probability of surviving the round robin stage from 74.4% down to 70.8%.  The odds are against Gasquet in any scenario, but the specific group assignments determined today knocked his chances of surviving the first three matches from 29.3% down to 24.9%.

The good news for Gasquet is that he’s a much, much better eight seed than Janko Tipsarevic was last year.  And with Richie at the end of what may be his career year, it’s that much more likely that anyone in the field of eight could make things interesting this week.

[update: Thanks to Jovan M. for catching some dodgy numbers in the first table. Due to a coding error, I showed each player’s chances of reaching each win total to be too low.  The SF/F/W columns in both tables are unchanged.]

The Most Lopsided ATP Semifinals

In the latest step of Rafael Nadal‘s minor league rehab assignment comeback, he’ll play Martin Alund tonight in the Sao Paulo semifinals.  Yes, the same Martin Alund who had never played a tour-level event before last week, has a career losing record in challengers, and only made the main draw as a lucky loser.

The jrank forecast gives Alund a 4.3% chance of beating Rafa tonight which, even having seen Nadal’s unconvincing win over Carlos Berlocq last night, seems a bit generous.

It also seems odd.  Even in lower-rung ATP events, players of Alund’s caliber (even a caliber or two above that) rarely reach the semis.  In San Jose this week, the lowest-ranked player in the semifinals is #22 Tommy Haas, assuring fans in California a very different level of play today.

As it turns out, hugely lopsided semifinals do occur now and then, and occasionally they even result in upsets.

Since the beginning of 2001, there have been about 1600 tour-level semifinals.  Using jrank, I estimated each player’s chances in those matches.  Nadal’s 95.7% probability of winning tonight doesn’t even rank in the top ten most lopsided semis.

Rafa has long been a stalwart of one-sided semifinals.  His dominance on clay is reflected in the numbers, and when he does play smaller events, he makes some opponents look woefully overmatched.  Of the 11 semifinals that were more lopsided than tonight’s showdown, Rafa was the favorite in four–including last week’s dismantling of Jeremy Chardy.  At the 2008 Barcelona event, Denis Gremelmayr had a mere 1.6% chance of triumphing over Rafa.  He won a single game.

(Chardy is rated quite a bit higher than Alund, but after last week’s loss to Horacio Zeballos, Nadal’s rating has fallen accordingly.  The jrank forecast for this week’s semifinal is thus almost identical to last week’s.)

Of course, there’s a big difference between a high probability and a certainty, and some of these lopsided matchups have generated surprises.  In Washington in 2007, the virtually unknown John Isner took out Gael Monfils, despite a mere 2.4% chance of victory.  The same year in Amersfoort, qualifier and eventual champion Steve Darcis defeated Mikhail Youzhny, overcoming a pre-match probability of only 6.1%.

Even Nadal has suffered in these situations.  The third-biggest ATP semifinal upset was Rafa’s 2010 Bangkok loss at the hands of Guillermo Garcia Lopez.

In all of those examples the underdog was a player of undeniable talent, while Alund has stumbled into his first ATP semifinal.  But as Nadal’s stumbles against Zeballos and Berlocq have shown us, it doesn’t matter so much who is across the net–the king of clay is far from his usual invincible self.

(After the break, find a list of the 63 most lopsided ATP semifinals since 2001. Asterisks denote upsets.)

Continue reading The Most Lopsided ATP Semifinals

The 2012 World Tour Finals Forecast

With Jo Wilfried Tsonga‘s win last night over Nicolas Almagro, the field is set for the tour finals.  Novak Djokovic and Roger Federer will each head one of the two round robin groups, and will be joined by Andy Murray, David Ferrer, Tomas Berdych, Juan Martin Del Potro, Tsonga, and Janko Tipsarevic.

Despite Federer’s dominance on indoor hard courts last year, he is hardly the same unstoppable force this season.  Not only did he lose in last week’s final to Del Potro, but my rating algorithm, Jrank, views him as a slightly inferior hard-court player to Murray.  Though it will certainly be close, my forecast favors both the Serb and the Brit over the soon-to-be world #2:

Player         SF      F      W  
Djokovic    77.7%  47.7%  28.8%  
Murray      70.0%  41.9%  23.3%  
Federer     72.6%  40.4%  22.3%  
Del Potro   45.9%  20.2%   8.3%  
Ferrer      45.4%  17.7%   6.5%  
Berdych     38.8%  15.2%   5.5%  
Tsonga      30.4%  11.3%   3.8%  
Tipsarevic  19.2%   5.5%   1.5%

As always, there are as many reasons to question these numbers as there are to put one’s faith in them.  Djokovic’s loss to Sam Querrey this week seriously questions his current ability to play his best tennis.  Murray’s loss to rising star Jerzy Janowicz isn’t quite so troubling, but it also fails to fit the profile of a dominant player.

In the bottom half of the pack, one or two of these guys are likely to play in the Paris final, meaning they’ll be relatively tired upon arrival in London.  It’s one thing to play the first round of a tournament on weak legs; it’s another when that event is the Tour Finals and your first opponent is a fellow top-tenner.

[UPDATE, 3 Nov]

The draw is set.  Federer is joined in Group B with Ferrer, Del Potro, and Tipsarevic, leaving Djokovic with Murray, Berdych, and Tsonga.  This is a dream setup for Federer, and even dreamier for Delpo.

Federer’s career H2H against the three men in his group is 31-3.  His career H2H against Novak’s opponents is 27-18.  He might prefer not to face Del Potro again so soon, but historically, the Argentine hasn’t been any more dangerous for Roger than any of the three men Djokovic will have to face.

As noted, it’s the absolute perfect draw for Delpo, too.  Statistically, Federer is weaker than Djokovic.  My numbers might overstate Ferrer’s competitiveness in London (and they still aren’t very high), and Tipsarevic is essentially a non-factor.  In the pre-draw simulation above, Del Potro has a 45.9% chance of reaching the semis and a 8.3% chance of winning it all.  Post-draw, 54.4% and 9.2%.  It’s an uphill battle no matter what the draw, but avoiding the Murray group is a huge help.

