Mike Montgomery: The Cherry on Top?

Remember the kid in high school who always got straight “A”s? While everybody else was going about their business doing their best to stay afloat, that kid would seek out his or her own challenges just to try to make school interesting. Whether you loved, hated, or were that kid, you’ll never forget the way he or she seemingly operated at another level. In major-league baseball this year, there were a few players worthy of a comparison to that kid, but right now we’re going to talk about the one team who warrants the comparison: the Cubs. Specifically, we’re going to look at one way they challenged themselves and how it might pay off in the playoffs.

How do you improve when you’re already the best? That’s a somewhat obnoxious oversimplification of the situation the Cubs faced prior to the July trade deadline, but it’s not without merit. The Cubs have had ups and downs throughout the season, but it would be disingenuous to attempt to contend that a team ranking atop the majors in wins, team RA9, position-player wRC+, and defense is anything less than the best. They enter the playoffs the easy favorites on paper and, remarkably, that probably would have been true even if the team had failed to make a single upgrade at the trade deadline.

Of course, they didn’t stay quiet in July. As you know, their big splash was the acquisition of Aroldis Chapman – a move which helped shore up their bullpen as well as address their lack of left-handed relief options. Chapman has been predictably great for the Cubs and figures to be an important part of their postseason run, but that’s not the move we need to talk about. The Chapman acquisition is important, but its impact is boringly straightforward. The more intriguing move was the acquisition of another left-handed pitcher: Mike Montgomery.

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FanGraphs Audio: Dave Cameron on Externality in Baseball

Episode 687
Dave Cameron is the managing editor of FanGraphs. During this edition of FanGraphs Audio, he discusses David Ortiz’s credentials for the Hall of Fame; examines the concept of externality, from the field of Economics, in the context of baseball; and provides a status update on the actual, current members of the Dodgers’ pitching staff.

This episode of the program either is or isn’t sponsored by SeatGeek, which site removes both the work and also the hassle from the process of shopping for tickets.

Don’t hesitate to direct pod-related correspondence to @cistulli on Twitter.

You can subscribe to the podcast via iTunes or other feeder things.

Audio after the jump. (Approximately 27 min play time.)

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The Projections In Review, Briefly

You might’ve noticed that the regular season is over. As such, all the regular-season numbers are in the books, which gives us some good opportunities for evaluation on the outside. In this quick post, I would like to evaluate the preseason team projections. Last year, at least in the American League, the projections wound up being a mess. I remember there being a point about halfway through where it looked like one would’ve been smarter to bet the opposite of every AL team projection. How’d the numbers shake out in 2016? Below, see plots.

Several times before, I’ve used old team projections from seasons past. Not all team projections included here come from the same sources, because the same sources just haven’t always existed. For recent years, I’ve been able to use FanGraphs team projections. Going further back, I’ve had to search elsewhere, because FanGraphs just didn’t have projections. So I know that’s one potential source of error here, but I think it’s better than just not having data at all. And ultimately, all projection systems are built around similar foundations. You take recent numbers and weigh them and project them for the short-term future. There’s not a lot to change. So! Why don’t we just get to the information?

I have team projections stretching back to 2005. Here is a plot including actual team wins vs. projected team wins. What you see here is the average error per team per season:

actual-projected

This year, the projections fared much better than they did in 2015. I went with the last version of FanGraphs’ preseason team projections, and after the average projection missed by 8.1 wins a year ago, this time the average projection missed by 5.7 wins. That puts this year in line with 2014, as being fairly successful, math-wise. It would be the best-projected year since 2007. I have no idea if that means anything; I’m just putting it out there. This year’s biggest miss was the Twins, who fell an incredible 19 wins short of the March expectation. The word “Twins” has the word “wins” right in it. It also has a T, which looks like the symbol for perpendicularity. Other teams might be content to operate in parallel with winning. The Twins decided to challenge it head-on.

Another thing we can look at: What about BaseRuns wins vs. projected wins? We know there are elements that are just about un-projectable. What if we strip those away?

baseruns-projected

Last year, the average miss was 7.0 BaseRuns wins. This year, the average miss was 5.4 BaseRuns wins, standing again as the strongest year for the projections since 2007. You might say it’s strange that the projections haven’t improved on a set of projections from a whole decade ago, since that was so far back it was pre-PITCHf/x era. But this is at least evidence that last year’s weirdness was a blip. The biggest miss for 2016: The Red Sox, actually. They were projected for 89 wins, but they finished with 102 BaseRuns wins. Good team, the Red Sox. The Cubs were the second-biggest miss!

