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Monday, October 27, 2014

Fielding Metric for Total Runs


As you may or may not know I have now came out with a fielding metric.  I think I’ve only posted results/formulas for outfielders and middle infielders.  I’m working on expanding to other positions as well but for now all positions have not been completed.  Meanwhile, I have a bit of a problem on my hands for Total Runs. 

About a year ago I introduced Total Runs and made adjustments like Park Factors to it.  This summer I made yet another adjustment and that was based on the leagues offensive power.  My metric I used at the time for it was DRS, also known as Defensive Runs Saved.  As I mentioned in the first paragraph I have invented my first defensive metric and it’s reliable, kind of.  You can’t tell me DRS is reliable too though.  You know that’s the problem with defensive stats, throughout building my Fielding Linear Weights metric I was constantly comparing it to what DRS and UZR said while I should be comparing it to my subjective knowledge.  So, to make this long story short I think I’ve made up my mind on this regarding whether to use DRS or FLW and that is I’ll be using DRS.  There is one main reason for this and that is:

1)    If I choose FLW, I would have to figure all of the Fielding Linear Weights before I could do any Total Runs values. 

 

There is also a secondary reason and that is, I think I might need another year of tinkering with FLW before I insert it into Total Runs.  The trustworthy and common acceptance might be a bit lower on FLW than DRS too. 

 

That’s all I have for today.  Thanks for reading, some results on 2014 data regarding Total Runs, FLW, and other stats I created should start to appear on here in about 1-2 weeks.  

Saturday, October 25, 2014

Thoughts on Pitching


You might have noticed that I have not done much with pitching stats on this blog.  And I really haven't.  Almost a year ago I attempted to make a stat called Total Runs for Pitchers which didn't really work at all.  I've had a few posts on Wins and Losses and the shortcomings of them.  But no stat that I believe can measure a pitcher accurately.  

 

When I startup my database on recording 2014 stats for players, as of now I only have these stats.  

-Total Runs

-Fielding Linear Weights

-Speed Runs

-Estimated Runs Created

-Maybe Total Wins (Based off of Total Runs)

And then a few other metrics that can relate to the ones I invented above.  But no pitching stat as of now.

 

There is a lot of work in looking at making a pitching metric and it has to adjust for a lot of things like...

-Defense behind pitcher

-Luck controlled variables

 

Those two are probably some of the hardest.  

 

 

Sticking with pitching here, last night in the World Series Jeremy Guthrie was doing ok.  I believe it was the MLB twitter feed who tweeted out that Guthrie was flying and doing very well around the 4th inning or so.  I had two thoughts about this.

 

A)    Guthrie had not recorded a strikeout yet and was a mediocre pitcher throughout 2014. 

 

B)    With no strikeouts he was placing his fate in the hands of the Royals defense which luckily for him is historically excellent. 

 

  

He really wasn’t flying just getting pretty lucky.  In the top of the sixth inning Ned Yost turned some heads when he allowed Guthrie to bat for himself.  Many assumed he would pinch hit for him and go the bullpen.  Ned didn’t, and the Royals went to go get two more runs in the inning for a 3-0 lead. 

Measuring pitcher dominance is easy for me and that’s you measure dominance by strikeouts they get.  If a pitcher is not getting a lot of strikeouts then he is skating on thin ice and placing his fate in the often untrustworthy hands of BABIP. 

 

I might write more about pitchers soon on the blog.  I just wanted to get this post out to show you what I think on the topic of pitching.  Thanks for reading.

Friday, October 24, 2014

The Offseason Plan

As you might know I'm currently working on a study involving whether good speed means good fielding ability.  I am actually going to move back that study for about two weeks.  There are two reasons for this.

- I get a lot of my data from the Bill James Handbook and that comes out November 1st, 2014. 

- If I wait until November 1st, I can get 2014 data from the Handbook instead of using outdated 2013 stats. 

I'm mostly just trying to make the study more current in your minds and I think pushing that back will do that.