Here are the projections, now reflecting the draw:

Player         SF      F      W  
Djokovic    74.0%  47.2%  28.2%  
Federer     76.7%  41.2%  23.0%  
Murray      68.5%  41.6%  22.6%  
Del Potro   54.4%  22.4%   9.2%  
Ferrer      46.9%  17.9%   6.8%  
Berdych     31.2%  13.5%   5.0%  
Tsonga      26.3%  10.4%   3.6%  
Tipsarevic  22.1%   5.8%   1.6%

Thanks to his relatively weak round-robin group, Federer has the best shot at reaching the semis, but only the third best chance of reaching the final, since he’s likely to face either Djokovic or Murray in his semi.  Despite the tougher draw, Djokovic remains the favorite to win the event and put an exclamation point on his season-ending #1 ranking.

(A quick programming note for regular readers: I won’t be able to update these predictions throughout the tournament on TennisAbstract.com, and due to an uncooperative travel schedule, the next TA.com update (including Bercy results) may not occur until Tuesday or Wednesday.)

The Five-Set Advantage

Italian translation at settesei.it

Last night, the heavily-favored Janko Tipsarevic won his first round match against Guillaume Rufin despite dropping the first two sets.  Had Rufin taken the first two sets against Janko in Cincinnati, Monte Carlo, or just about anywhere else on the ATP tour, he would’ve scored his first top-ten scalp.

Other seeds have similar stories.  Milos Raonic, Marin Cilic, Gilles Simon, and Alexandr Dolgopolov all would be headed home had their matches been judged on the first three sets.  Only two seeds had the opposite experience: Juan Monaco and Tommy Haas were each up two sets to love before losing their next three.

Simply (if tongue-twistingly) put, the five-set format favors favorites.

In all grand slam first rounds since 1991, seeds have come back from 0-2 or 1-2 down against unseeded players 125 times, while seeds have squandered 2-0 or 2-1 advantages only 71 times.  Just looking at those 32 matches per slam, that’s almost one upset averted per tournament.  The US Open draw would look awfully different right now if Tipsarevic, Raonic, Cilic, Simon, and Dolgopolov were among the first-round losers, even if Haas and Monaco replaced them in the second round.

Set theory

These numbers shouldn’t surprise us, since longer formats should do a better job of revealing the better player.  There are reasons why the baseball World Series is best-of-7 instead of a single game and the final sets of singles matches aren’t super-tiebreaks.  The difference between best-of-3 and best-of-5 isn’t quite so simple–fitness and mental strength play a part–but from a purely mathematical perspective, there should be fewer upsets in best-of-5s than best-of-3s.

Take Raonic for example.  My numbers (which don’t differentiate between 3-set and 5-set matches–shame on me) gave him approximately a 70% chance of beating Santiago Giraldo.  If 70% is his probability of winning a three-set match and sets are independent (more on that in a minute), that number implies a 63.7% chance of winning any given set.  A 63.7% chance of winning a set translates into a 74.4% shot at winning a best-of-five.

A four- or five-point increase doesn’t radically change the complexion of the tournament, but it does make a different.  My original numbers suggested that we could expect 20 or 21 first-round upsets.  If we adjust my odds in the manner I described for Raonic, the likely number of upsets falls to 18.

The most important implication here is the effect it has on the chances that top players reach the final rounds.  Earlier this week a commenter took me to task for my unintuively low probabilities that Federer and Djokovic would reach the semifinals.  Obviously, if you give an overwhelming favorite a boost in every round, as the five-set format does, the cumulative effect is substantial.  For the top seeds, it can halve their probability of losing against a much lower-ranked opponent.

For Federer, adjusting the odds to reflect the theoretical advantage of the best-of-five format raises his chances of reaching the semis from 52.5% to over 65%.  Djokovic’s numbers are almost identical.

Dependent outcomes

Everything I’ve said so far seems intuitively sound, with one caveat.  Earlier I mentioned the assumptions that sets are independent.  That is, a player has the same chance of winning a particular set no matter what the outcome of the previous sets–there is no “hangover effect” based on what has come before.

Tennis players, even professionals, aren’t robots, so the assumption probably isn’t completely valid.  Sometimes frustration with one’s own performance, the environment, or line calls can carry over into the next set and give one’s opponent an advantage.  Perhaps more importantly, the result of one set sometimes reveal that pre-match expectations were wrong in the first place.  Had David Nalbandian played this week instead of withdrawn, no number of sets would reveal that he was a better player–his health would prevent him from playing at his usual level.

Another related caveat is that beyond a certain match length, the outcome is no longer dependent on the same skills.  When Michael Russell played Yuichi Sugita in the Wimbledon qualifying round, the two men looked equal for four sets.  In the fifth, Russell’s fitness gave him an advantage that didn’t exist in the first couple of hours.  In this case, an estimate of Russell’s probability of winning a set against Sugita may be independent of previous outcomes, but it is not the same for every set.

These allowances aside, there is little doubt that favorites are more likely to win best-of-five matches than best-of-threes.  Whether you want to watch the entire thing … that’s another story.

2012 US Open Men’s Projections

Here are my pre-tournament odds for the 2012 US Open.  For some background reading, follow the links for more on my player rating systemcurrent rankings, and more on how I simulate tournaments.

I’ve made one tweak to the algorithm (for men only) since last posting odds.  As many of you have noticed, I seem to underestimate the chances that the very best players will progress through the draw.  Some analysis of past results showed that this is correct, so for now, there’s a bit of a band-aid in the system, boosting the odds of the current top ten in a way that reflects how they’ve outperformed my projections in the past.

Still, Federer and Djokovic both have well under 30% chances of winning the Open, and fall just short of 50% between them.  My rankings give Djokovic a very slight edge despite Federer’s big season, and the tournament draw, which places Murray in Federer’s half, firmly tilts the scales in the Serb’s favor.