Just to close it out, we can leave out the projections entirely. Here are BaseRuns wins vs. actual wins. Are teams finding ways to beat their underlying statistics more often, or is that not the case?

baseruns-actual

This year, the average difference was 4.2 wins. That’s down from last year’s 5.1, but still, this is the second-biggest error in the sample. So that’s potentially of note. Last year it felt like the BaseRuns model was practically broken. This year has eased some of those concerns, but it’s still worth wondering about. The Rangers finished with 13 more actual wins than BaseRuns wins. The Rays finished with 13 fewer actual wins than BaseRuns wins. Go ahead and figure that one out. At least for the time being, I quit. What’s done is done!


The 2016 American League Gold Gloves, by the Numbers

Today is the day without baseball, and without the ability to watch baseball to pass the time, we turn to something even more frivolous: discussing baseball awards to pass the time. MVP and Cy Young thinkpieces have been flying across my Twitter timeline all afternoon, while our own Eno Sarris ponders evaluating managers statistically for his award vote. And, while Gold Glove finalists won’t be announced for another few weeks, the data is all there, so I might as well continue my annual tradition of objectively crowning the year’s best defenders, according to the publicly available metrics on hand.

Regarding eligibility, I used the same qualification rules used by Rawlings for the official award. If you’d like, you can find those here. Only players who qualify for the actual award qualify here. Once having my player pool, I pulled three advanced defensive metrics for consideration: Defensive Runs Saved, calculated by Baseball Info Solutions, Ultimate Zone Rating, calculated by Mitchel Lichtman and used as the in-house FanGraphs metric, and Fielding Runs Above Average, calculated by Baseball Prospectus and used as their in-house defensive metric. I summed the three, then averaged them together to figure a “total” defensive runs saved number.

You already know this, but the numbers don’t always agree. Sometimes, people don’t like that, but it is what it is. That’s why I prefer to look at them all. I’ll always be confident in the defender who’s rated as positive by all three, moreso than the guy rated positive by two and average or below average by another. By the same token, I’ll always be confident in the defender with one excellent grade and two average grades, moreso than the guy with three average grades, because the numbers see something excellent in the first guy that isn’t apparent in the other. That excellent grade isn’t coming from nowhere. The numbers are subject to noise, but they’re not liars, and I think we can all agree that, generally speaking, they pass the eye test.

For catchers, things are a bit trickier, and the model used by Baseball Prospectus is the only one that adjusts for things like the pitcher (on throwing and blocking) and the umpire and batter (on framing), so I’ve just pulled straight from BP’s leaderboards there. UZR doesn’t exist for pitchers, so only DRS and FRAA are used.

Enough of the methodology mumbo-jumbo. Awards time.

Pitcher – Masahiro Tanaka
Name IP DRS FRAA tDEF
Masahiro Tanaka 199.2 7 4 5
J.A. Happ 195.0 5 5 5
R.A. Dickey 169.2 6 3 5

While Masahiro Tanaka wasn’t recognized as a finalist in the official voting last year, he did place third in this study, and this year, he ought to take home the hardware. Since entering the league in 2014, only Dallas Keuchel and Zack Greinke have more Defensive Runs Saved than Tanaka, who is both efficient at controlling the run game, and also fields his position well, due in part to good fielding stance, quick hands, and athleticism, all of which are on display above. Apparently it’s also beneficial to pitch in Canada with a two-letter first name that ends in “A.”

Iron Gloves: Carlos Rodon (-4), Jered Weaver (-4), Ivan Nova (-4).
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The Reds Actually Did It

Some time ago, in another InstaGraphs post, I mentioned something that could potentially become true about the 2016 Reds. We spend a lot of time writing about things that could potentially become true, and inevitably, a lot of those paces fall off. There are reasons for that, and that would be a subject for another post. But the 2016 numbers are official now, dammit. There’s no more “on pace for;” there only is. Here is something that is:

team-pitching-war

That’s bad! Boy, it gets worse. Here are the worst team pitching staffs since 1900, by our version of WAR:

Bottom 10 Pitching WAR
Team Season WAR
Reds 2016 -0.5
Athletics 1915 0.3
Royals 2006 0.5
Twins 1982 0.9
Athletics 1964 1.4
Marlins 1998 1.5
Mets 1966 1.7
Padres 1977 1.7
Athletics 1955 1.8
Astros 2013 2.0

To be absolutely clear about what we have here: By our numbers, the Reds just became the first pitching staff in modern history to finish with a negative WAR. It’s only slight, sure, and the difference between them and those 1915 Athletics is less than one win, but that negative symbol is conspicuous. It pushes the digits over to the right, so they can stand out. The Reds, as a collective, featured a major-league pitching staff that was a worse-than-replacement-level pitching staff. That’s almost unfathomable, is what that is.

Did the Reds really have the worst pitching staff ever? I mean, hell, I don’t know. Their pitching staff had one of the biggest home-run problems ever. By actual runs allowed, they were a little bit better than replacement-level, but you know where we stand on all that. There’s no way to actually compare across seasons or eras, not with the desired level of precision. We just don’t understand pitching that well yet, and we understand it even less the further back we go into history. We can say this: If you wanted to talk about the worst staffs of all time, you might use FanGraphs WAR as a starting point. It couldn’t make the Reds look any worse.

