Friday, August 15, 2014

Brewers vs Dodgers - Simulation Results 8/15



AwayHomeAway PitcherHome PitcherFavoriteAway RSHome RSFave Win%Total RS
BrewersDodgersJimmy NelsonZach GreinkeDodgers2.9983.53359.25%6.531


                                   Top 100 Most Likely Final Scores
RankBrewersDodgersOccurrencesRankBrewersDodgersOccurrences
12353145147510
21252475260496
33439255318491
42133775471486
53233325575436
61332665608428
70131865757421
82426905882386
90225065938383
101424626083367
114324206176362
120323816229356
134523466319350
143123296470322
154220746581311
161019186684303
172518936709275
180418026839274
194117556948248
202017407085248
213517157158242
221516507278233
235314967392224
245414957480214
2530143975110210
2652137976210209
270512037749208
285111767891207
292611637993185
3016113180310183
3156112581010176
323610718286176
33409848368162
34469098494159
35639038587153
366289086410137
37068148795136
386481488211135
392779289111131
40617699059130
41177679190126
426574392102120
435071193103117
440759394311116
453759295101112
467258796104106
47735509769103
48675419896102
4928524998994
507451810021288
.
Miscellaneous Notes:

1) The best defensive players on the Brewers are CF-Carlos Gomez, SS-Jean Segura and C-Jonathon Lucroy

2) Brewers 2B-Scooter Gennett can not hit left-handed pitching to save his life.  Rickie Weeks will hit for him if a LHP comes in to face him.

3) The Brewers have three former starting pitchers in their bullpen... Zach Duke (169 GS), Tom Gorzelanny (121 GS) and Marco Estrada (71 GS).

4) The Brewers have three holes in their bullpen... Marco Estrada, Jeremy Jeffress and Brandon Kintzler.

5) Brewers hitters do not draw very many walks... Lucroy and Reynolds are the only two who draw an average amount of walks.

6) Brewers starting pitcher Jimmy Nelson is probably better than projection systems currently give him credit for.



Sunday, July 13, 2014

Masahiro Tanaka At The All-Star Break


Here is a list of the Vegas odds of all 18 of Masahiro Tanaka's starts up to the All-Star break.

DateAwayHomeAway PitcherHome PitcherFaveML FaveML DogTanaka Win%
4/4/2014NYATORMasahiro TanakaDerek McGowanNYA-12612155.26
4/9/2014BALNYAMiguel GonzalezMasahiro TanakaNYA-17516863.17
4/16/2014CHNNYAJason HammelMasahiro TanakaNYA-20018565.81
4/22/2014NYABOSMasahiro TanakaJon LesterBOS-11610647.39
4/27/2014LAANYAGarrett RichardsMasahiro TanakaNYA-15915461.01
5/3/2014TBNYAJake OdorizziMasahiro TanakaNYA-19518765.64
5/9/2014NYAMILMasahiro TanakaYovani GallardoNYA-12912455.85
5/14/2014NYANYNMasahiro TanakaRaul MonteroNYA-16515961.83
5/20/2014NYACHNMasahiro TanakaJason HammelNYA-15815360.86
5/25/2014NYACHAMasahiro TanakaAndre RienzoNYA-16415861.69
5/31/2014MINNYAKevin CorreiaMasahiro TanakaNYA-24823870.85
6/5/2014OAKNYADrew PomeranzMasahiro TanakaNYA-13712756.90
6/11/2014NYASEAMasahiro TanakaChris YoungNYA-18517564.29
6/17/2014TORNYAMarcus StromanMasahiro TanakaNYA-16716062.05
6/22/2014BALNYAChris TillmanMasahiro TanakaNYA-20219266.33
6/28/2014BOSNYAJon LesterMasahiro TanakaNYA-15014559.60
7/3/2014NYAMINMasahiro TanakaPhil HughesNYA-15014559.60
7/8/2014NYACLEMasahiro TanakaTrevor BauerNYA-14714259.10
.
.

Friday, July 04, 2014

Top 10 Biggest Road Favorites


In today's Dodgers vs Rockies game the Dodgers are a 65.6% favorite to win on the road. This is the largest road favorite of the year so far this season. Of course it is a game that a red-hot Clayton Kershaw is pitching in and the Rockies Jair Jurrjens isn't exactly the leagues best pitcher. This got me to thinking what the top ten list would look like for largest road favorites this year.  Kershaw and Strasburg appear twice on this list.