    Player                    R64    R32    R16        W  
1   Roger Federer           90.6%  84.0%  74.0%    23.2%  
    Donald Young             9.4%   5.4%   2.5%     0.0%  
    Maxime Authom           32.9%   2.3%   0.7%     0.0%  
    Bjorn Phau              67.1%   8.3%   3.7%     0.0%  
    Albert Ramos            50.1%  15.1%   1.7%     0.0%  
    Robby Ginepri           49.9%  14.8%   1.7%     0.0%  
    Rui Machado             15.1%   5.5%   0.4%     0.0%  
25  Fernando Verdasco       84.9%  64.6%  15.4%     0.3%  

    Player                    R64    R32    R16        W  
23  Mardy Fish              77.1%  50.6%  33.9%     1.3%  
    Go Soeda                22.9%   8.8%   3.3%     0.0%  
    Nikolay Davydenko       88.6%  39.4%  21.4%     0.2%  
    Guido Pella             11.4%   1.2%   0.1%     0.0%  
    Ivo Karlovic            67.5%  34.2%  14.7%     0.1%  
    Jimmy Wang              32.5%  10.9%   3.0%     0.0%  
    Michael Russell         35.7%  16.2%   5.4%     0.0%  
16  Gilles Simon            64.3%  38.6%  18.1%     0.3%  

    Player                    R64    R32    R16        W  
11  Nicolas Almagro         52.9%  33.6%  20.2%     0.3%  
    Radek Stepanek          47.1%  28.5%  16.5%     0.2%  
    Nicolas Mahut           48.7%  18.2%   8.6%     0.0%  
    Philipp Petzschner      51.3%  19.6%   9.5%     0.0%  
    Blaz Kavcic             45.9%  15.3%   4.8%     0.0%  
    Flavio Cipolla          54.1%  19.8%   6.9%     0.0%  
    Jack Sock               19.8%   7.7%   1.9%     0.0%  
22  Florian Mayer           80.2%  57.2%  31.6%     0.5%  

    Player                    R64    R32    R16        W  
27  Sam Querrey             64.9%  51.7%  27.6%     0.7%  
    Yen-Hsun Lu             35.1%  23.9%   9.3%     0.1%  
    Ruben Ramirez Hidalgo   31.4%   4.8%   0.8%     0.0%  
    Somdev Devvarman        68.6%  19.6%   5.5%     0.0%  
    Denis Istomin           62.4%  23.8%  11.8%     0.1%  
    Jurgen Zopp             37.6%  10.2%   3.8%     0.0%  
    David Goffin            28.7%  14.8%   6.9%     0.0%  
6   Tomas Berdych           71.3%  51.3%  34.3%     1.7%  

    Player                    R64    R32    R16        W  
3   Andy Murray             87.6%  76.3%  63.9%    13.7%  
    Alex Bogomolov Jr.      12.4%   6.3%   2.7%     0.0%  
    Hiroki Moriya           22.9%   1.8%   0.4%     0.0%  
    Ivan Dodig              77.1%  15.7%   7.8%     0.1%  
    Thomaz Bellucci         65.9%  29.0%   6.6%     0.1%  
    Pablo Andujar           34.1%   9.9%   1.4%     0.0%  
    Robin Haase             31.9%  15.6%   3.0%     0.0%  
30  Feliciano Lopez         68.1%  45.5%  14.1%     0.3%  

    Player                    R64    R32    R16        W  
24  Marcel Granollers       63.8%  37.7%  19.2%     0.2%  
    Denis Kudla             36.2%  16.4%   6.3%     0.0%  
    Lukas Lacko             46.7%  20.6%   8.4%     0.0%  
    James Blake             53.3%  25.2%  10.8%     0.1%  
    Paul-Henri Mathieu      45.6%  14.3%   5.9%     0.0%  
    Igor Andreev            54.4%  19.2%   8.7%     0.0%  
    Santiago Giraldo        30.9%  16.5%   7.7%     0.0%  
15  Milos Raonic            69.1%  50.0%  33.0%     1.0%  

    Player                    R64    R32    R16        W  
12  Marin Cilic             70.6%  56.4%  31.1%     0.9%  
    Marinko Matosevic       29.4%  18.6%   6.5%     0.0%  
    Daniel Brands           70.6%  20.5%   6.0%     0.0%  
    Adrian Ungur            29.4%   4.5%   0.7%     0.0%  
    Tim Smyczek             53.1%  15.1%   5.8%     0.0%  
    Bobby Reynolds          46.9%  12.1%   4.3%     0.0%  
    Guido Andreozzi          5.7%   0.9%   0.1%     0.0%  
17  Kei Nishikori           94.3%  71.9%  45.6%     1.7%  

    Player                    R64    R32    R16        W  
32  Jeremy Chardy           84.1%  55.5%  23.6%     0.3%  
    Filippo Volandri        15.9%   4.3%   0.7%     0.0%  
    Tatsuma Ito             44.6%  16.6%   4.5%     0.0%  
    Matthew Ebden           55.4%  23.6%   7.3%     0.0%  
    Martin Klizan           42.3%   8.7%   3.2%     0.0%  
    Alejandro Falla         57.7%  14.7%   6.4%     0.0%  
    Karol Beck              16.7%   8.2%   3.2%     0.0%  
5   Jo-Wilfried Tsonga      83.3%  68.5%  51.2%     3.9%  

    Player                    R64    R32    R16        W  
8   Janko Tipsarevic        81.6%  69.4%  49.7%     1.9%  
    Guillaume Rufin         18.4%  10.4%   3.8%     0.0%  
    Brian Baker             40.9%   7.1%   1.8%     0.0%  
    Jan Hajek               59.1%  13.1%   4.5%     0.0%  
    Grega Zemlja            55.9%  22.5%   8.1%     0.0%  
    Ricardo Mello           44.1%  15.5%   4.7%     0.0%  
    Cedrik-Marcel Stebe     39.2%  21.6%   8.2%     0.0%  
29  Viktor Troicki          60.8%  40.4%  19.2%     0.2%  

    Player                    R64    R32    R16        W  
19  Philipp Kohlschreiber   54.1%  32.9%  16.2%     0.3%  
    Michael Llodra          45.9%  26.1%  11.9%     0.2%  
    Grigor Dimitrov         54.9%  23.7%   9.8%     0.1%  
    Benoit Paire            45.1%  17.4%   6.4%     0.0%  
    Mikhail Kukushkin       46.2%  14.5%   6.0%     0.0%  
    Jarkko Nieminen         53.8%  18.3%   8.2%     0.1%  
    Xavier Malisse          33.7%  19.2%   9.6%     0.1%  
9   John Isner              66.3%  48.0%  31.9%     1.6%  

