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Full 1998 Numbers
o Glossary of Statistical Terms


Back in my college days, when I was spending too much of my time at the
Astrodome instead of studying for finals, my friends and I used to cringe
whenever Astros reliever Dave Smith was brought into a game with runners on
base. Our experience (admittedly, probably based on a small sample) was
that Smith was liable to allow all the runners he was inheriting to score,
racking up runs charged to his predecessors, but finish the inning before
any of his own runners crossed the plate, keeping his own "R" and "ER"
columns pristine. Our nickname for him at the time: Dave "Hey, it’s not my
ERA" Smith.


Whether or not we were right about Smith in particular, it’s widely
understood that the traditional way of assigning runs to pitchers — if a
runner scores, the pitcher who let him reach base is charged with the run (I
know that’s a simplification) — doesn’t always work well, especially with
relievers. A reliever who comes in with the bases loaded and two out and
gives up a triple before getting out of the inning has hurt his team plenty,
but he has helped his ERA. On the other hand, a reliever in the same
situation who strands all three runners by getting the first batter out has
done far more in terms of preventing runs than a pitcher who gets that same
first batter out with two outs and the bases empty. A statistic for
evaluating relievers should do a better job of allocating credit for runs
prevented and blame for runs scored than the traditional run assignment
method.


Gary Skoog came up with an technique for doing this with his Value Added
approach, described in an article in the 1987 Bill James Baseball Abstract.
His idea, which he applied to all players, not just relievers, was to
measure the quality of each appearance by the player in terms of how it
changed run expectation. He used a situational scoring table from The
Hidden Game of Baseball
to map each of the 24 possible bases/outs states
into the expected number of runs that would score in the remainder of the
inning starting from that state. For example, according to Hidden Game‘s
table, an average team with one out and runners at second and third would
expect to score 1.37 runs in the remainder of the inning; with two outs and
a runner on second, a team would expect to score 0.35 runs. He then
calculated the value of an appearance as the difference between the expected
runs when the appearance started and the expected runs when the appearance
ended, plus the number of runs that scored during the appearance itself.
For example, if a reliever entered a game with one out and runners on second
and third, and was pulled after getting a strikeout and surrendering a
double that scored both runners, his Value Added for that appearance would
be 1.37 – 0.35 – 2 = -0.98 runs. A player’s Value Added for the season is
the sum of the Value Added results for each appearance in the season.
Steve Schulman has extended this system to remove expected runs due to
errors. (Skoog had this basic error-removing idea as well, but he wasn’t
explicit about how to remove them with pitchers.) Schulman has applied his
version under another name — Runs Prevented — to evaluate relievers in the
past few editions of the STATS Baseball Scoreboard.


This system offers a good solution to the run assignment problem inherent in
traditional pitching statistics. Unfortunately, Skoog and Schulman’s
realizations of the system do not address some other well-known problems in
baseball analysis. In particular, the ratings they produce are not adjusted
for park, league, or era. For this article, we’ll make a few changes to
Skoog and Schulman’s calculations, listed here in rough order of importance:

  • The numbers here are adjusted for park and league. For any given
    appearance by a reliever, we will evaluate that appearance using a
    situational scoring table for the park and league in which the
    appearance took place.

  • Instead of using the situational scoring table published in The Hidden
    Game of Baseball, which is based on a computer simulation using data
    from 1961 to 1977, the numbers here use the actual scoring frequencies
    for the major leagues in 1998.

  • We will not try to solve the problem of separating pitching from
    fielding by making any special adjustments for errors.