Here is the list

DateAwayHomeAway SPHome SPVegas FaveML FaveML DogVegas Win Exp
7/4/2014LANCOLClayton KershawJair JurrjensLAN-19818465.6%
5/2/2014SEAHOUFelix HernandezBrad PeacockSEA-18517564.3%
6/11/2014NYASEAMasahiro TanakaChris YoungNYA-18517564.3%
4/15/2014WASMIAStephen StrasburgToby KoehlerWAS-17817163.6%
5/23/2014LANPHIClayton KershawRoberto HernandezLAN-17216562.8%
4/25/2014OAKHOUJesse ChavezBrad PeacockOAK-17116162.4%
3/31/2014WASNYNStephen StrasburgDillon GeeWAS-17215862.3%
5/3/2014STLCHNMichael WachaJake ArrietaSTL-16716062.0%
4/22/2014STLNYNAdam WainwrightDillon GeeSTL-16815862.0%
4/30/2014DETCHAMax ScherzerHector NoesiDET-16815862.0%
.

Thursday, July 03, 2014

Park Factor Surprises


Nobody likes surprises, right? Unless it is your birthday and then maybe you do. But when it comes to park factors (runs) it is often difficult to nail down a teams park factor and randomness plays havoc with what smart people think the park factors should be. As you know, I keep track of the runs scored portion of a teams park factor along with a Vegas park factor that I reverse engineer from each teams over/under, where I replace the actual runs scored in each game with the Vegas over/under total. This gives me another aspect of the park factor. The aspect of the wisdom of the crowd of the people who are actually risking their hard earned money on knowing how many runs scored each game is likely to have. I love comparing things like over/unders, expected win totals and player projections to the people who risk their money on each game. What I have listed in the table below is each teams current 2014 park factor for runs scored along with their Vegas park factor. The table is sorted by the most similar park factors with the biggest surprises at the bottom of the table. Enjoy!

TeamActual PFVegas PF2014 Delta
Nationals0.9900.9880.0026
Reds1.0391.0320.0064
Padres0.8820.8730.0093
Blue Jays1.0881.0740.0136
Marlins1.0321.0180.0140
Angels0.9630.9770.0146
White Sox1.0100.9900.0206
Diamdonbacks1.0861.0640.0214
Giants0.8930.9150.0221
Indians1.0220.9870.0351
Braves0.9830.9440.0391
Tigers1.0731.0310.0429
Royals0.9521.0040.0519
Rangers1.0351.1020.0671
Athletics0.9970.9270.0699
Red Sox0.9801.0550.0753
Dodgers0.9900.9110.0783
Mariners0.8530.9360.0831
Astros1.1301.0440.0855
Cubs0.9491.0380.0888
Yankees0.9641.0560.0920
Mets0.8120.9130.1011
Twins1.1151.0100.1056
Rays1.0320.9230.1092
Pirates1.0720.9580.1139
Brewers0.8741.0060.1317
Rockies1.4371.2830.1535
Phillies0.8220.9760.1539
Orioles0.8201.0330.2137
Cardinals1.2280.9640.2642
.

MLB Over/Unders And The Empirical Data


In my previous post I used my simulator to come up with a set of equations to convert an MLB Over/Under to an average runs scored per game number. Basically, a conversion tool to go from the median to mean for runs scored in a game. In this post I am going to show what the actual empirical data looks like based off of the 1266 games played so far. Obviously, the sample size here will be problematic. The next step will be to add data from previous seasons to the data that I have for the current 2014 season. I may or may not be able to do this but here is the 2014 data nonetheless. And keep in mind this data is not taking into account the odds or percentage chance of the game going over or under. It is assuming that all games have a 50/50 chance of going over or under, which is wrong but it should even out a little bit.

Over/UnderCountAverage RPG
5.5111.00
697.33
6.5936.59
72457.59
7.53058.09
82048.45
8.52088.53
91268.77
9.5448.98
101811.50
10.51811.33
11113.00
11.5212.00

As you can see the sample size problem makes this data pretty close to unusable. And that is part of what I am trying to show here. What I would expect to see in the "Average Runs Per Game" column of the table had the sample size been in the tens of thousands is a number about 0.45 higher than the over/under number. Our largest sample size is the over/under of 7.5 and the average runs scored per game is 0.59 higher than the over/under.