Next, I'm going to be getting 2014 data finalized quicker.  You might have noticed I'm just wrapping up 2013 data, but this year I hope to be done with 2014 data by April 1st, 2015.  That way the blog can actually focus on the 2015 season. 

Finishing the 2014 data will include doing totals on these things:

Total Runs, Fielding Linear Weights, Estimated Runs Created, Speed Runs, and if I feel the need to create another stat then another one.  And of course you're get a reminder on how each of these stats are calculated.  Then the results will of course be posted here.

For this offseason, I'm also introducing something a bit new.  To promote other people's baseball research, I will be posting other people's links to articles that I find interesting. 

Also whenever I have something that doesn't exactly fit in with anything mentioned above, I'll use a bullets type post, covering a few topics that are just interesting.   

Thanks for reading.  I hope to actually post more then other off seasons so far. 

Thursday, October 23, 2014

Intro to: Fast players, Good fielders?

Developing my Fielding Linear Weights was hard, but well worth it.  I can use it to study a few issues including the one I'm going to start over the next week or two.  Do fast outfielders make good defensive outfielders.  Most people's thought process would think something like this. 

More Speed=More Range=More Putouts/Assists=Good defensive outfielder.

Obviously I needed to capture the value of speed.  And that's where my newest metric comes in, Speed Runs like it's name suggests measures speed.  To know what goes into this metric, here is my blog post on it here.  http://regresstothemean.blogspot.com/2014/10/speed-runs.html

When looking at two metrics and forming a conclusion off of them you need to make sure these two metrics work.  If they don't work then you will draw bad conclusions.  I have continued to tinker with each, and by the time the results come out on this the formulas for my fielding and base running metric could be slightly different.  I already know the Speed Runs will be different from the one in that blog post. 

So armed with these two new formulas, I want some questions answered.  These are:

Are players with good speed, good defensive outfielders?

Guess:  My gut tells me yes.  One potential drawback of having good speed would be overrunning the ball.  I would think that affect would be small though.

Do slower outfielders make bad defensive outfielders?

Guess:  I think the correlation here is not good.  I know quite a few bad defensive outfielders. 

Using the data we have, by the end of this study we will have the above two questions answered and maybe even a few more questions that we discover throughout the research of this.  If we don't get these questions answered we can always go back multiple years and add those to the study along with 2013/2014. 

Thanks for reading.  Remember to follow me on Twitter @CastroRizzo      

2014 Total Runs Leaders


Player
Runs
Created
Pitching
RunsCreated
Runs
Saved
Baserunning
Runs
PositionTotal Runs
Rendon, Anthony101016725149
Trout, Mike1270-9226146
Lucroy, Jonathan97011136145
Stanton, Giancarlo11207518142
Kinsler, Ian83020631140
Donaldson, Josh93020123137
Altuve, Jose1100-7230135
Brantley, Michael1150-3220134
Heyward, Jason83032118134
Gordon, Alex86027218133
McCutchen, Andrew1200-11-426131
Kluber, Corey0128002130
Cano, Robinson9700329129
Dozier, Brian9000730127
Beltre, Adrian9909-220126
Jones, Adam9102528126
Peralta, Jhonny79017-333126
Hernandez, Felix0124-202124
Cueto, Johnny-1114603122
Gomez, Carlos9502-126122
Puig, Yasiel10002020122

Wednesday, October 22, 2014

Speed Runs

The name for this statistic isn't really good but I think the content put into it gives you some good results.  The reason I went about trying to measure how many runs a player gained on the bases was I need for some research I'm doing.  I'll eventually study the issue:

How well does speed correlate with outfield defense?

So, I needed a speed metric and this is the result of that.  I think this metric works well enough to study the question I want to look at.  Without farther ado here is the formula.  All the values for Stolen bases, Caught stealing, and Triples are based off of Linear Weights values to run scoring. 