We’ll call our rating Adjusted Runs Prevented (ARP) — adopting Schulman’s
name for the method but adding the "Adjusted" in front of it to make it
clear we’re doing things differently. A reliever’s ARP is the number of
runs that he prevented over an average pitcher, given the bases/outs
situation when he entered and left each game, adjusted for league and park.
The exact formula for a reliever’s ARP for a game is



(ER(sS,P) – ER(sF,P) + IF*ER(s0,P) – R) / pe(P)

where

  • ER(s,P) is the expected number of runs that will score in the remainder
    of an inning starting in bases/outs state s in park P,

  • sS is the bases/outs state when the reliever entered the game,
  • sF is the bases/outs state when the reliever left the game,
  • IF is the number of innings the reliever finished,
  • s0 is a special state for the beginning of an inning. Note that this
    state is different from the state for no outs, none on. Using this
    state instead of the no-out-none-on state once per inning ensures that
    ARP has the following desirable property: the total ARP for all
    relievers in that inning will be equal to the league average runs per
    inning minus the number of runs that scored in the inning (park
    adjusted). This is another way that ARP differs from Skoog’s or
    Schulman’s measures.

  • R is the number of runs that scored while the reliever was in the game,
    and

  • pe(P) is the park effect for park P.


ARP represents a reliever’s cumulative run prevention above average over the
course of a season. We would also like to have a measure of a reliever’s
rate of run prevention using the same basic approach. We’ll do this by
making this observation: like ARP, Pete Palmer’s Adjusted Pitching Runs
(APR) measures production in terms of runs prevented above average. APR is
based on the pitcher’s rate of runs allowed: Palmer’s version is based on
park-adjusted ERA, but for this article, we’ll use adjusted RA, or ARA.
It’s easy to compute a pitcher’s ARA from his APR by applying the APR
formula "backwards":



ARA = LgRA – 9 * APR / IP


If we apply this same "backwards" formula, substituting ARP for APR, we can
get a rate stat based on ARP that is directly comparable to adjusted RA.
This "Runs Allowed Average" derived from ARP, abbreviated RA(ARP), is
calculated as:



RA(ARP) = LgRA – 9 * ARP / IP


If a player has a RA(ARP) of 3.00, I read it that he prevented runs like a
"full-inning pitcher" with a 3.00 RA, where a full-inning pitcher is a
pitcher who never enters or leaves a game in the middle of an inning.
Starters are usually pretty good approximations to full-inning pitchers,
since the vast majority of their innings are full innings. Note that in
extreme cases, a reliever’s RA(ARP) can be negative. For example, if a
reliever enters a game with bases loaded and nobody out, and he gets out of
the inning with nobody scoring, he’ll have a negative RA(ARP) for the game.
That actually makes a certain amount of sense: that reliever has done even
more to prevent runs than a pitcher who came in with nobody on none out and
pitched a scoreless inning.

1998 Leaders


With that introduction to the methods, let’s get to the results. Here are
the top 20 relievers in the majors in 1998, ranked by Adjusted Runs
Prevented:

          Pitcher       Team     IP    R   ARA   APR  RA(ARP)  ARP
          --------------------------------------------------------
          Hoffman,T      SDP    73.0  12  1.71  25.3    1.40  27.8
          Jackson,M      CLE    64.0  11  1.43  24.1    1.01  27.1
          Urbina,U       MON    69.3  11  1.64  24.6    1.60  24.9
          Nen,R          SFG    88.7  21  2.28  25.1    2.40  23.9
          Mecir,J        TAM    84.0  30  2.98  17.3    2.36  23.0
          Gordon,T       BOS    79.3  24  2.62  19.5    2.26  22.6
          Rivera,M       NYY    61.3  13  1.88  20.1    1.56  22.3
          Shaw,J         C/L    85.0  22  2.50  22.0    2.71  20.0
          Veres,D        COL    76.3  26  2.64  18.6    2.57  19.2
          Ligtenberg,K   ATL    73.0  24  3.08  14.2    2.52  18.7
          Wall,D         SDP    65.3  19  3.03  13.0    2.48  17.0
          Timlin,M       SEA    79.3  26  2.83  17.6    2.95  16.6
          Mills,A        BAL    77.0  32  3.70   9.6    2.92  16.3
          Wetteland,J    TEX    62.0  17  2.25  17.7    2.52  15.9
          Swindell,G     M/B    91.3  40  3.87   9.7    3.29  15.6
          Brocail,D      DET    62.7  23  3.15  11.7    2.65  15.1
          Darensbourg,V  FLA    71.0  29  3.99   6.6    2.91  15.1
          Reed,S         S/C    80.3  29  3.17  14.8    3.13  15.1
          Lowe,D         BOS    75.0  30  3.46  11.4    3.07  14.6
          Howry,B        CHW    54.3  20  3.22   9.7    2.43  14.5