Monday, June 30, 2014

Average Runs Scored Given Vegas Over/Under Odds


When you look at the Over/Under, often referred to as the "Run Total" for a major league baseball game at a Sports Book you will see the run total given with a number like "7 runs" with juice looking something like -120/100 with the -120 being the pay out for the over and the +100 being the pay out for the under. Juice looking like -120/100 is telling you that the Sports Book thinks it is a little bit more likely that the game will go over than under. In fact, the Sports Book is telling you there is a 52.38% chance that the game goes over and a 47.62% chance that the game goes under. Here is my algorithm and calculator showing you how to convert from a Sports Book odds (Example: -120/100) to a percentage.

How about a game where the Sports Book thinks there is a 50/50 chance of the game going over or under (-110/-110)? If the run total was "7 runs" on such a game how many runs would you expect there to be scored if this game was played thousands of times? You might think the answer would be 7, but it is not. Seven runs would be the median or the the run total where you would have the same number of overs as unders. But what about the mean or the average number of runs scored per game. Since run totals are skewed, such that the most likely final score for almost any game with a 7 run over/under is the home team winning by a score of 3-2 (5 total runs) we see a mean that is different than the median. How do you calculate the mean?

It's not easy to calculate, the best way is to look at the empirical data. Look at games and track the run total, over juice and under juice and see what the average number of runs scored for each game with the same values for each of the three parameters. Quickly, the problem you run in to is a sample size problem. There are just not enough games out there (162 per year). So this won't work very well. The solution is to create a larger sample size and the way I did this was to use my simulator to create games with an average of 5.5 up to 11.5 runs with gaps of 0.05 runs per game. For example I created two teams that averaged 5.5 runs per game when playing each other a million times. I then adjusted the two teams to create an outcome that averaged 5.55 runs per game, all the while recording the percentage that this game went over or under the nearest run total.

For example, I created a game and simulated it one million times that outputted an average runs scored per game of 5.9902. The run total that was closest to 50% on the over/under for this game was 5-1/2 runs. The chances of this game going over was 48.64% and going under was 51.36%.

Once I get enough samples at each over/under I can get a best fit equation (y = mx + b) for each run total given that I know the chances that the game goes over and under. My simulator tells me this and in the Sports Book example the over/under odds tells me this. So once I have the equation built from the simulators empirical data, I can use those equations with the Sports Book odds once I calculate the over and under chances from the odds and juice.

So below is the table that shows you the equation for each Run Total. In the equation "x" is the percent chance (ie - 51.92) that the games goes "over".

Let's take the June 30th game between the Indians and Dodgers as an example. The Vegas Odds on the "Run Total" look like 7-1/2 +115/-125 which translates to an over chance of 45.45% and an under chance of 54.55%.

The equation for a game with a Run Total of 7-1/2 is: y = (0.087176)(45.45) - 3.87196653

Which tells us the average number of runs for this game (given that the Vegas Odds are true odds) is... 7.59 runs

An interesting side note is that let's say you have a Run Total of 7-1/2 runs with Vegas giving us a 50/50 chance of both the over and under hitting, that would give us an average run total of 7.99 runs.

Steps
1. Get Vegas Run Total
2. Use the table below to determine your slope(m) and offset(b)
3. Use Vegas odds on the Run Total to determine percent chance the game goes over(x)
4. Calculate average runs scored per game by running data through the equation y = mx + b


Equation To Calculate Average Runs Scored per Game

Run TotalSlope(m)Offset(b)
5.50.080769-3.441105344
60.075334-3.300033236
6.50.085624-3.943390956
70.076109-3.405558745
7.50.087176-3.87196653
80.082359-3.752582135
8.50.088259-4.16674672
90.079836-3.677004771
9.50.094069-4.284308333
100.084646-3.923914961
10.50.091977-4.398507575
110.0816-3.78090425
11.50.095217-4.329096995
.

Monday, June 09, 2014

Vegas MLB Over/Under Recap


Here is a breakdown on how many times Vegas has set the over/under at each number during the baseball season so far. The breakdown also shows how many times the over, under or a push hit for each Vegas over/under. Though it still is a small sample size, more unders are hitting for the higher over/unders and more overs are hitting for the lower over/unders. I am not trying to claim any great revelations here, just reporting what the empirical data looks like so far.

Over/UnderCountOverUnderPushes
50000
5.51100
65320
6.57639370
7180896130
7.52311191120
815875767
8.514868800
98938456
9.53213190
1012660
10.514680
110000
11.51010
Total94745744743
.

