Batters



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Showing page 355 of 4181 (83616 total matches)
YEAR TEAM
ID
NAME PLATE
APP
ON
BASE
AT
BATS
TOTAL
BASES
OB
AVG
SLG
AVG
OPS OPP
PIT
OB
OPP
PIT
SLG
OPP
PIT
OOPS
EXPCT
OB
AVG
EXPCT
SLG
AVG
EXPCT
OPS
LG
OPS
PME
OB
PME
SLG
PME PF PME
OB
PF
PME
SLG
PF
PME
PF
2011 HOU Matt Downs 222 77 199 103 0.347 0.518 0.864 0.304 0.381 0.686 0.326 0.449 0.775 0.706 4.8 13.4 18.1 1.00 4.8 13.4 18.1
1982 HOU Phil Garner 638 204 588 249 0.320 0.423 0.743 0.305 0.377 0.683 0.313 0.400 0.713 0.688 4.5 13.5 17.9 0.99 4.6 13.7 18.1
2003 KCA Aaron Guiel 401 138 354 173 0.344 0.489 0.833 0.328 0.416 0.744 0.336 0.452 0.788 0.759 3.2 12.9 16.1 1.06 3.6 14.5 18.1
1982 KCA Willie Aikens 519 179 466 213 0.345 0.457 0.802 0.331 0.399 0.730 0.338 0.428 0.766 0.727 3.7 13.6 17.2 0.99 3.9 14.3 18.1
1982 LAN Ron Cey 627 202 556 238 0.322 0.428 0.750 0.305 0.369 0.674 0.314 0.398 0.712 0.688 5.2 16.5 21.7 0.94 4.3 13.8 18.1
2016 MIA Marcell Ozuna 608 195 557 252 0.321 0.452 0.773 0.307 0.408 0.715 0.314 0.430 0.744 0.732 4.1 12.2 16.3 0.93 4.6 13.5 18.1
2009 MIL Felipe Lopez 297 121 259 116 0.407 0.448 0.855 0.346 0.422 0.769 0.377 0.435 0.812 0.735 12.9 5.8 18.6 1.03 12.6 5.6 18.1
2012 MIL Nori Aoki 588 206 520 225 0.350 0.433 0.783 0.318 0.398 0.716 0.334 0.415 0.749 0.715 9.5 9.0 18.4 1.02 9.3 8.9 18.1
2018 MIL Travis Shaw 587 202 498 239 0.344 0.480 0.824 0.331 0.421 0.752 0.338 0.451 0.788 0.720 3.7 15.2 18.9 1.03 3.5 14.6 18.1
1983 MIN Dave Engle 408 143 374 168 0.350 0.449 0.800 0.311 0.389 0.700 0.331 0.419 0.750 0.726 8.1 11.4 19.6 1.03 7.5 10.5 18.1
1931 NY1 Chick Fullis 332 126 302 127 0.380 0.421 0.800 0.315 0.365 0.680 0.347 0.393 0.740 0.716 10.7 8.2 18.9 0.99 10.2 7.9 18.1
1913 PHA Wally Schang 254 99 208 86 0.390 0.413 0.803 0.323 0.336 0.659 0.356 0.375 0.731 0.652 9.7 8.1 17.8 0.99 9.9 8.2 18.1
2006 SEA Adrian Beltre 681 223 620 288 0.327 0.465 0.792 0.320 0.416 0.736 0.324 0.440 0.764 0.775 2.6 15.2 17.8 0.95 2.6 15.5 18.1
2017 SEA Mike Zunino 435 144 387 197 0.331 0.509 0.840 0.321 0.428 0.749 0.326 0.469 0.795 0.752 2.2 15.8 18.2 1.00 2.2 15.7 18.1
2015 SLN Jason Heyward 610 218 547 240 0.357 0.439 0.796 0.328 0.407 0.735 0.343 0.423 0.766 0.710 8.8 8.8 17.6 0.99 9.1 9.1 18.1
2007 ARI Conor Jackson 477 175 415 194 0.367 0.467 0.834 0.326 0.422 0.748 0.346 0.445 0.791 0.753 9.9 9.4 19.3 1.04 9.2 8.8 18.0
1998 ARI Tony Batista 318 101 293 152 0.318 0.519 0.836 0.315 0.398 0.714 0.316 0.459 0.775 0.737 0.3 17.6 17.9 1.00 0.3 17.7 18.0
1987 BAL Eddie Murray 694 244 618 295 0.352 0.477 0.829 0.339 0.430 0.768 0.345 0.454 0.799 0.756 4.5 14.0 18.6 0.98 4.4 13.5 18.0
1988 BAL Fred Lynn 334 104 301 145 0.311 0.482 0.793 0.321 0.372 0.694 0.316 0.427 0.743 0.712 0.0 17.0 17.0 0.99 0.0 18.0 18.0
2003 BAL Luis Matos 486 168 439 201 0.346 0.458 0.804 0.318 0.420 0.737 0.332 0.439 0.770 0.759 6.7 8.8 15.6 0.97 7.7 10.2 18.0
No results found.

