Rosternomics
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July 8, 2022

PITCLE

unsettledToo soon to call — players still accruing.
PITPIT Ben Cherington net −$0.8M net +0.2
received −$4.0M−$4.0M ± $32M expected surplus · −$0.8M realized received 0.0 ± 4 expected · 0.2 realized WAR
Playoff odds: this deal moved PIT's 2022 odds 0% → 0% (+0 pts) — how trade timing is graded ↗
receives — most valuable first
Yohan RamírezP·27y·R/R
−$4.0M−$4.0M± $32M exp surplusrealized −$0.8M 0.0± 4 exp WARrealized 0.2
Prior
no pedigree — league baseline → 0.21/yr
Evidence
recent form -0.1/yr over 1.6 season
Talent
0.00/yr blended
Horizon
5.0 control yrs × 0.80 age decline
CLECLE Chris Antonetti net +$0.8M net -0.2
received +$0.0M+$0.0M ± $0M expected surplus · +$0.0M realized received 0.0 ± 0 expected · 0.0 realized WAR
Playoff odds: this deal moved CLE's 2022 odds 47% → 46% (-0.8 pts) — how trade timing is graded ↗
receives — most valuable first
cash / PTBNL
+$0.0M+$0.0M± $0M exp surplusrealized +$0.0M 0.0± 0 exp WARrealized 0.0
Cash or player to be named — no projection

Each player is valued on what he was expected to produce at the time of the trade, versus what he actually produced for his new team.

Expected WAR blends a player's pedigree (Baseball America rank / draft slot, or a baseline) with his recent track record, projected over the years of team control acquired. The ± band is the uncertainty — wide for unproven prospects, tight for established veterans. Surplus values that production at the FA market price of a win (~$8M/WAR) minus salary — so cost-controlled players carry large surplus and expensive ones little, even at the same WAR. Who won is descriptive, not a skill claim: ~99% of a trade's outcome is unforeseeable at the time.

Historically these expected values are unbiased and land within ±2 WAR of reality 75% of the time — yet the side the model favors actually comes out ahead only 53% of the time. The grade is a calibrated bet, not a prediction. Why trades are an efficient market →