Saturday, May 17, 2014

Top 20 Games With The Largest Favorites


I found the Top 20 games that had the largest Vegas favorite this season as I was curious to see which teams and or pitchers frequented the list. The Astros(9), Cubs(4) and Twins(3) were the teams that showed up the most on the losing side with the Tigers(6), Athletics(3) and Cardinals(3) showing up the most on the favored side. No pitcher on the favored side shows up more than twice (Verlander, Tanaka, Scherzer, Wainwright). A win expectancy of 73.28% was the largest favorite we have seen so far when Jarred Cossart and the Astros lost to Justin Verlander and the Tigers by the score of 2-0. In these 20 games (SSS) the favorites did very well. You'd expect them to win around 13 or 14 of the 20 games but they won 16 of them for an 80% winning percentage. Of course 20 games is a tiny sample so there is nothing out of the ordinary for winning 16 out of these 20 games. Anyways, most of the fun is just in the list... and here it is.

DateAwayHomeAway SPHome SPVegas FaveML FaveML DogVegas Win ExpResult
5/5/2014HOUDETJarred CosartMax ScherzerDET-27025472.38DET 2-0
4/21/2014HOUSEADallas KeuchelFelix HernandezSEA-26224771.79HOU 7-2
4/20/2014HOUOAKBrad PeacockJesse ChavezOAK-25523571.01OAK 4-1
4/22/2014CHADETChris LeesmanJustin VerlanderDET-25023070.59DET 8-6
5/9/2014MINDETPhil HughesJustin VerlanderDET-23522569.70MIN 2-1
5/7/2014HOUDETBrad PeacockRick PorcelloDET-23022069.23DET 3-2
5/10/2014MINDETKyle GibsonMax ScherzerDET-22821869.04DET 9-3
4/11/2014HOUTEXScott FeldmanYu DarvishTEX-22521568.75TEX 1-0
5/13/2014CHNSTLJake ArrietaAdam WainwrightSTL-23021068.75STL 4-3
4/10/2014MIAWASTom KoehlerStephen StrasburgWAS-21620667.85WAS 7-1
4/10/2014HOUTORDallas KeuchelR.A. DickeyTOR-21520567.74HOU 6-4
4/13/2014CHNSTLEdwin JacksonMichael WachaSTL-21520567.74STL 6-4
4/12/2014CHNSTLCarlos VillanuevaAdam WainwrightSTL-21320367.53STL 10-4
4/19/2014HOUOAKBrad OberholtzerScott KazmirOAK-21519567.21OAK 4-3
4/18/2014HOUOAKJarred CosartSonny GrayOAK-20019066.10OAK 11-3
4/22/2014MINTBKyle GibsonDavid PriceTB-20318766.10TB 7-3
4/9/2014MIAWASBrad HandJordan ZimmermannWAS-20218565.93WAS 10-7
4/16/2014CHNNYAJason HammelMasahiro TanakaNYA-20018565.81NYA 3-0
5/8/2014HOUDETDallas KeuchelDrew SmylyDET-19718865.81HOU 6-2
5/3/2014TBNYAJake OdorizziMasahiro TanakaNYA-19518765.64NYA 9-3

Saturday's MLB Vegas Numbers


AwayHomeAway PitcherHome PitcerFaveMLMLWin %O/UOver VigUnder VigExp Runs
LANARIClayton KershawChase AndersonLAN-15815360.868105-1157.76
NYNWASBartolo ColonGio GonzalazWAS-15014559.607.5117-1277.10
TBLAACarlos RamosC.J. WilsonLAA-14313858.428.5100-1108.33
MIASFTom KoehlerTim LincecumSF-14113658.077.5112-1227.16
OAKCLEScott KazmirJosh TomlinOAK-13513056.997.5-1131037.52
SDCOLRobbie ErlinJordan LylesCOL-13312856.629.5-108-1029.44
PITNYAEdinson VolquezDavid PhelpsNYA-12712255.469105-1158.76
BALKCBud NorrisDanny DuffyKC-12411954.857.5100-1107.33
DETBOSRick PorcelloJohn LackeyBOS-12311854.658.5107-1178.23
CINPHIHomer BaileyCole HamelsPHI-11911453.817.5-105-1057.40
ATLSTLAaron HarangShelby MillerSTL-11811353.607-1151057.04
MILCHNMatt GarzaEdwin JacksonMIL-11711253.387.5-115-1057.47
CHAHOUHector NoesiJarred CosartHOU-11511052.949112-1228.66
SEAMINRoenis EliasSamuel DedunoMIN-11010551.818104-1147.77
TORTEXMark BuehrleRobbie RossTEX-105-10550.009-115-1058.97