    Player                    R64    R32    R16        W  
13  Richard Gasquet         82.1%  51.9%  27.6%     0.9%  
    Albert Montanes         17.9%   5.3%   1.3%     0.0%  
    Jurgen Melzer           82.7%  39.6%  18.1%     0.3%  
    Bradley Klahn           17.3%   3.1%   0.5%     0.0%  
    Steve Johnson           35.5%   5.3%   1.1%     0.0%  
    Rajeev Ram              64.5%  15.4%   4.7%     0.0%  
    Ernests Gulbis          27.6%  18.4%   7.6%     0.0%  
21  Tommy Haas              72.4%  60.9%  39.1%     2.5%  

    Player                    R64    R32    R16        W  
28  Mikhail Youzhny         68.2%  49.4%  22.9%     0.6%  
    Gilles Muller           31.8%  17.4%   5.2%     0.0%  
    Tobias Kamke            48.9%  15.9%   4.2%     0.0%  
    Lleyton Hewitt          51.1%  17.2%   4.6%     0.0%  
    Igor Sijsling           69.4%  17.1%   7.3%     0.0%  
    Daniel Gimeno-Traver    30.6%   4.0%   1.0%     0.0%  
    Kevin Anderson          27.6%  18.3%   9.8%     0.1%  
4   David Ferrer            72.4%  60.6%  44.9%     3.9%  

    Player                    R64    R32    R16        W  
7   Juan Martin Del Potro   70.1%  55.3%  45.2%     4.6%  
    David Nalbandian        29.9%  18.4%  12.2%     0.3%  
    Benjamin Becker         48.9%  12.7%   7.0%     0.0%  
    Ryan Harrison           51.1%  13.6%   7.7%     0.1%  
    Lukasz Kubot            71.1%  38.8%  11.8%     0.1%  
    Leonardo Mayer          28.9%  10.0%   1.5%     0.0%  
    Tommy Robredo           31.0%  11.8%   2.1%     0.0%  
26  Andreas Seppi           69.0%  39.5%  12.5%     0.1%  

    Player                    R64    R32    R16        W  
20  Andy Roddick            89.4%  57.3%  36.9%     1.1%  
    Rhyne Williams          10.6%   2.0%   0.4%     0.0%  
    Carlos Berlocq          23.0%   5.2%   1.5%     0.0%  
    Bernard Tomic           77.0%  35.5%  19.7%     0.3%  
    Edouard Roger-Vasselin  44.4%  14.4%   4.3%     0.0%  
    Fabio Fognini           55.6%  21.1%   7.3%     0.0%  
    Guillermo Garcia-Lopez  38.8%  22.5%   8.9%     0.0%  
10  Juan Monaco             61.2%  41.9%  21.0%     0.4%  

    Player                    R64    R32    R16        W  
14  Alexandr Dolgopolov     61.8%  36.8%  19.6%     0.3%  
    Jesse Levine            38.2%  18.1%   7.7%     0.0%  
    Marcos Baghdatis        67.8%  34.5%  17.2%     0.2%  
    Matthias Bachinger      32.2%  10.6%   3.5%     0.0%  
    Steve Darcis            59.5%  23.6%  10.8%     0.1%  
    Malek Jaziri            40.5%  12.6%   4.6%     0.0%  
    Sergiy Stakhovsky       28.8%  14.1%   5.8%     0.0%  
18  Stanislas Wawrinka      71.2%  49.8%  30.9%     0.8%  

    Player                    R64    R32    R16        W  
31  Julien Benneteau        64.7%  43.7%   9.6%     0.3%  
    Olivier Rochus          35.3%  18.7%   2.8%     0.0%  
    Dennis Novikov          34.1%   9.6%   1.0%     0.0%  
    Jerzy Janowicz          65.9%  28.1%   4.4%     0.0%  
    Rogerio Dutra Silva     39.5%   2.5%   0.6%     0.0%  
    Teymuraz Gabashvili     60.5%   5.4%   1.9%     0.0%  
    Paolo Lorenzi            6.4%   3.6%   1.2%     0.0%  
2   Novak Djokovic          93.6%  88.6%  78.5%    26.5%

2012 US Open Women’s Projections

Here are my pre-tournament odds for the 2012 US Open.  For some background reading, follow the links for more on my player rating systemcurrent rankings, and more on how I simulate tournaments.

    Player                         R64    R32    R16        W  
1   Victoria Azarenka            92.6%  83.5%  70.0%    12.5%  
    Alexandra Panova              7.4%   3.2%   1.0%     0.0%  
    Barbora Zahlavova Strycova   46.8%   6.0%   2.1%     0.0%  
    Kirsten Flipkens             53.2%   7.3%   2.7%     0.0%  
    Su-Wei Hsieh                 56.4%  24.1%   5.4%     0.0%  
    Magdalena Rybarikova         43.6%  16.0%   2.9%     0.0%  
    Virginie Razzano             41.4%  22.8%   5.2%     0.0%  
28  Jie Zheng                    58.6%  37.1%  10.6%     0.2%  

    Player                         R64    R32    R16        W  
18  Julia Goerges                80.7%  66.0%  37.5%     0.8%  
    Kristyna Pliskova            19.3%  10.1%   2.6%     0.0%  
    Mandy Minella                50.2%  12.0%   3.0%     0.0%  
    Olivia Rogowska              49.8%  11.9%   2.9%     0.0%  
    Stephanie Foretz Gacon       43.0%   7.4%   2.0%     0.0%  
    Anna Tatishvili              57.0%  12.4%   4.0%     0.0%  
    Sorana Cirstea               40.3%  30.8%  16.9%     0.2%  
16  Sabine Lisicki               59.7%  49.4%  31.2%     0.8%  

    Player                         R64    R32    R16        W  
9   Na Li                        85.7%  75.7%  41.9%     4.6%  
    Heather Watson               14.3%   8.0%   1.6%     0.0%  
    Lesia Tsurenko               45.0%   6.6%   1.0%     0.0%  
    Casey Dellacqua              55.0%   9.7%   1.8%     0.0%  
    Samantha Crawford            14.0%   0.5%   0.0%     0.0%  
    Laura Robson                 86.0%  14.2%   3.6%     0.0%  
    Victoria Duval                0.9%   0.1%   0.0%     0.0%  
23  Kim Clijsters                99.1%  85.3%  50.1%     5.5%  