A Factor:

Stolen Bases times .18
Caught Stealing times -.48
SB-CS values

The result is the A factor.

B Factor:

Triples times 1.07

The result if the B factor.

C Factor:

Grounded into Double Play %  (GDP/GDP opportunities)

5 to 10%: +6 runs
11 to 12%: +1 run
13 to 14%: 0 runs
15 to 17%: -1 run
18 to 20%: -3 runs
21 to 26%: -6 runs

The result is the C factor

Then with those three factors the formula would be:

A+B-C minus 5 at the end

I think this formula works pretty well for evaluating a player's speed in more ways then just base stealing.

Walking you through an example...

Mike Trout will be our example

Stolen Bases: 33 times .18
Caught Stealing: 7 times -.48

5.94-3.36: 2.58

A Factor Value: 2.58



9 triples times 1.07: 9.63

B Factor Value: 9.63



8/127: About 7%

C Factor Value: 6


2.58 + 9.63 + 6= 18.21
18.21-5=13.2

Mike Trout had 13.2 Speed Runs in 2013.

Thanks for reading.  I'll start to get a post or two ready on if speed correlates with outfield defense.


 

Tuesday, October 14, 2014

Corner Outfielders in 2013 and their Fielding



 
This is the Corner Outfield part in my quest to make a reliable defensive metric.  I have currently done shortstops and now corner outfielders.  Fielding Linear Weights is the name of my metric. 
 
Name
FLW
DRS
Starling Marte
-3
20
Marlon Byrd
6
12
Giancarlo Stanton
-4
-7
Jay Bruce
29
18
Yasiel Puig
3
10
Jose Bautista
-1
4
Alfonso Soriano
5
1
Drew Stubbs
0
-6
Nelson Cruz
-2
-3
Torii Hunter
8
-10
Shane Victrino
28
24
Nori Aoki
6
13
Josh Reddick
8
13
Ichiro
9
7
Hunter Pence
9
-7
Yoenis Cespedes
5
4
Alex Gordon
29
16
Dominic Brown
-12
-7
Justin Upton
-2
-8
Bryce Harper
1
4
Carl Crawford
2
1
David Murphy
14
8
J.B. Shuck
2
0
Dayan Viciedo
-10
-5
 
So, these are the results.  Over the last few weeks I’ve been working on measuring Left and Right fielders defense.  Using putouts, assists, errors, double plays, and strikeout data for teams, and Groundball/Fly ball adjustments I’ve developed a formula that has given me good results.  You might be wondering why I didn’t lump CF in with these two positions and there are two reasons for this.   
 
A)    I don’t know quite how to do them yet.
 
B)     The formula couldn’t be the same as LF and RF
 
 
I’ll probably come back for centerfielders soon but for now I’ll be sticking with corner outfielders.  The formula is pretty easy to understand.  You can be the judge of its accuracy.
 
Putouts (* .25) + Assists (* 6) + Double Plays (* 8) / Errors ( +1 *1.5) minus 7
 
This is essentially the ‘A’ factor.  The B factor is Range Factor. 
 
Range Factor RF Chart
 
 
Range Factor
Runs (+,-)
2.00-2.10
0 runs
2.11-2.20
+ 3 runs
2.21-2.30
+ 7 runs
2.31-2.50
+ 10 runs
2.51-3.00
+ 13 runs
1.90-1.99
- 3 runs
1.89-1.80
- 7 runs
1.79-1.70
- 10 runs
1.69-1.60
- 12 runs
1.59-1.40
- 16 runs
 
Range Factor LF Chart
 
Range Factor
Runs (+,-)
1.88-1.95
0 runs
1.96-2.00
+ 3 runs
2.07-2.20
+ 7 runs
2.21-2.30
+ 10 runs
1.88-1.78
- 4 runs
1.77-1.67
- 8 runs
1.66-1.58
- 12 runs
1.57-1.41
- 15 runs
 