Notes: Table sorted by largest favorite

Friday, May 16, 2014

What Does The Leverage Index Look Like

.
Leverage index was a statistic invented by Tom Tango that measures the importance or pressure of a situation in a baseball game. An average leverage index is 1.0 and anything higher than that indicates that the current state is an above average pressure situation. I used my simulator to determine what the average leverage index was for when there were 0, 1 and 2 outs in any inning of a game. I then used the simulator to also determine the average leverage index for each half inning of a game. The results are below. For these simulations I used a few random games so results could be slightly different running other games but the trends should be similar.  The results are that you generally see higher leverage situations the lower the number of outs are and you also tend to see higher leverage situations later in the games.  Those conclusions may be obvious but at least you can get a visual image of it.  Five millions games were simulated.

Table 1
Average Leverage Index Based on Outs State
OutsAverage LI
01.159
11.083
20.952

Table 2
Average Leverage Index Based on Half Inning of Game (0=Top of first, 1=Bottom of first etc...)
InningAverage LI
00.913
10.906
20.897
30.902
40.909
50.930
60.970
70.996
80.990
91.009
101.038
111.065
121.065
131.085
141.091
151.164
161.123
171.968
182.437
192.727

Graph of Table 2

.

Friday's MLB Vegas Numbers


AwayHomeAway PitcherHome PitcherFaveMLMLWin %O/UOver VigUnder VigExp Runs
TORTEXDrew HutchisonYu DarvishTEX-16615961.908.5100-1108.33
SDCOLEric StultsJorge de la RosaCOL-15314860.0810.5-105-10510.40
LANARIZack GreinkeWade MileyLAN-13812857.088.5-1051158.54
TBLAAChris ArcherJered WeaverLAA-13513056.998-1101007.97
MIASFHenderson AlvarezYusmeiro PetitSF-13612656.717.5105-1257.19
NYNWASJonathan NieseTanner RoarkWAS-13112656.247-105-1056.90
OAKCLESonny GrayZach McAllisterOAK-12712255.467.5105-1157.26
PITNYAEdinson VolquezDavid PhelpsNYA-12311854.658.5-1151058.54
MILCHNKyle LohseJeff SamardzijaCHN-11110652.046.5-110-1106.40
CINPHIAlfredo SimonKyle KendrickCIN-11010551.818-1161068.06
ATLSTLErvin SantanaLance LynnSTL-10910451.577117-1276.60
CHAHOUJose QuintanaCollin McHughHOU-10810351.348-1201108.11
SEAMINChris YoungKyle GibsonMIN-10710251.108-1101007.97
DETBOSMax ScherzerJon LesterBOS-10510050.628110-1207.69
BALKCChris TillmanJeremy GuthrieBAL-104-10150.378102-1127.80

Notes: Table sorted by largest Vegas favorite.

Saturday, May 10, 2014

How Is Vegas Doing On Park Factors?


Below is a table showing each teams actual park factor (runs) and the Vegas park factor which is calculated by reverse engineering their over/unders for each game and using that as a proxy for actual runs scored for each game. The table is sorted by which actual park factor is closest to the Vegas park factor. The teams at the top of the list are playing in a run environment at home close to where the betting public is predicting it to be. The teams at the bottom of the list are having a lot of random variation when it comes to their home park run environment so far in this young season. Small sample sizes and regression to the mean are at play here but it is interesting to see how things are shaping up so far with the empirical data.