    Player                         R64    R32    R16        W  
31  Varvara Lepchenko            66.9%  44.1%  15.7%     0.0%  
    Mathilde Johansson           33.1%  16.1%   3.7%     0.0%  
    Anastasia Rodionova          55.9%  23.4%   5.9%     0.0%  
    Julia Cohen                  44.1%  16.4%   3.5%     0.0%  
    Edina Gallovits-Hall         44.2%   7.1%   2.7%     0.0%  
    Stefanie Voegele             55.8%  10.8%   4.7%     0.0%  
    Petra Martic                 25.5%  17.6%  10.7%     0.0%  
7   Samantha Stosur              74.5%  64.5%  53.0%     2.1%  

    Player                         R64    R32    R16        W  
3   Maria Sharapova              86.5%  77.7%  67.0%     9.3%  
    Melinda Czink                13.5%   7.9%   4.1%     0.0%  
    Lourdes Dominguez Lino       48.9%   6.9%   3.0%     0.0%  
    Sesil Karatantcheva          51.1%   7.4%   3.3%     0.0%  
    Timea Bacsinszky             70.8%  19.4%   2.5%     0.0%  
    Mallory Burdette             29.2%   3.9%   0.3%     0.0%  
    Lucie Hradecka               38.0%  27.1%   5.7%     0.0%  
27  Anabel Medina Garrigues      62.0%  49.6%  14.1%     0.1%  

    Player                         R64    R32    R16        W  
19  Nadia Petrova                67.0%  36.1%  19.5%     0.2%  
    Jarmila Gajdosova            33.0%  12.0%   4.4%     0.0%  
    Simona Halep                 49.9%  25.8%  12.8%     0.1%  
    Iveta Benesova               50.1%  26.1%  13.0%     0.1%  
    Alexandra Cadantu            21.3%   4.5%   1.0%     0.0%  
    Aleksandra Wozniak           78.7%  37.7%  18.7%     0.2%  
    Melanie Oudin                30.9%  13.9%   5.3%     0.0%  
15  Lucie Safarova               69.1%  43.9%  25.4%     0.4%  

    Player                         R64    R32    R16        W  
11  Marion Bartoli               78.4%  46.4%  28.9%     1.2%  
    Jamie Hampton                21.6%   6.4%   2.1%     0.0%  
    Romina Oprandi               24.5%   7.1%   2.3%     0.0%  
    Andrea Petkovic              75.5%  40.2%  23.9%     0.7%  
    Kristina Mladenovic          37.5%   7.2%   1.4%     0.0%  
    Marina Erakovic              62.5%  17.6%   4.9%     0.0%  
    Daniela Hantuchova           48.8%  36.5%  17.6%     0.4%  
17  Anastasia Pavlyuchenkova     51.2%  38.7%  18.9%     0.5%  

    Player                         R64    R32    R16        W  
25  Yanina Wickmayer             82.8%  64.6%  26.3%     0.6%  
    Julia Glushko                17.2%   7.3%   1.2%     0.0%  
    Pauline Parmentier           45.4%  11.9%   2.1%     0.0%  
    Michaella Krajicek           54.6%  16.2%   3.3%     0.0%  
    Nicole Gibbs                 23.5%   1.7%   0.3%     0.0%  
    Alize Cornet                 76.5%  15.0%   5.8%     0.0%  
    Polona Hercog                15.7%   9.2%   3.9%     0.0%  
5   Petra Kvitova                84.3%  74.0%  57.1%     6.9%  

    Player                         R64    R32    R16        W  
8   Caroline Wozniacki           85.1%  72.5%  52.5%     4.1%  
    Irina-Camelia Begu           14.9%   7.6%   2.4%     0.0%  
    Silvia Soler-Espinosa        57.0%  12.3%   4.3%     0.0%  
    Alla Kudryavtseva            43.0%   7.6%   2.2%     0.0%  
    Tsvetana Pironkova           68.7%  48.3%  22.8%     0.5%  
    Camila Giorgi                31.3%  16.4%   5.2%     0.0%  
    Ayumi Morita                 37.6%  10.7%   2.6%     0.0%  
26  Monica Niculescu             62.4%  24.5%   8.0%     0.0%  

    Player                         R64    R32    R16        W  
22  Francesca Schiavone          55.4%  41.9%  18.9%     0.2%  
    Sloane Stephens              44.6%  31.9%  12.9%     0.1%  
    Akgul Amanmuradova           52.9%  14.2%   3.3%     0.0%  
    Tatjana Malek                47.1%  12.0%   2.5%     0.0%  
    Kimiko Date-Krumm            29.2%   5.8%   1.8%     0.0%  
    Sofia Arvidsson              70.8%  25.3%  13.4%     0.1%  
    Elina Svitolina              13.8%   4.5%   1.4%     0.0%  
12  Ana Ivanovic                 86.2%  64.4%  45.8%     1.6%  

    Player                         R64    R32    R16        W  
14  Maria Kirilenko              67.6%  50.9%  31.6%     0.6%  
    Chanelle Scheepers           32.4%  19.5%   8.6%     0.0%  
    Agnes Szavay                 16.2%   1.4%   0.2%     0.0%  
    Greta Arn                    83.8%  28.2%  11.2%     0.0%  
    Galina Voskoboeva            59.1%  30.2%  15.0%     0.1%  
    Arantxa Rus                  40.9%  17.3%   7.1%     0.0%  
    Andrea Hlavackova            30.0%  11.4%   4.0%     0.0%  
24  Klara Zakopalova             70.0%  41.1%  22.3%     0.2%  

    Player                         R64    R32    R16        W  
32  Shuai Peng                   57.6%  25.3%   5.2%     0.1%  
    Elena Vesnina                42.4%  15.8%   2.6%     0.0%  
    Ekaterina Makarova           80.0%  52.4%  14.9%     0.8%  
    Eleni Daniilidou             20.0%   6.5%   0.8%     0.0%  
    Mirjana Lucic                35.6%   3.0%   0.8%     0.0%  
    Maria Jose Martinez Sanchez  64.4%   8.7%   3.4%     0.0%  
    Coco Vandeweghe               8.2%   4.1%   1.3%     0.0%  
4   Serena Williams              91.8%  84.2%  70.9%    26.1%  

