作者abc12812 ()
看板Cardinals
标题Disecting Genius: examining Dave Duncan
时间Thu Jun 18 22:36:33 2009
http://www.3-dbaseball.net/2009/06/disecting-genius-examining-dave-duncan.html
Dave Duncan has long been labeled a genius by many followers of the game.
Tony LaRussa has frequently credited Duncan as a major contributor to his
success. Cardinal fans often talk of his coaching skill as if he spins straw
into pitchers. Broadcasters have been known to predict his election into the
HOF, an institution that does not even induct coaches. Does the Duncan Effect
really exist, though? Do pitchers really get better on the old catcher's
tutelage?
Duncan's proponents will cite a few statistics supporting their claims,
including his staffs' ERAs (they've led the league 4 times) and his 4 Cy
Young winners. However, the answers here are not that simple. What we have
just shown is mostly that over his long career, Dave Duncan has coached some
very good pitchers. We have no idea how much of that is due to Dave Duncan.
We can't use that as evidence much more than we can say Mike Piazza or Javy
Lopez were brilliant catchers because their staffs had such success in L.A.
and Atlanta. Additionally, we have anecdotal evidence of pitchers like Woody
Williams or Jeff Suppan who were perceived to have grown much more successful
thanks to pitching under Duncan. This approach also has it's problems and
does not necessarily prove anything about Duncan.
None of this means, of course, that the claims about Duncan are unfounded. It
just means we need to formulate a better approach if we are going to attempt
to find evidence for or against the claims about Duncan. The primary issue
here is that we have a premise (Dave Duncan is a genius), but no good way to
go about seeing if that might be true. Most fans, broadcasters, analysts,
writers, etc. have a relatively weak grasp on statistical meaning and,
consequentially, return essentially meaningless statistical evidence when
they feel such evidence is needed. It doesn't invalidate their claims, since
they are usually based on some sort of intuitive or anecdotal understanding
rather than the statistics, but it does fail to validate them.
In Duncan's case, we need to find a way to isolate as best we can his
influence on pitchers. If we just look at everyone he coaches and compare
them to the rest of the league, we can't tell what Duncan is changing in
those pitchers. Instead, we take an approach similar to what Tom Tango calls
WOWY (with or without you), meaning we look at what pitchers did under Dave
Duncan and then compare that to what they did without him.
I decided to look at starting pitchers who had pitched three straight years
away from Duncan before joining his staff, and then compare their performance
in those three years to their performance in their first year with Duncan
(for players traded for midseason, their first full year was used). This
gives us a good sample to evaluate what we can expect from these pitchers
without Duncan's influence as well as lets us focus on Duncan's perceived
specialty: veteran starters. For this study, a starting pitcher was anyone
who made at least 10 starts that year. There were 12 pitchers who were
starters for all 3 years before joining the Cardinals and then starters in
their first year with the Cardinals, plus 8 more who were relievers at some
point in the three previous years who started for the Cardinals in their
first year with the team.
The simplest approach would be to simply take each pitcher's ERA over the
years leading up to learning from Duncan and compare that to his ERA under
Duncan. This approach has several problems, which will be discussed
presently, but it is a good place to start. Starting pitchers going to St.
Louis during Duncan's tenure certainly have improved their ERAs. In the three
years before joining Duncan, the 12 starters dropped their ERA from 4.48 to
4.12 in a bit over 2000 innings. Adding in the other 8 pitchers, their ERA
dropped from 4.58 to 4.29 in about 3200 innings. This lends credence to the
anecdotal evidence that pitchers do improve significantly under Duncan.
There are four major problems with this simple approach. One of them works
against Duncan, two work in his favour, and the final one is mostly neutral.
The first is that an aggregate of the past 3 years is not always a very good
estimate of what a pitcher should be expected to do. We are looking mostly at
veterans here (the average age of the 12 starters when they joined the
Cardinals was 29.4, and Mark Mulder at 27 was the only one under 28). A
pitcher hitting his 30s, in general, is not supposed to be as good as he was
3 years earlier, but our aggregate counts what he did 3 years ago as just as
important to what he should be expected to do as last year. To illustrate
this, look at how the ERAs of our sample rise in each successive year prior
to joining the Cardinals:
* 3 years prior: 3.84 ERA
* 2 years prior: 4.68 ERA
* 1 year prior: 4.97 ERA
Looking at the trend over the previous three years rather than lumping them
all together shows how much our initial method diminished the Duncan Effect.
Going just by the previous year, these pitchers dropped from a 4.97 ERA to a
4.12 ERA. Adding in the other 8 pitchers again, the ERA drops from 4.88 to
4.29.
This seems like a huge difference, but we still have to account for the other
three differences. One, pitchers going to the Cardinals are always moving to
the NL. Sometimes they are coming from the NL, and sometimes from the AL; in
the former case, it doesn't matter, but in the latter, a league adjustment
becomes necessary because ERAs are lower in the NL. A pitcher going from the
AL to the NL should see his ERA drop even if he doesn't pitch any better.