Trevor Hoffman finished as the top major league reliever by this measure,
followed closely by Mike Jackson, who won the AL crown. If you go by the
traditional method of charging runs to pitchers (represented here by APR),
Ugueth Urbina and Rob Nen would rank right up there with Hoffman and
Jackson. However, a deeper look into their appearances shows that Nen and
Urbina were not as good with the runners they inherited and/or the runners
they turned over to others, so they finished a notch below the top two.
Hoffman was joined in the top 20 by his teammate Donne Wall to form the best
1-2 combination among major league bullpens. Tom Gordon was joined by Derek
Lowe and a half-season of Greg Swindell (as well as Jim Corsi, who just
misses this list) to form the best core of a bullpen. The real surprises on
this list are Jim Mecir, Alan Mills, Greg Swindell, and Vic Darensbourg.
None of those pitchers fare especially well if you look at how many runs
they were charged with, but when you also take into account how well they
handled others’ runners and how well others handled their runners, they
finished among the league’s elite.


Looking at the league’s best is fun, but, as Felipe Alou knows, you can’t
have fun all the time. Here are the worst 10 relievers from 1998, ranked by
ARP:

          Pitcher       Team     IP    R   ARA   APR  RA(ARP)  ARP
          --------------------------------------------------------
          Bennett,S      MON    91.7  61  6.87 -20.8    6.95 -21.6
          Ayala,B        SEA    75.3  66  7.55 -22.8    7.14 -19.3
          Pittsley,J     KCR    60.0  50  6.91 -13.9    7.32 -16.6
          Dehart,R       MON    28.0  22  8.12 -10.2   10.10 -16.4
          Baldwin,J      CHW    21.7  26 10.49 -13.6   11.59 -16.3
          Judd,M         LAD    11.3  19 17.13 -15.5   17.73 -16.2
          Bailes,S       TEX    40.3  33  6.72  -8.5    8.10 -14.7
          Rojas,M        NYM    58.0  39  6.39 -10.1    6.98 -13.9
          Speier,J       C/F    20.7  20  9.39 -10.5   10.58 -13.2
          Stanifer,R     FLA    48.0  33  6.72 -10.1    7.19 -12.6


I’m sure Alou would have loved to have a Ugueth Urbina clone he could run
out for the 120 or so innings he used Shayne Bennett and Rick DeHart.
Bennett had an especially noteworthy season; it’s not often you see a guy
who pitches that badly finish among the league leaders in relief innings
pitched. At least with Bennett, the traditional method of charging runs to
pitchers was doing a fair job of evaluating him. Scott Bailes, on the other
hand, had an already awful ARA of 6.72 which was actually deceptively low.
If you look at how he prevented runs overall, he pitched more like an
8.10-RA pitcher.


Here are the team numbers from 1998, with bullpens ranked best to worst in
ARP:

               Team     IP    R    ARA    APR    RA(ARP)  ARP
               -----------------------------------------------
               COL    449.3  198  3.42   70.5     3.68   57.3
               TAM    502.0  232  3.85   54.4     3.82   56.2
               HOU    412.0  162  3.81   46.5     3.73   50.4
               SFG    512.3  200  3.76   60.6     4.10   41.3
               BOS    498.3  238  4.13   38.5     4.15   37.6
               NYY    395.3  173  3.89   41.3     4.00   36.2
               CAL    483.7  225  4.09   39.5     4.17   35.4
               SDP    421.0  175  4.33   23.2     4.18   30.2
               TEX    465.7  234  4.13   36.2     4.27   28.7
               PIT    456.3  213  4.29   27.4     4.29   27.2
               MIL    516.3  245  4.32   29.2     4.35   27.1
               CIN    509.3  256  4.58   14.0     4.50   18.3
               CLE    454.7  238  4.37   23.1     4.47   18.2
               ATL    364.0  175  4.50   13.3     4.41   16.7
               NYM    403.3  180  4.24   26.3     4.57   11.4
               BAL    475.3  237  4.44   20.4     4.74    4.8
               DET    493.7  255  4.44   21.4     4.76    3.5
               MIN    505.0  263  4.65    9.8     4.87   -2.2
               STL    538.0  274  4.87   -2.8     4.92   -5.5
               TOR    402.0  225  4.89   -2.6     4.98   -6.8
               PHI    459.0  243  4.83   -0.3     4.97   -7.2
               OAK    447.7  265  4.99   -8.2     5.12  -14.3
               KCR    475.3  292  5.10  -14.2     5.22  -20.8
               CHC    470.3  257  4.95   -6.4     5.27  -23.2
               LAD    435.7  214  5.02   -9.2     5.49  -32.1
               ARI    433.3  255  5.39  -27.1     5.56  -35.4
               MON    520.3  268  5.32  -28.5     5.44  -35.5
               SEA    430.0  271  5.43  -29.0     5.58  -36.0
               CHW    516.0  324  5.49  -38.0     5.48  -37.3
               FLA    525.3  306  5.69  -50.4     5.82  -58.0
               -----------------------------------------------
               ML   13970.6 7093  4.58  378.5     4.71  186.3


On a team level, ARP adds less to traditional run assignment methods (e.g.,
APR) than it does for individuals. The only major difference between ARP
and APR for teams is that ARP takes into account how the bullpen handles the
runners that the starters leave on base. As a result, you’d expect a team’s
ARP to be close to its APR, and in general that holds true in the table
above. Nevertheless, there are a few teams that the two methods rate
significantly differently. The Giants, Cubs, and Dodgers were examples of
bullpens that were much worse than you’d expect given the number of runs
charged to them. The Dodgers, in particular, had a surprisingly bad bullpen
— only the Marlins were significantly worse. On the other hand, the Padres
were somewhat better than their APR and ARA indicated. The best bullpen in
the league last year belonged to the Rockies, who dealt with the loss of
Steve Reed quite nicely.

Beyond the ‘R’ Column


There are two major reasons that a reliever’s ‘R’ column in a box score does
a poor job of measuring his performance in that game: (1) it doesn’t reflect
how well he dealt with the runners he inherited, and (2) it does reflect how
well the reliever’s successors dealt with the runners he turned over to
them. It’s interesting to break down these two aspects of performance
individually, to see who gave and received the most and least help.


Performance in handling inherited runners can be measured analogously to
ARP: for each appearance by the reliever, look at the situation when the
reliever entered each game, and how that compares to the situation when he
left the game. For this, we consider only the runners that the reliever
inherited. We figure the number of those inherited runners that would be
expected to score, given where they were on the bases and how many outs
there were when the reliever entered. We compare that total to the number
who actually did score while the reliever was in the game, plus, of any were
still on base when the reliever left the game, how many would have been
expected to score from that ending bases/outs state. The end result is a
number called Expected Inherited Runs Prevented (EIRP). If this number is
positive, it means that the reliever is chopping runs off his teammates’
totals; if it’s negative, it means the reliever is adding runs to his
teammates. Below are the best and worst relievers of 1998 in this measure.
"IRnr" is the number of runners the reliever inherited; "EIRs" is the
expected number of those inherited runners to score, "IR" is the number who
actually did score while the reliever was in the game, and "EIRf" is the
expected number of inherited runners left on base when the reliever left his
games to score.