    Player                         R64    R32    R16        W  
6   Angelique Kerber             88.6%  65.7%  48.5%     6.0%  
    Anne Keothavong              11.4%   3.3%   1.0%     0.0%  
    Bethanie Mattek-Sands        30.1%   6.3%   2.4%     0.0%  
    Venus Williams               69.9%  24.7%  13.9%     0.4%  
    Johanna Konta                42.7%  10.2%   1.6%     0.0%  
    Timea Babos                  57.3%  16.6%   3.3%     0.0%  
    Olga Govortsova              18.2%   8.4%   1.4%     0.0%  
29  Tamira Paszek                81.8%  64.8%  27.9%     1.1%  

    Player                         R64    R32    R16        W  
21  Christina McHale             75.7%  61.4%  41.8%     1.0%  
    Kiki Bertens                 24.3%  14.2%   6.0%     0.0%  
    Olga Puchkova                39.7%   7.9%   2.4%     0.0%  
    Irina Falconi                60.3%  16.5%   6.5%     0.0%  
    Vera Dushevina               68.3%  27.2%  10.4%     0.0%  
    Nastassja Burnett            31.7%   7.5%   1.7%     0.0%  
    Garbine Muguruza             36.1%  20.5%   7.9%     0.0%  
10  Sara Errani                  63.9%  44.9%  23.3%     0.2%  

    Player                         R64    R32    R16        W  
13  Dominika Cibulkova           73.9%  54.9%  35.7%     1.3%  
    Johanna Larsson              26.1%  13.2%   5.2%     0.0%  
    Bojana Jovanovski            44.2%  13.1%   4.8%     0.0%  
    Mona Barthel                 55.8%  18.8%   8.0%     0.0%  
    Vania King                   54.1%  25.1%  11.3%     0.1%  
    Yaroslava Shvedova           45.9%  19.7%   8.2%     0.0%  
    Urszula Radwanska            45.1%  23.7%  10.9%     0.1%  
20  Roberta Vinci                54.9%  31.5%  15.9%     0.2%  

    Player                         R64    R32    R16        W  
30  Jelena Jankovic              60.9%  40.0%  14.4%     0.2%  
    Kateryna Bondarenko          39.1%  21.7%   6.0%     0.0%  
    Lara Arruabarrena-Vecino     25.7%   5.6%   0.7%     0.0%  
    Shahar Peer                  74.3%  32.6%   9.1%     0.0%  
    Ksenia Pervak                47.1%  10.4%   4.7%     0.0%  
    Carla Suarez Navarro         52.9%  12.6%   6.1%     0.0%  
    Nina Bratchikova             11.3%   4.2%   1.4%     0.0%  
2   Agnieszka Radwanska          88.7%  72.7%  57.6%     6.7%

The Tournament Simulation Reference

Italian translation at settesei.it

Among the more popular features of Heavy Topspin are my tournament forecasts, based on draw simulations.  It’s about time that I summarize how these work.

Monte Carlo simulations

To generate tournament predictions, we first need a way to predict the outcome of individual matches.  For that, I use jrank, which I’ve written about elsewhere.  With numerical estimates of a player’s skill–not unlike ATP ranking points–we can calculate the probability that each player wins the match.

Once those matchup probabilities are calculated, it’s a matter of “playing” the tournament thousands upon thousands of times.  Here, computers come in awfully handy.

My code (a version of which is publicly available) uses a random-number generator (RNG) to determine the winner of each match.  For instance, at the top of the Rogers Cup draw this week, Novak Djokovic gets a bye, after which he’ll play the winner of Bernard Tomic‘s match with Michael Berrer.  My numbers give Tomic a 64% chance of beating Berrer.  To “play” that match in a simulated tournament, the RNG spits out a number between 0 and 1.  If the result is below .64, Tomic is the winner; if not, Berrer wins.

The winner advances to “play” Djokovic.  The code determines Djokovic’s probability of beating whoever advances to play him, then generates a new random number to pick the winner.  Repeat the process 47 times–one for each match–and you’ve simulated the entire tournament.

Each simulation, then, gives us a set of results.  Perhaps Tomic reaches the second round, losing to Djokovic, who then loses in the quarters to Juan Martin Del Potro, who goes on to win the tournament.   That’s one possibility–and it’s more likely than many alternatives–but it doesn’t tell the whole story.

That’s why we do it thousands (or even millions) of times.  Over that many simulations, Delpo occasionally wins, but somewhat more often, Djokovic wins that quarterfinal showdown.  Tomic usually reaches the second round, but sometimes it’s Berrer into the second round.  All of these “usually’s” and “sometimes’s” are converted into percentages based on just how often they occur.

Probability adjustments

For any given pair of players, we don’t always expect the same outcome.  Pablo Andujar is almost always the underdog on hardcourts, but we expect him to beat most mid-packers on clay.  Players perform (a bit) better in their home country.  Qualifiers do worse than equivalent players who didn’t have to qualify.

Thus, if we take last week’s Washington field and transplant it to the clay courts of Vina Del Mar, the numbers would change a great deal.  Americans and hard-court specialists would see their chances decrease, while Chileans and clay-courters would see theirs increase–just as conventional wisdom suggests would happen.

Simulation variations: Draw-independence

Some of the more interesting results come from messing around with the draw.  Every time a field is arranged into a bracket, there are winners and losers.  Whoever is drawn to face the top seed in the first round (or second, as Berrer and Tomic can attest) is probably unlucky, while somewhere else in the draw, a couple of lucky qualifiers get to play each other for a spot in the second round.

That’s one of the reasons I sometimes run draw-independent simulations (DIS).  If we want to know how much the draw helped or hurt a player, we need to know how successful he was likely to be before he was placed in the draw.  (DISs are also handy if you know the likely field, but the draw isn’t yet set.)

To run a draw-independent sim, we have to start one step earlier.  Instead of taking the draw as a given, we take the field as a given, including the seedings if we know them.  Then we use the same logic as tournament officials will use in constructing the draw.  The #1 seed goes at the top, #2 at the bottom.  #3 and #4 are randomly placed in the remaining quarters.  #5 through #8 are randomly placed in the remaining eighths, and so on.