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Columns:
--------

Note: The batter's composite OB% and SLG% is obtained by the sum of all individual
plate appearances. For each PA, the OB% and SLG% used is versus pitchers of the same
hand as the one he's facing.

OPP_PIT_OB: the opposing pitcher OB% against, when facing batters of the same hand
OPP_PIT_SLG: the opposing pitcher SLG% against, when facing batters of the same hand
OPP_PIT_OOPS: the opposing pitcher OB% + SLG% against, when facing batters of the same hand

EXPCT_OB_AVG: the average of the opposing pitcher's OPP_PIT_OB and the batter's OB% (vs. L or R)
EXPCT_SLG_AVG: the average of the opposing pitcher's OPP_PIT_SLG and the batter's SLG% (vs. L or R)
EXPCT_OPS: the average of the opposing pitcher's OOPS and the batter's OPS (vs. L or R)

LG_OPS: the average league OPS, with the league of the home park being the league

PME_OB: the cumulative result of the plate appearance minus the EXPCT_OB_AVG
PME_SLG: the cumulative result of the plate appearance minus the EXPCT_SLG_AVG
PME: the cumulative result of the plate appearance minus the EXPCT_OPS

PF: the composite park factor the batter experienced, based on lefty-righty and park

PME_OB_PF: the cumulative result of the plate appearance minus the EXPCT_OB_AVG, with PF
PME_SLG_PF: the cumulative result of the plate appearance minus the EXPCT_SLG_AVG, with PF
PME_PF: the cumulative result of the plate appearance minus the EXPCT_OPS, with PF


On every pitcher versus batter matchup, we have a contest of the batter's ability and
the pitcher's ability. Although OPS and OOPS are not perfect statistics, they are
widely embraced and are relatively straightforward for most fans. They're approximations.
At some point, this process can be made smarter. Until then, this is where we are.

What is the batter's average ability on any plate appearance in a season? It's his OPS for the
season. Likewise, the pitcher's OOPS on the play is his seasonal OOPS. What is the expected
outcome? It's the average of the two, of course.

However, we have two issues to deal with -- the handedness (L or R) of the batter and pitcher
and the park where each event occurred.

1) Hand: For each and every PA, the expected outcome is affected by the hand of the batter and
pitcher. But, we only care about the batter's and pitcher's seasonal OPS/OOPS when it matches
the same scenario as the specific PA.

For example: If a left-handed batter is facing a right-handed pitcher, we only care about how
the batter did versus right-handed pitchers that year, and how the pitcher did versus left-handed
batters. Those are the specific OPS/OOPS values used from which to build the expected outcome.

Ex.: A LHB faces a RHP. The batter's OPS versus righties that year was 0.800. The pitcher's OOPS
versus lefties was 0.700. The expected outcome is the average of the two, 0.750.

Suppose the batter makes an out. His on-base average on the play was 0.000 and his slugging average
is also 0.000. On the play, the batter attained a negative PME, 0.000 minus 0.750 = -0.750. Meanwhile,
the pitcher attained a positive PME of 0.750 minus 0.000 = 0.750. All plays balance in this way.

What if the batter singles? His OB% was 1.000 and his SLG% is 1.000. That's an OPS of 2.000. His PME
is 2.000 minus 0.750 = 1.250, and the pitcher's PME is 0.750 minus 2.000 = -1.250.

All ~16 million plays in MLB from 1910-2025 were assessed in this manner.



2) Park: The parks where events occurred are important as well. Using the enhanced Park Factors at
this site -- those which break down PFs by L-L, L-R, R-L, R-R by using a base counting method -- a
composite PF is derived based on all of the PAs a batter had that season. After the seasonal PME is
compiled by adding all of the plays that year, the PME is divided by the PF* to obtain the final PME.

* The PME is compiled at the home and road level and divided by the corresponding PF. The PFs may
not seem correct but are indicative of the season. For example, the Rockies of 2001 had a composite
PF of 1.22. Todd Helton's (as a lefty) was more like 1.18. On the road, he was 0.97 -- for a
composite of 1.08 (1.18 + 0.97) / 2, the value shown. Before applying the PF, his home PME was about
96 and road was 9. Thus, most of the PME reduction was caused at home. It drops by ~16% (twice 1.08)
while his road PME stays relatively constant. His park-adjusted PME drops from ~105 to 91.


NOTE: This analysis concerns only what the batter does at the plate. Things like base running and
the quality of the opposing defense is not factored in (aside from taking extra bases on a hit).