TeamActual PFVegas PFDelta
Dodgers0.9920.9980.005
Reds1.1181.0820.036
Padres0.9450.9080.037
Twins0.9410.9780.037
Mets0.7910.8470.056
Rangers1.0091.0650.056
DBacks1.0131.0710.058
Braves0.9220.9810.059
White Sox1.0350.9620.073
Phillies0.8270.9100.083
Marlins1.1361.0340.103
Giants0.8490.9510.103
A's0.7830.8880.106
Indians0.9071.0140.106
Blue Jays1.2191.1030.116
Tigers0.9301.0600.130
Pirates1.0470.9120.136
Rockies1.4731.3210.152
Yankees0.8721.0370.165
Cubs1.1670.9930.174
Mariners0.7380.9310.192
Rays1.1230.9270.195
Nats0.7730.9880.215
Red Sox1.2481.0210.227
Royals1.2851.0520.233
Astros1.2611.0200.241
Angels1.2530.9640.288
Orioles0.6941.0170.324
Brewers0.6671.0560.388
Cardinals1.3750.9740.402

Friday, May 09, 2014

Giants vs Dodgers - Friday's Simulation Results


AwayHomeAway PitcherHome PitcherFavoriteAway RSHome RSWin %Total Runs
GiantsDodgersMadison BumgarnerPaul MaholmGiants4.004083.2891755.4487.29325



                                 Top 100 Most Likely Final Scores
RankGiantsDodgersOccurrencesRankGiantsDodgersOccurrences
12342595147586
21237065205572
33436995337563
43234065457559
52129285576533
64326935627506
73126885784504
84225685880467
94525005993462
104122876092454
111322006191445
125319596217421
130119586306400
142419586485388
155219356538375
165117976678372
175417796728345
183017136886320
192016086994316
201015737048287
213515387190287
221415297218280
2356148173102276
2402146174101273
256314517568266
266214377695264
2740143377103260
282513957858256
296113297907252
305012228087249
316412128139243
3203113682104230
336510888329214
3472108484100212
357110178596199
36159808619175
37469738749173
38609668808167
397393889111166
40369179089164
412687391105154
42048209259152
437480693112150
446773994113146
45827199569144
46817099697142
477067797110142
481667698310140
498367399210131
5075661100114119

Thursday, May 08, 2014

Giants vs Dodgers - Thursday's Simulation Results


AwayHomeAway PitcherHome PitcherFavoriteAway RSHome RSWin %Total Runs
GiantsDodgersRyan VogelsongJosh BeckettDodgers3.288154.0638261.1047.35197

                                 Top 100 Most Likely Final Scores
RankGiantsDodgersOccurrencesRankGiantsDodgersOccurrences
12347235174618
23440285257590
31239635338576
43228555475560
51327755550550
62427275671479
74525195776471
82124665848455
94324325929427
101423506008416
112520696182414
124220506284409
130120176360404
143119526419390
150219366578390
160319076639379
173518386758378
181517326883374
195416706985332
200415887081308
215315567109307
225615477249304
234114507386292
245214157468288
2536135675210284
2626135176110267
271612877794257
281012397870248
290512177993247
302011718092236
3146114281310234
326310808259230
336510738387219
345110408491197
3527101285410191
3664101286211189
373098287010185
380693788111185
39629268989184
40179249095183
41378609169177
42678499296161
434777593103161
444076294311157
45617129597151
467370496102144
471866297510140
487266098104138
49076599980134
5028647100610128

Disclaimer: Game simulated 100K times.

Thursday's MLB Vegas Numbers



AwayHomeAway PitcherHome PitcherFaveMLMLWin %O/UOver VigUnder VigExp Runs
HOUDETDallas KeuchelDrew SmylyDET-19718865.818.5-106-1048.41
BALTBUbaldo JimenezDavid PriceTB-17016362.487.5115-1257.13
MINCLEKevin CorreiaJustin MastersonCLE-16916262.348110-1207.69
MIASDJacob TurnerIan KennedySD-14814359.277113-1236.65
SFLANRyan VogelsongJosh BeckettLAN-14814359.277.5107-1177.23
KCSEADanny DuffyHisashi IwakumaSEA-12812355.657-1151057.04
COLTEXFranklin MoralesMatt HarrisonTEX-12612155.269.5-1121029.50
PHITORA.J. BurnettR.A. DickeyTOR-12211754.448.5-1251158.67
CHNCHAJake ArrietaSteve CarrollCHA-11811353.608.5-1251158.67