(Update: I’ve published a python function, reseeder(), which generates random draws for any combination of number of seeds and field size that occurs on the ATP tour.)

Simulation variations: Seed-independence

We can take this even further to measure the beneficial effect of seeding.  Most of the time we take seeding for granted–we want the top two players in the world to clash only in the final, and so on.  But it can have a serious effect on a player’s chances of winning a tournament.  In Toronto this week, the top 16 seeds (along with, in all likelihood, a very lucky loser or two) get a bye straight into the second round.  That helps!

Even when there are no byes, seedings guarantee relatively easy matches for the first couple of rounds.  That may not make a huge difference for someone like Djokovic–he’ll cruise whether he draws a seeded Florian Mayer or an unseeded Jeremy Chardy.  But if you are Mayer, consider the benefits.  You’re barely better than some unseeded players, but you’re guaranteed to miss the big guns until the third round.

This is why we talk so much about getting into the top 32 in time for slams.  When the big points and big money are on the line, you want those easy opening matches even more than usual.  There isn’t much separating Kevin Anderson from Sam Querrey, but if the US Open draw were held today, Anderson would get a seed and Querrey wouldn’t.  Guess who we’d be more likely to see in the third round!

To run a seed-independent simulation: Instead of generating a logical draw, as we do with a DIS, generate a random draw, in which anyone can face anyone in the first round.

Measuring variations

If we compare forecasts based on the actual draw to draw-independent or seed-independent forecasts, we want to quantify the difference.  To do so, I’ve used two metrics: Expected Ranking Points (ERP) and Expected Prize Money (EPM).

Both reduce an entire tournament’s worth of forecasts to one number per player.  If Djokovic has a 30% chance of winning this week in Toronto, that’s the probability he’ll take home 1,000 points.  If those were the only points on offer, his ERP would be 30% of 1,000, or 300.

Of course, if Djokovic loses, he’ll still get some points.  To come up with his overall ERP, we consider his probability of losing the finals and the number of points awarded to the losing finalist, his probability of losing in the semis and the number of points awarded to semifinalists, and so on.  To calculate EPM, we use the same process, but with–you guessed it–prize money instead of ranking points.

Both numbers allow to see how much the draw helps or hurts a player.  For instance, before the French Open, I calculated that Richard Gasquet‘s EPM rose by approximately 25% thanks to a very lucky draw.

These numbers also help us analyze a player’s scheduling choices.  The very strong Olympics field and the much weaker Washington field last week created an odd situation: Lesser players were able to rack up far more points than their more accomplished colleagues. Even before the tournament, we could use the ERP/EPM approach to see that Mardy Fish could expect 177 points in Washington while the far superior David Ferrer could expect only 159 in London.

If you’ve read this far, you will probably enjoy the newest feature on TennisAbstract.com–live-ish forecast updates for all ATP events.  Find links on the TA.com homepage, or click straight to the Rogers Cup page.

2012 Olympics Round of 16 Forecasts

Here are my forecasts for the remaining 16 players in both Olympics singles draws.  Note that Djokovic has opened up a bigger gap over Federer.  Novak is aided by Berdych’s upset, while Federer is still likely to play the top seeds in his half.

On the women’s side, the third quarter is a crowded one, with Clijsters, Sharapova, and two dangerous floaters in Ivanovic and Lisicki.

For more background, you can see my initial forecasts, (almost) current rankings, and methodology.

Men:

Player                       QF     SF      F      W  
(1)Roger Federer          85.3%  64.5%  45.1%  25.7%  
Denis Istomin             14.7%   5.0%   1.5%   0.3%  
(10)John Isner            53.5%  16.9%   7.5%   2.4%  
(7)Janko Tipsarevic       46.5%  13.5%   5.6%   1.7%  
(4)David Ferrer           63.3%  36.3%  16.2%   6.7%  
(15)Kei Nishikori         36.7%  16.0%   5.2%   1.6%  
(12)Gilles Simon          32.3%  11.7%   3.3%   0.8%  
(8)Juan Martin Del Potro  67.7%  36.0%  15.5%   6.2%  

Player                       QF     SF      F      W  
Steve Darcis              39.5%   8.9%   1.5%   0.3%  
(11)Nicolas Almagro       60.5%  18.1%   4.2%   1.3%  
Marcos Baghdatis          22.7%  11.9%   2.7%   0.7%  
(3)Andy Murray            77.3%  61.1%  29.8%  16.4%  
(5)Jo-Wilfried Tsonga     67.5%  23.3%  12.0%   5.4%  
Feliciano Lopez           32.5%   6.9%   2.4%   0.7%  
(WC)Lleyton Hewitt         4.6%   0.6%   0.1%   0.0%  
(2)Novak Djokovic         95.4%  69.3%  47.3%  29.7%

Women:

Player                 QF     SF      F      W  
Victoria Azarenka   78.9%  53.3%  28.2%  18.0%  
Nadia Petrova       21.1%   7.9%   1.9%   0.6%  
Venus Williams      16.8%   2.5%   0.3%   0.1%  
Angelique Kerber    83.2%  36.3%  14.8%   7.6%  
Serena Williams     75.9%  56.2%  36.9%  26.2%  
Vera Zvonareva      24.1%  11.5%   4.4%   1.9%  
Daniela Hantuchova  36.2%   9.1%   2.9%   1.1%  
Caroline Wozniacki  63.8%  23.2%  10.6%   5.3%  

Player                 QF     SF      F      W  
Kim Clijsters       62.5%  33.2%  20.3%   8.9%  
Ana Ivanovic        37.5%  15.4%   7.4%   2.5%  
Sabine Lisicki      36.8%  15.7%   7.7%   2.5%  
Maria Sharapova     63.2%  35.6%  22.2%  10.0%  
Petra Kvitova       65.5%  45.7%  23.9%  10.2%  
Flavia Pennetta     34.5%  18.9%   7.0%   1.9%  
Maria Kirilenko     47.5%  16.2%   5.0%   1.2%  
Julia Goerges       52.5%  19.3%   6.6%   1.8%

2012 Olympics Women’s Projections

Forecasting the women’s singles event isn’t rocket science–it’s just a matter of how much you favor Serena Williams over everyone else.