Two, the Cardinals have fielded very good defenses, on the whole, during
Duncan's tenure. Again, a pitcher moving in front of a good defense should
see his ERA drop even if he does not pitch any better. Three, we need to
account for park factors. A pitcher coming from Coors should see his ERA
drop, while a pitcher coming from Petco should see it rise. Both Busches have
been pretty neutral, so this mostly matters when we look at pitchers coming
from more extreme parks to Busch.
There is an additional problem that only applies to looking at the sample
with the 8 converted relievers: a pitcher's ERA will generally be lower when
he is used as a reliever than when he is used as a starter. So converting a
pitcher to a starter is likely to boost his ERA a bit. There is also the
issue of having fewer innings to project these pitchers' expected ERAs, which
will create a minor issue in the next step (namely more regression when we
project them). For these reasons, counting these pitchers will underrate the
Duncan Effect to some degree, but they do increase our sample to a more
comfortable level, and these pitchers are some of Duncan's most famous
projects, so we can still look at them, keeping in mind that we are not
exactly comparing apples to apples.
Now that we have our main problems outlined, we can refine our approach. The
issues will be addressed in the following ways:
* Use Marcel projections instead of a simple 3-year aggregate or the
previous year's ERA alone to determine each pitcher's expected performance
level
* Park adjust each pitcher's ERA for each year we look at
* Determine a league adjustment to apply for pitchers in the AL to put
their stats on par with NL pitchers
* Calculate FIP as well as ERA to account for the impact of fielders on
ERA
The first thing I did was apply a park adjustment to each pitcher's stats for
every team he played for in a given year. For example, if someone pitched for
Baltimore and Houston in the same season, the Baltimore stats were adjusted
to Camden and the Houston stats to Ex-ron. Separate stints with different
teams were still left separate at this point so that the league adjustment
could be applied only to the proper stint. The park adjustment figures I used
were the same as the 1-year pitcher park factors published on
Baseball-Reference.
Then I determined my league adjustments. This was done in traditional
fashion, by looking at all pitchers who switched leagues from one year to the
next and comparing how they did. To smooth out some of the noise, I looked at
5-year samples (2 years before and after each season), giving more weight to
the season I was measuring in my aggregate. In recent years, this adjustment
is about .92 (meaning you multiply a pitcher's ERA by .92 when he goes from
the AL to the NL). In the mid-90s, it got as low as .80. Separate adjusments
were done for FIP and ERA; the two adjustments are similar, but the FIP
adjustments seem to be a bit more stable from year to year and didn't go
quite as low at their lowest as the ERA adjustments.
The league adjustments were applied to all AL seasons. I did this because I
ultimately want to look at what pitchers would do in a neutral environment,
so I converted everyone's stats to a neutral NL park (hey, that sounds a lot
like Busch Stadium). Once the adjustment was applied, I combined separate
stints into full seasons (i.e. our previous Baltimore/Houston example is now
simply counted as 1 season for the pitcher in a neutral environment rather
than 2 stints in separate environments). These are the figures I plugged into
the Marcel projections. I projected both ERA and FIP using this method.
This gives us a much better idea of how each pitcher should be expected to
pitch free from any of the above influences. Our group of 12 starters now
projects to a neutralized 4.61 ERA and 4.64 FIP entering Duncan's care and
ends up with a 4.16 ERA and 4.44 FIP. With the other 8 pitchers, they project
to 4.63/4.64 and end up at 4.29/4.53. As we would expect, the resulting ERAs
are much lower than the FIPs. The Cardinals' team ERA over Duncan's tenure
has been .25 points lower than its FIP due to consistently good defenses.
What about Oakland?
The same thing can be done with Duncan's pitchers in Oakland. This time, the
group of pitchers dropped their ERAs by about .2 points, but again, that was
in front of mostly good defenses. The FIPs stayed about the same.
What does this all say about the Duncan Effect? To be honest, nothing
definitive. We aren't looking at all at young pitchers Duncan might have to
develop who came up through his own organization. It doesn't include all
pitchers who joined the Cardinals, only ones with a three year track record
elsewhere. This means pitchers like Chris Carpenter, who was coming off
missing extended time from injuries when he joined the Cardinals, are not
counted here because our methods don't do much to isolate Duncan's effect. We
don't have nearly as large a sample as we'd like to decide anything for sure.
Our use of FIP downplays Duncan's pitch-to-contact philosophy where utilizing
those good defenses was more effective than FIP can account for. We can,
however, tell a couple important things. One, a pretty good chunk of the
percieved Duncan Effect is due to other factors, probably most notably the
defenses his teams have had. Two, those other effects don't cover all of the
improvement we see in pitchers Duncan has coached, and they still did
noticeably better than expected as a group. This does not prove a Duncan
Effect, nor does it assign a real value to it, but it does support the claims
and suggest that there is a good chance it does exist.
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