Source: Opening lines from 5Dimes.com

Notes: Table sorted by largest favorite

Tuesday, May 06, 2014

Wednesday's Vegas Numbers


AwayHomeAway PitcherHome PitcherFaveMLMLWin %O/UOver VigUnder VigExp Run Total
HOUDETBrad PeacockRick PorcelloDET-23022069.238.5-1101008.47
MINCLERicky NolascoDennis SalazarCLE-15615160.558102-1127.80
CINBOSMike LeakeJake PeavyBOS-14113658.078.5101-1118.31
ARIMILBronson ArroyoWily PeraltaMIL-13813357.548-1101007.97
LANWASDan HarenStephen StrasburgWAS-13713257.366.5-1201106.61
BALTBBud NorrisCarlos RamosTB-13412956.807.5-108-1027.44
SFPITTim LincecumGarrit ColePIT-13012556.047-107-1036.93
NYALAAVic NunoHector SantiagoLAA-12812355.658.5-1101008.47
COLTEXJorge de la RosaColby LewisTEX-12512055.069.5105-1159.26
STLATLAdam WainwrightMike MinorSTL-12011554.026.5-1201106.61
CHNCHATravis WoodJohn DanksCHA-11911453.818-1151058.04
SEAOAKFelix HernandezDaniel StrailySEA-11811353.607-105-1056.90
NYNMIAZack WheelerTom KoehlerMIA-11511052.947.5100-1107.33
KCSDJames ShieldsAndrew CashnerSD-10610150.866.5115-1256.13
PHITORCliff LeeMark BuehrleTOR-10510050.627.5-1251157.67

Note: Table sorted by largest favorite to win game.

Sunday, May 04, 2014

Dodgers vs Nationals - Monday's Simulation Results


AwayHomeAway PitcherHome PitcherFavoriteAway RSHome RSWin %Total Runs
DodgersNationalsZach GreinkeJordan ZimmermannDodgers3.453.1951.68%6.64

                                 Top 100 Most Likely Final Scores
RankDodgersNatsOccurrencesRankDodgersNatsOccurrences
11247125167500
22346945247494
33237045370475
42136175482461
53434835581457
63130645676431
74327855783414
84227745828399
90125855907380
101325556057375
114123466184370
122022456218344
132421876338336
144521876480329
151021506592315
160219726648309
173019326785294
185218986891280
195318296993271
201418127008266
215417517178233
225116597286229
234015977390226
243515127458225
250314747519224
262514267629212
271513347739211
285612387894206
2963119979102205
300411928049190
316211598168173
325011368287171
3361108583101167
346499384103149
35369708509147
36269228659147
37168828795146
386587588210132
394683689310126
40058249096124
416078991104118
427273492112118
437167993110115
44736699489115
457459795100113
462758096113104
470655597111100
48175499841099
4937542996996
50755301009795

Note: 100,000 games were simulated.

Sunday's Vegas Numbers


Vegas odds sorted by largest win expectancy

AwayHomeAway PitcherHome PitcherFaveMLMLWin %O/UOver VigUnder VigExp Runs
LANMIAStephen FifeJose FernandezMIA-16816162.197-1221127.14
CHACLEAndre RienzoCorey KluberCLE-15314860.088.5-105-1058.40
TBNYAEric BedardCC SabathiaNYA-15214759.929-1101008.97
NYNCOLDillon GeeJhoulys ChacinCOL-14313858.4210-12011010.11
STLCHNLance LynnJason HammelSTL-13613157.177-110-1106.90
WASPHIGio GonzalezRoberto HernandezWAS-13612656.718-110-1107.90
SFATLMadison BumgarnerAlex WoodATL-13312856.627100-1106.83
TORPITDustin McGowanEdinson VolquezPIT-12211754.448-1131038.02
MILCINKyle LohseAlfredo SimonCIN-12111654.237.5112-1227.16
DETKCJustin VerlanderJason VargasDET-12011554.028-103-1077.87
TEXLAAYu DarvishTyler SkaggsTEX-11410952.727.5100-1107.33
ARISDWade MileyTyson RossSD-11410952.727112-1226.66
BALMINMiguel GonzalezPhil HughesMIN-10810351.348.5-105-1058.40
SEAHOUBrandon MauerCharles McHughHOU-10710251.108.5100-1108.33
OAKBOSSonny GrayJohn LackeyOAK-10610150.868.5-108-1028.44

Source: 5dimes.com

Saturday, May 03, 2014

Dodgers vs Marlins - Saturday's Simulation Results


Simulation Results...
AwayHomeAway PitcherHome PitcherFavoriteAway RSHome RSWin %Total Runs
DodgersMarlinsPaul MaholmJacob TurnerDodgers4.885944.0429156.0978.92885

Box Score...