My algorithm gives Serena a 22.7% chance of taking home the gold.  While the draw did her a favor, placing Kim Clijsters in the other half, it wasn’t perfect: Jelena Jankovic is a relatively difficult first round match.  With a randomized draw, Serena’s chances are nearly 25%.

Following the American is her very likely semifinal opponent, Victoria Azarenka, who I give a 18.4% chance of winning it all.  With an easier draw in the early rounds, Azarenka has a slightly better chance of making it to the semis (49.0% to 45.6%), but is less likely to come out of that showdown triumphant.

No one else has a double-digit chance of winning the tournament.  Williams and Azarenka are followed, in order, by Maria Sharapova, Agnieszka Radwanska, Petra Kvitova, and Clijsters.

Below, find the forecast for the entire field.  To see my current hard-court rankings, click here, and for some background on the system, click here.  I’ve also posted projections for the men’s singles event.

Player                         R32    R16     QF        W  
Victoria Azarenka            92.3%  79.6%  65.3%    18.4%  
Irina-Camelia Begu            7.7%   2.6%   0.8%     0.0%  
Maria Jose Martinez Sanchez  55.6%  10.6%   4.9%     0.1%  
Polona Hercog                44.4%   7.2%   3.0%     0.0%  
Anna Tatishvili              55.5%  12.3%   1.6%     0.0%  
Stephanie Vogt               44.5%   8.4%   0.9%     0.0%  
Jie Zheng                    49.9%  39.5%  11.6%     0.5%  
Nadia Petrova                50.1%  39.8%  11.8%     0.5%  
                                                           
Player                         R32    R16     QF        W  
Sara Errani                  62.9%  35.8%  13.2%     0.2%  
Venus Williams               37.1%  16.3%   4.4%     0.0%  
Marina Erakovic              45.6%  20.8%   6.1%     0.1%  
Aleksandra Wozniak           54.4%  27.1%   8.6%     0.1%  
Galina Voskoboeva            69.5%  23.6%  13.7%     0.4%  
Timea Babos                  30.5%   5.7%   2.2%     0.0%  
Petra Cetkovska              29.5%  17.0%  10.2%     0.3%  
Angelique Kerber             70.5%  53.6%  41.8%     4.9%  
                                                           
Player                         R32    R16     QF        W  
Serena Williams              83.9%  73.9%  60.2%    22.7%  
Jelena Jankovic              16.1%   9.6%   4.4%     0.2%  
Mona Barthel                 43.0%   6.3%   2.2%     0.0%  
Urszula Radwanska            57.0%  10.2%   4.2%     0.1%  
Francesca Schiavone          46.9%  18.8%   4.4%     0.2%  
Klara Zakopalova             53.1%  23.1%   6.0%     0.2%  
Sofia Arvidsson              28.1%  11.8%   2.3%     0.0%  
Vera Zvonareva               71.9%  46.3%  16.3%     1.6%  
                                                           
Player                         R32    R16     QF        W  
Na Li                        61.5%  41.9%  23.1%     2.3%  
Daniela Hantuchova           38.5%  22.0%   9.6%     0.5%  
Alize Cornet                 26.5%   5.5%   1.2%     0.0%  
Tamira Paszek                73.5%  30.6%  13.2%     0.6%  
Anabel Medina Garrigues      34.7%  10.3%   3.4%     0.0%  
Yanina Wickmayer             65.3%  27.8%  13.3%     0.7%  
Anne Keothavong              14.5%   3.9%   0.8%     0.0%  
Caroline Wozniacki           85.5%  58.0%  35.3%     4.1%  
                                                           
Player                         R32    R16     QF        W  
Samantha Stosur              81.9%  39.2%  23.9%     2.4%  
Carla Suarez Navarro         18.1%   3.3%   0.9%     0.0%  
Kim Clijsters                76.2%  48.7%  33.5%     5.6%  
Roberta Vinci                23.8%   8.8%   3.7%     0.1%  
Agnes Szavay                 21.8%   1.5%   0.1%     0.0%  
Elena Baltacha               78.2%  16.0%   2.7%     0.0%  
Christina McHale             43.9%  35.4%  13.9%     0.7%  
Ana Ivanovic                 56.1%  47.2%  21.3%     1.7%  
                                                           
Player                         R32    R16     QF        W  
Sabine Lisicki               95.1%  66.0%  31.5%     2.7%  
Ons Jabeur                    4.9%   0.5%   0.0%     0.0%  
Simona Halep                 61.6%  22.8%   7.6%     0.2%  
Yaroslava Shvedova           38.4%  10.7%   2.6%     0.0%  
Petra Martic                 37.2%   9.2%   3.2%     0.1%  
Lucie Safarova               62.8%  21.5%  10.1%     0.5%  
Shahar Peer                  18.4%   7.7%   2.6%     0.0%  
Maria Sharapova              81.6%  61.6%  42.3%     7.6%  
                                                           
Player                         R32    R16     QF        W  
Petra Kvitova                80.7%  61.8%  41.0%     6.5%  
Kateryna Bondarenko          19.3%   8.5%   2.8%     0.0%  
Su-Wei Hsieh                 42.9%  11.3%   3.8%     0.1%  
Shuai Peng                   57.1%  18.4%   7.5%     0.2%  
Sorana Cirstea               41.5%  16.9%   6.4%     0.2%  
Flavia Pennetta              58.5%  28.8%  13.2%     0.9%  
Tsvetana Pironkova           42.8%  21.5%   9.2%     0.5%  
Dominika Cibulkova           57.2%  32.8%  16.1%     1.3%  
                                                           
Player                         R32    R16     QF        W  
Maria Kirilenko              85.9%  60.6%  23.8%     1.0%  
Mariana Duque-Marino         14.1%   3.8%   0.4%     0.0%  
Silvia Soler-Espinosa        45.6%  15.3%   3.2%     0.0%  
Heather Watson               54.4%  20.3%   4.8%     0.0%  
Varvara Lepchenko            73.2%  13.1%   5.0%     0.0%  
Veronica Cepede Royg         26.8%   2.0%   0.4%     0.0%  
Julia Goerges                30.0%  23.0%  14.1%     0.7%  
Agnieszka Radwanska          70.0%  61.9%  48.2%     8.4%