 Gave Most Help: Top 10 ML Relievers in      Gave Least Help: Bottom 10 ML Relievers
                  EIRP                                       in EIRP

Pitcher      Team IRnr EIRs IR EIRf  EIRP   Pitcher      Team IRnr EIRs IR EIRf  EIRP
-----------------------------------------   -----------------------------------------
Swindell,G    M/B  50  16.6  6  1.6   8.6   Radinsky,S    LAD  41  12.3 20  1.4 -10.0
Plesac,D      TOR  80  27.5 15  3.8   8.3   Bruske,J      L/S  29   8.5 15  0.6  -8.6
Mills,A       BAL  42  17.8  8  1.8   7.8   Mcmichael,G   N/L  36  11.6 19  0.6  -8.4
Delucia,R     CAL  46  18.1 10  0.3   7.6   Fetters,M     O/C  53  15.0 23  0.6  -8.0
Krivda,R      C/C  15   6.9  0  0.2   6.5   Boehringer,B  SDP  37  11.0 15  1.0  -7.1
Wickman,B     MIL  31  10.7  5  0.0   6.3   Runyan,S      DET  76  29.0 27  9.0  -7.1
Mecir,J       TAM  47  17.9 11  0.7   6.1   Rodriguez,R   SFG  57  21.5 25  2.5  -7.0
Howry,B       CHW  23   8.0  2  0.0   5.8   Guardado,E    MIN  77  28.5 32  2.7  -6.2
Myers,Ra      T/S  22   5.8  0  0.7   5.8   Adams,T       CHC  45  16.1 21  0.8  -5.9
Darensbourg,V FLA  33  12.5  4  2.7   5.6   Holmes,D      NYY  22   8.3 12  0.9  -5.4


Let’s look first at the table on the right. Well, Dodgers fans might want
to avert their eyes. We mentioned above that the Dodgers had a surprisingly
bad bullpen, and here’s a big reason why. The three worst relievers in the
majors at handling inherited runners all spent significant time in a Los
Angeles uniform last year. Scott Radinsky inherited 41 runners, who would
have been expected to score 12.3 runs. Radinsky watched from the mound as
20 of those runners crossed the plate, and he left another 1.4 expected runs
worth of those runners on base for others to deal with. The result is that
Radinsky cost his teammates 10 park-adjusted runs on their runs allowed
totals beyond what you’d expect from an average pitcher. On the other end
of the spectrum, Greg Swindell chopped 8.6 runs off his Twins and Red Sox
teammates’ ledgers. Greg Olson doesn’t quite make the list on the left, but
he deserves honorable mention there as one of the few relievers who
completely erased all the inherited runners he saw in 1998. Olson inherited
16 runners, but none of them scored, and none were still on base when he
left his games.


The other effect we want to isolate is how much help the reliever got from
his successors when he turned runners over to them. This is measured
similarly to EIRP. For this measure, we consider only those runners who are
on base when the reliever left his games; Mike Emeigh calls these
"bequeathed runners". Actually, we’ll be more restrictive than that: we’ll
consider only the bequeathed runners who are the reliever’s responsibility
(i.e., if they score, they’ll be charged to him). We’ll call these "Own
Bequeathed Runners" (OBRnr). We figure out the expected number of Own
Bequeathed Runners to score given where they were on the bases and how many
outs there were when the reliever left the game, and subtract from that
total the number who actually did score. The result is Expected Bequeathed
Runs Saved. If it’s positive, the reliever’s successors bailed him out by
chopping runs off his R total; if it’s negative, his successors have added
runs to his ledger compared to what he could have expected from average
bullpen support. Below are the top 10 and bottom 10 by this measure. OBRnr
is the number of the reliever’s Own Bequeathed Runners turned over to other
relievers during the year; EBR is the expected number of those runners to
score; and ABR is the number who actually did score.

Received Most Help: Top 10 ML Relievers      Received Least Help: Bottom 10 ML
                in EBRS                              Relievers in EBRS