                                    Top 100 Most Likely Final Scores
RankDodgersMarlinsOccurrencesRankDodgersMarlinsOccurrences
12329955185708
23428965278704
34525935337701
44324985427675
53224595581660
61221675660658
74221095792650
85420865893623
92118655904612
105318526086562
112418266158561
125217566294557
135617546348553
143117526470547
153517316587532
164116086691531
171315356738522
186315196817513
196514746905486
206414487068485
212514017195474
226213587228468
2351132173102437
241413117480415
2536124075101414
2646121276103407
2774115877104387
286711417896375
297311087989350
307210618039343
316110318118342
327510028297338
33269558349337
34209278406333
353092385105316
360191386113311
371590587112304
38768958890301
39408658959297
40718649069290
41838419198282
42828299207273
435781593106271
44028069429270
451080495114253
464779696111247
470377997115233
488476298124230
49507149979226
5016712100310224

Disclaimer: Based off of 100K simulations with input statistics from Fangraphs Zips(U)

Friday, May 02, 2014

Pros/Cons of a 40-pitch scoreless first inning


Beyond The Boxscore and Tom Tango asked the following question.

Would you rather be down 1 run, with your starting pitcher having thrown no more than 10 pitches, or would you rather throw a scoreless inning, but your starting pitcher having thrown at least 40 pitches?

To me it kind of seemed like a no brainer. I would rather keep the run off the board. So I put my simulator to the test to see what it thought. My simulator has an engine that worsens pitcher performance based on the number of pitches thrown. It is a good proxy for times through the batting order. Both have an effect on how a pitcher usually gets worse as the game goes on.

What I did is take a game between the Dodgers and Twins early in the week where Zack Greinke pitched against Kyle Gibson. First off, I simulated the game from the very beginning to set a baseline for how often the Dodgers should win this game and how long and how well Zack Greinke pitches. Next, I set the game state to the top of the second inning with the first batter of the inning up. I tell the simulator that the Dodgers number five hitter leads off the 2nd inning and the Twins number six hitter leads off the bottom half. These settings are then kept constant for the remaining trials.

Results: Dodgers win 62.793%, Greinke pitches an average of 6.598 innings with an average FIP of 3.108

The next simulation is with Greinke having made 10 first inning pitches and the Twins starter 15. The score is 1-0 Twins and then 100K games are simulated. So in this simulation the Dodgers are starting the 2nd inning down one run but Greinke starts the inning only having made 10 first inning pitches.

Results: Twins win 50.161%, Greinke pitches an average of 6.875 innings with an average FIP (2nd inning on) of 3.118

Up next I ran the simulation with Greinke having made 40 pitches in the first inning but not having given up a run. So the score is tied 0-0 in the top of the 2nd. The Dodgers have a pretty good bullpen on paper (projection systems) and some of their long reliever options are not terrible.

Results: Dodgers win 60.047%, Greinke pitches an average of 4.969 innings with an average FIP (2nd inning on) of 3.162

Then for fun I had Greinke throw both an 80 and a 100 pitch first inning with the score tied 0-0 heading in to the second inning. Those results are below. I think the one run hole that the away team is put in is a much much larger hole than a first inning where a starting pitcher throws 40 vs 10 pitches. And of course the difference will be a little bit different for each team based on the differences in talent level of the starting pitcher and the bullpen, namely the long reliever. My study just looks at one game but the nearly two innings lost from the starting pitcher will have an impact on the next couple of games as the bullpen will be tired and perhaps a few of them unavailable to pitch the next game. So you can take my results and adjust for those things I just mentioned but I think it is more than safe to say that for a one time deal, the 40 pitch no run first inning is a much better scenario for the Dodgers.

RemarksAwayHomeAway PitcherHome PitcherFaveAway RunsHome RunsWin %Total RunsGreinke IPGreinke FIP
Full 9 inningsLANMINZach GreinkeKyle GibsonLAN4.4903.14262.7937.6326.5983.108
Greinke 10 pitch 1 run first inningLANMINZach GreinkeKyle GibsonMIN3.9333.71950.1617.6526.8753.118
Greinke 40 pitch 0 run first inningLANMINZach GreinkeKyle GibsonLAN3.9572.94160.0476.8984.9693.162
Greinke 80 pitch 0 run first inningLANMINZach GreinkeKyle GibsonLAN3.9523.01659.1756.9682.5693.236
Greinke 100 pitch 0 run first inningLANMINZach GreinkeKyle GibsonLAN3.9483.14957.4257.0971.6403.499