Reds pitchers, month by month:

  • April: -1.3 WAR, 30th place
  • May: -1.1, 30th
  • June: -0.6, 30th
  • July: +1.9, 20th
  • August: +1.0, 26th
  • Sep/Oct: +0.2, 30th

The first half is what did the Reds in. In the second half, they accumulated 3.2 WAR, good enough to edge out the Twins, Braves, and Diamondbacks. In each of the last three months, the Reds’ staff finished in the black. Yet it’s appropriate that, in the final stretch, they were dead last again. All they needed were one or two more good games, to avoid finishing in the…red. But a league-worst September and October locked the Reds into place. They had a chance to run away from history, but instead they suffer its embrace.

A negative WAR. It’s not that there weren’t some success stories. Anthony DeSclafani was pretty good. Dan Straily was all right. Raisel Iglesias adjusted well to the bullpen. Brandon Finnegan got stronger in the second half. But let me tell you: 32 Reds pitchers pitched. Twenty of them finished below 0.0 WAR. Alfredo Simon allowed more runs in 58.2 innings than Jon Lester allowed in over 200. J.J. Hoover allowed more runs in 18.2 innings than Zach Britton’s allowed the last two years combined. For the Reds, 2016 was never going to be about winning. Yet it also definitely wasn’t supposed to be about this.


Job Postings: Colorado Rockies Baseball Research & Development Analyst, Systems Developer & Web Developer

To be clear, there are three postings here.

Position: Colorado Rockies Analyst – Baseball Research & Development

Location: Denver

Description:
This individual will collaborate with the Research and Development team and will assist in the development and maintenance of a player information and projection system along with other statistical analysis and on field strategy. This position requires strong statistical development skills and experience as well as a demonstrated ability for independent curiosity and a commitment to excellence while working within a team framework.

Responsibilities:

  • Utilize advanced statistical techniques to analyze large datasets for actionable conclusions.
  • Design and document development of new analytic applications to assist in player evaluation.
  • Utilize existing Baseball Research and Development applications and databases in order to perform quantitative research related to baseball strategy and player evaluation.
  • Work with Baseball Research and Development team to design and integrate new statistical ideas into existing analytical systems.
  • Build automated solutions to import, clean and update datasets for use in downstream analyses.
  • Complete ad-hoc database queries to answer specific questions from Front Office colleagues.

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Effectively Wild Episode 961: Multiple Mike Trout Drafts

Ben and Sam conduct multiple Mike Trout drafts and discuss DJ LeMahieu’s batting title, the AL Cy Young race, Vin Scully’s sign-off, and more.


The Terrible, Horrible, No Good, Very Bad 100-RBI Season

Depending on your perspective, you might think that Eric Hosmer had a career season. After all, he wasn’t just an All-Star, he was the All-Star Game MVP! He hit 20 homers for the first time — his 25 dingers were six more than his previous season best. And he drove in 104 runs — 11 more than his previous best. And yet, for the third time in his career, he was a replacement player or worse in terms of WAR. Did Eric Hosmer just have the worst 100-RBI season on record?

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How the Cubs Stack Up Within Baseball History

Importantly, for the Cubs, this season isn’t over. Obviously, this season isn’t over — in a sense their real season hasn’t begun. We’ve known the Cubs would make the playoffs for something like five and a half months, and only now do they get to compete for the grand prize. Because there are games remaining, this might not seem like the best time to examine the 2016 Cubs through a historical lens.

I believe the opposite, though. At last, we have final, official regular-season statistics. Those are the stats that matter the most. And even though the Cubs are clearly Team No. 1 moving forward, the odds are still better that they don’t win the World Series. They’re probably going to lose, somewhere and somehow. And I don’t want to allow for playoff emotion to color the way people feel about this analysis. This season, the Cubs won eight more games than anyone else. The Cubs had a better run differential than anyone else, by a margin of 68. Clearly, they were really good. But how good, historically, when you’re talking about more than 100 years?

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How Should We Evaluate a Manager?

I’ve got a vote for American League Manager of the Year this season and I’m terrified. My first vote as a member of the Baseball Writer’s Association, and it’s the impossible one.

Maybe impossible is too tough a word. I’m sure I’ll figure something out in time to submit a vote. But evaluating the productivity of a manager just seems so difficult. We’ve seen efforts that use the difference between projected and actual wins, or between “true talent” estimations for the team and their actual outcomes. But those attribute all sorts of random chance to the manager’s machinations.

I’d like to instead identify measurable moments where a manager exerts a direct influence on his team, assign those values or ranks, and see where each current manager sits. So what are those measurable moments?

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