Pitcher      Team  OBRnr EBR  ABR  EBRS   Pitcher      Team  OBRnr EBR  ABR  EBRS
---------------------------------------   ---------------------------------------
Springer,R    A/A   16   6.6   0    6.7   Stanton,M     NYY   27  10.2  16   -6.4
Quantrill,P   TOR   34   9.6   3    6.5   Nitkowski,C   HOU   17   5.9  11   -5.8
Adams,T       CHC   32  12.1   6    6.3   Mcmichael,G   N/L   24   6.9  11   -4.4
Gunderson,E   TEX   39  14.4   9    5.3   Embree,A      A/A   30   9.0  13   -4.4
Alfonseca,A   FLA   21   7.2   2    5.1   Mathews,TJ    OAK   38  11.5  16   -4.3
Hudek,J       N/C   20   6.6   2    4.9   Mohler,M      OAK   25   7.8  12   -4.0
Mendoza,R     NYY   17   4.8   0    4.7   Harris,P      CAL   29  11.1  15   -4.0
Mcelroy,C     COL   21   9.6   4    4.7   Sullivan,S    CIN   24   9.3  13   -3.9
Plunk,E       C/M   30   9.5   5    4.3   Batista,M     MON   12   3.2   6   -3.7
Delucia,R     CAL   40  14.3  10    4.2   Henriquez,O   FLA    7   2.7   6   -3.7


Russ Springer turned 16 of his runners over to his Diamondback and Brave
bullpen-mates, and his mates did not let him down. Not a single one of
those 16 runners scored, saving Springer an expected 6.7 park-adjusted runs
off his totals. It’s interesting that two guys who were traded for one
another, Springer and Alan Embree, show up on opposite sides of the
successor support spectrum. These tables provide more evidence that the
Braves got the short end of the stick in that deal — Embree’s RA during
1998 was significantly inflated by his teammates’ poor support, while
Springer’s was significantly deflated by his teammates. The Yankees’ Mike
Stanton
was easily the reliever most victimized by his teammates,
accumulating 6.4 undeserved runs on his park-adjusted totals. From glancing
at the previous table, it’s reasonable to suspect that Darren Holmes was one
of the main culprits in allowing all those bequeathed runners of Stanton’s
to score.


The previous four tables isolated some interesting components of relief
performance not measured by traditional run assignment (or, in the case of
bequeathed runners, measured when it should not be). But what about putting
those components all together to find out how badly traditional run
assignment can underrate or overrate a reliever’s contribution? Measuring
this is easy. As we mentioned above, ARP and Palmer’s Adjusted Pitching
Runs are each attempting to measure the same thing — runs prevented above
an average pitcher. APR represents the traditional run assignment approach,
comparing the league average run scoring to the number of runs charged to
the pitcher. ARP represents the run expectation approach, and, for the
reasons we’ve argued in this article, should give a more accurate picture of
a reliever’s performance. The amount that traditional run assignment
overrates or underrates a reliever, then, is the difference between those
two measures. Here are the lists for 1998:

              10 ML Relievers most underrated by conventional
                    run assignment (ranked by ARP - APR)

         Pitcher      Team  EIRP EBRS  ARA RA(ARP)  APR  ARP  Diff.
         ----------------------------------------------------------
         Stanton,M     NYY   4.3 -6.4  5.74  4.70  -8.0   1.2   9.1
         Darensbourg,V FLA   5.6 -1.1  3.99  2.91   6.6  15.1   8.5
         Mulholland,T  CHC   4.7 -3.1  4.76  3.73   0.5   8.8   8.3
         Harris,P      CAL   5.4 -4.0  4.69  3.51   0.9   8.8   7.9
         Plesac,D      TOR   8.3  0.1  4.02  2.70   4.5  11.8   7.3
         Nitkowski,C   HOU   1.8 -5.8  4.39  3.33   2.9   9.9   7.0
         Weathers,D    C/M   4.4 -2.3  5.13  4.12  -2.0   4.7   6.8
         Mills,A       BAL   7.8  0.4  3.70  2.92   9.6  16.3   6.7
         Sullivan,S    CIN   1.9 -3.9  5.54  4.97  -8.1  -1.6   6.4
         Swindell,G    M/B   8.6  2.8  3.87  3.29   9.7  15.6   5.9