Then the C factor is how many batters each team strikes out.  The thinking behind this is if a team strikes out a lot of batters then the fielders will get less chances with the ball.  This is adjusted for by the following chart.  There are no set standards for the amount of runs + or – just me making guesses based on the average in the MLB strikeouts per team.  (The Twins had the lowest with 985 SO, so they get runs subtracted from their FLW totals, The Tigers had the most with 1428 so they get runs added to their FLW totals) 
 
Teams
Strikeouts
Runs (+,-)
Royals
1208
-1
Tigers
1428
+5
A’s
1183
-2
Rangers
1309
+ 3
Rays
1310
+3
Red Sox
1294
+2
Indians
1379
+4
Yankees
1233
0
Orioles
1169
-2
White Sox
1249
+1
Angels
1200
-1
Mariners
1297
+2
Blue Jays
1208
-1
Twins
985
-8
Astros
1084
-6
Braves
1232
0
Pirates
1261
+2
Dodgers
1292
+2
Reds
1296
+2
Cardinals
1254
+1
Nationals
1236
0
Marlins
1177
-2
Mets
1209
-1
Brewers
1125
-3
Cubs
1184
-2
Giants
1256
+1
Diamondbacks
1218
0
Padres
1171
-2
Phillies
1199
-1
Rockies
1064
-2
 
 
 
  The D factor has Groundball/Flyball adjustments inserted. 
 
Groundball %
Runs (+,-)
44-45%
0 runs
46-47%
+3 runs
48-50%
+7 runs
51-55%
+10 runs
42-43%
-4 runs
41-40%
-8 runs
39-35
-10 runs
 
And that’s all the formula.  The results follow this formula.  For 2012 and back results go to my blog at regresstothemean.blogspot.com
 
Now looking over the results gives some interesting finds. 
 
Starling Marte.  His runs saved in Fielding Linear Weights is -3.  DRS says +20.  Let’s get into the numbers. 
 
Starling Marte
Putouts
Assists
Double Plays
Errors
FLW
DRS
 
176
5
0
6
-3
20
 
He did not have a good defensive season by any of those stats expect DRS.  Why does DRS rate him so high?  As you probably know Defensive Runs Saved uses actual video and bins to determine how many runs they saved.  Not anything to do with putouts, assists, errors or any number.  I could be wrong on that but that’s how I interoperated the methodology behind it.  I don’t understand how somebody could come to the conclusion he was the best LF in baseball but I say he’s one of the worst.  If you think -3 is low, before the Strikeout/Groundball/Fly ball adjustment he was rated -15.  The point of the matter is he isn’t very good at defense.  At least in 2013. 
 
Jay Bruce is a good fielder.  I had actually before constructing this system, never knew anything about Bruce as a fielder.  And if I don’t know anything about a player’s defense then you would assume they are about an average defender.  That is far from the case with Bruce.  Here is a look at Bruce’s 2013 defensive stats.
Name
Putouts
Assists
Double Plays
Errors
FLW
DRS
Jay Bruce
330
13
3
3
29
18
 
Yasiel Puig before Groundball/Fly ball I believe was rated as -2.  I think that was a pretty accurate rating on him.  Some of the younger defensive outfielders that have burst on to the scene like (Trout, Puig, Harper, Stanton, Marte,) are rated quite poorly by my metric and DRS.  You would not get that type of feeling if you just watched games however.  The reason I think that is because all the players I listed are so exciting and flashy.  Other guys like Jay Bruce aren’t very exciting.  Those guys I believe would be overrated by the casual fan with no knowledge of defensive metrics. 
 
The largest fly ball and the largest groundball staffs in 2013 were surprisingly the A’s and Pirates.  This affected Cespedes, Reddick, and Marte quite a bit.  Before those adjustments you would have a got lot different messages about these players then you do now.  It amazes me how some people have attempted to make defensive metrics without adjusting for these things.  They are very important.     
 
All the other players I think are pretty straight ford I believe.  Thanks for reading.