               10 ML Relievers most overrated by conventional
                    run assignment (ranked by ARP - APR)

         Pitcher      Team  EIRP EBRS  ARA RA(ARP)  APR  ARP  Diff.
         ----------------------------------------------------------
         Radinsky,S    LAD -10.0  2.0  3.48  5.43   9.2  -4.1 -13.4
         Adams,T       CHC  -5.9  6.3  4.86  6.35  -0.3 -12.3 -12.0
         Alfonseca,A   FLA  -4.7  5.1  4.98  6.29  -1.2 -11.5 -10.3
         Runyan,S      DET  -7.1  2.9  3.93  5.75   5.0  -5.1 -10.2
         Bruske,J      L/S  -8.6  1.9  4.42  6.09   2.5  -7.7 -10.2
         Quantrill,P   TOR  -1.8  6.5  2.84  3.95  17.7   7.8  -9.9
         Fetters,M     O/C  -8.0 -0.5  4.94  6.25  -0.7  -9.3  -8.5
         Springer,R    A/A  -1.6  6.7  4.56  5.98   1.6  -6.8  -8.3
         Rodriguez,R   SFG  -7.0  0.7  4.11  5.23   5.2  -3.0  -8.2
         Guardado,E    MIN  -6.2  0.1  4.63  5.70   1.5  -6.4  -7.9


There are lots of names here that we’ve already seen in the tables above
that deal with inherited and bequeathed runners. What these tables give
you is an idea of how badly traditional run assignment can distort the
picture of the reliever’s effectiveness. Since relievers pitch relatively
few innings, and since a high percentage of those innings deal with
inherited and bequeathed runners, the distortion can be pretty bad. Take
Scott Radinsky (please). If you look only at the number of runs he was
charged with, he appeared to be a solid contributor last year, even after
taking the Dodger Stadium park effect into account. A 3.48 park-adjusted RA
is nothing to sneeze at these days. However, when you take into account his
league-worst handling of inherited runners and the fact that he got
better-than-average support from his successors, you find that his overall
contribution to the Dodgers’ run prevention effort was that of a 5.43-RA
pitcher — almost two full runs per 9 innings worse! The story with the
Cubs’ Terry Adams was similar. Cub fans could easily look at that 4.86
park-adjusted RA, which is around league average, and conclude that he was
harmless. But if you look at how badly he handled inherited runners,
combined with the tremendous help he got from his friends (paging Terry
Mulholland
), you could make a case that he was actually among the league’s
most harmful relievers.


One more point about these tables: if you’re really paying attention, you
might be wondering why you can’t just add up the Expected Inherited Runs
Prevented and Expected Bequeathed Runs Saved columns to get the Diff
figure. After all, I’ve been saying above that the two differences between
traditional run assignment and ARP are inherited runners and bequeathed
runners. Well, actually what I said is that those are the two major
differences. There are also a number of less significant effects captured
by ARP but not by other statistics. In no particular order:

  • Traditional statistics treat each of the three outs in an inning
    equally, while ARP recognizes that all outs are not created equal. You
    prevent more runs by getting the first out of an inning than by getting
    the third. A reliever that frequently comes in with two outs will tend
    to be somewhat overrated by traditional run assignment, all else being
    equal.

  • ARP is park-adjusted game by game. Traditional park adjustments
    generally adjust a player’s raw numbers by half of the effect of his
    home park, making the assumption that he plays roughly half his time
    there. If a reliever pitches a disproportionate amount of his innings
    either at home or on the road, or at a particular road park, ARP will
    compensate for that.

  • If a reliever is on the mound when the home team scores the winning run
    in the 9th or later, and if there are other runners still on base when
    that winning run scores, ARP includes those runners in the relievers’
    final bases/outs state. For traditional run assignment statistics,
    those runners effectively disappear. (These runners are also treated
    as "bequeathed" in calculating Expected Bequeathed Runs Saved.)


In no way would I claim that the tools presented here are the final word in
reliever evaluation. There are some shortcomings of these measures that are
easy to see now, and perhaps others that will come to light as more results
from them become available. What they do is add to the available
information that baseball fans can use to form an overall picture of a
reliever’s performance. And more information should make everyone happy.
Everyone, that is, except Scott "Hey, it’s not my ERA" Radinsky.


Full 1998 Numbers
o Glossary of Statistical Terms


Comments and questions welcome. Copyright © 1999 Michael Wolverton.

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