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PECOTA, an
acronym An acronym is a word or name formed from the initial components of a longer name or phrase. Acronyms are usually formed from the initial letters of words, as in '' NATO'' (''North Atlantic Treaty Organization''), but sometimes use syllables, a ...
for ''Player Empirical Comparison and Optimization Test Algorithm'', is a sabermetric system for
forecasting Forecasting is the process of making predictions based on past and present data. Later these can be compared (resolved) against what happens. For example, a company might estimate their revenue in the next year, then compare it against the actual ...
Major League Baseball Major League Baseball (MLB) is a professional baseball organization and the oldest major professional sports league in the world. MLB is composed of 30 total teams, divided equally between the National League (NL) and the American League (AL) ...
player performance. The word is a
backronym A backronym is an acronym formed from an already existing word by expanding its letters into the words of a phrase. Backronyms may be invented with either serious or humorous intent, or they may be a type of false etymology or folk etymology. The ...
based on the name of journeyman major league player Bill Pecota, who, with a lifetime
batting average Batting average is a statistic in cricket, baseball, and softball that measures the performance of batters. The development of the baseball statistic was influenced by the cricket statistic. Cricket In cricket, a player's batting average i ...
of .249, is perhaps representative of the typical PECOTA entry. PECOTA was developed by
Nate Silver Nathaniel Read Silver (born January 13, 1978) is an American statistician, writer, and poker player who analyzes baseball (see sabermetrics), basketball, and elections (see psephology). He is the founder and editor-in-chief of ''FiveThirtyEight ...
in 2002–2003 and introduced to the public in the book ''Baseball Prospectus 2003''. Baseball Prospectus (BP) has owned PECOTA since 2003; Silver managed PECOTA from 2003 to 2009. Beginning in Spring 2009, BP assumed responsibility for producing the annual forecasts, making 2010 the first baseball season for which Silver played no role in producing PECOTA projections.Nate Silver and Kevin Goldstein, "State of the Prospectus: Spring 2009,
BaseballProspectus.com, March 24, 2009
.
One of several widely publicized
statistical Statistics (from German: '' Statistik'', "description of a state, a country") is the discipline that concerns the collection, organization, analysis, interpretation, and presentation of data. In applying statistics to a scientific, industr ...
systems of forecasts of player performance, PECOTA player forecasts are marketed by BP as a
fantasy baseball Fantasy baseball is a game in which the participants serve as owners and general managers of virtual baseball teams. The competitors select their rosters by participating in a draft in which all relevant Major League Baseball (MLB) players are a ...
product. Since 2003, annual PECOTA forecasts have been published both in the ''Baseball Prospectus'' annual books and, in more detailed form, on the BaseballProspectus.com subscription-based website. PECOTA also inspired some analogous projection systems for other professional sports: KUBIAK for the
National Football League The National Football League (NFL) is a professional American football league that consists of 32 teams, divided equally between the American Football Conference (AFC) and the National Football Conference (NFC). The NFL is one of the ma ...
, SCHOENE and CARMELO for the
National Basketball Association The National Basketball Association (NBA) is a professional basketball sports league, league in North America. The league is composed of 30 teams (29 in the United States and 1 in Canada) and is one of the major professional sports leagues i ...
, and VUKOTA for the
National Hockey League The National Hockey League (NHL; french: Ligue nationale de hockey—LNH, ) is a professional ice hockey sports league, league in North America comprising 32 teams—25 in the United States and 7 in Canada. It is considered to be the top ranke ...
. PECOTA forecasts a player's performance in all of the major categories used in typical fantasy baseball games; it also forecasts production in advanced sabermetric categories developed by Baseball Prospectus (e.g.,
VORP In baseball, value over replacement player (or VORP) is a statistic popularized by Keith Woolner that demonstrates how much a hitter or pitcher contributes to their team in comparison to a replacement-level player who is an average fielder at th ...
and
EqA Equivalent Average (EqA) is a baseball metric invented by Clay Davenport and intended to express the production of hitters in a context independent of park and league effects. It represents a hitter's productivity using the same scale as batting a ...
). In addition, PECOTA forecasts several summary diagnostics such as breakout rates, improve rates, and attrition rates, as well as the market values of the players. The logic and methodology underlying PECOTA have been described in several publications, but the detailed formulas are proprietary and have not been shared with the baseball research community.


Methodology

Silver described the inspiration for his approach as follows:
The basic idea behind PECOTA is really a fusion of two different things – ill/nowiki> James's work on similarity scores and Gary Huckabay's work on Vlad, aseball Prospectus'sprevious projection system, which tried to assign players to a number of different career paths. I think Gary used something like thirteen or fifteen separate career paths, and all that PECOTA is really doing is carrying that to the logical extreme, where there is essentially a separate career path for every player in major league history. The comparability scores are the mechanism by which it picks and chooses from among those career paths.


Comparable players

PECOTA relies on fitting a given player's past performance statistics to the performance of "comparable" Major League ballplayers by means of
similarity score In sabermetrics and basketball analytics, similarity scores are a method of comparing baseball and basketball players (usually in MLB or the NBA) to other players, with the intent of discovering who the most similar historical players are to a cer ...
s. As is described in the Baseball Prospectus website's glossary:
PECOTA compares each player against a database of roughly 20,000 major league batter seasons since World War II. In addition, it also draws upon a database of roughly 15,000 translated minor league seasons (1997–2006) for players that spent most of their previous season in the minor leagues. ... PECOTA considers four broad categories of attributes in determining a player's comparability:
1. Production metrics – such as batting average, isolated power, and unintentional walk rate for hitters, or strikeout rate and groundball rate for pitchers.
2. Usage metrics, including career length and plate appearances or innings pitched.
3. Phenotypic attributes, including handedness, height, weight, career length (for major leaguers), and minor league level (for prospects).
4. Fielding Position (for hitters) or starting/relief role (for pitchers). ... In most cases, the database is large enough to provide a meaningfully large set of appropriate comparables. When it isn't, the program is designed to 'cheat' by expanding its tolerance for dissimilar players until a reasonable sample size is reached.
PECOTA uses nearest neighbor analysis to match the individual player with a set of other players who are most similar to him. Although drawing on the underlying concept of Bill James' similarity scores, PECOTA calculates these scores in a distinct way that leads to a very different set of "comparables" than James' method. Furthermore, Silver describes the following distinct feature:
The PECOTA similarity scores are based primarily on looking at a three-year window of a pitcher’s performance. Thus, we might look at what a pitcher did from ages 35–37, and compare that against the most similar age 35–37 performances, after adjusting for parks, league effects, and a whole host of other things. This is different from the similarity scores you might see a
baseball-reference.com
or in other places, which attempt to evaluate the totality of a player’s career up to a given age.
Once a set of "comparables" is determined for each player, his future performance forecast is based on the historical performance of his "comparables". For example, a 26-year-old's forecast performance in the coming season will be based on how the most comparable Major League 26-year-olds performed in their subsequent season. Separate sets of predictions are developed for hitters and pitchers.


Peripheral statistics

PECOTA also relies a lot on the use of peripheral statistics to forecast a given player's future performance. For example, drawing on the insights coming out of the use of defense-independent pitching statistics, PECOTA forecasts a pitcher's future performance in a given area by using information about his past performance in other areas. As baseball analyst and journalist Alan Schwarz writes, "Silver ... designed a sophisticated variance algorithm that has examined every big-league pitcher's statistics since 1946 to determine which numbers best forecast effectiveness, specifically
earned run average In baseball statistics, earned run average (ERA) is the average of earned runs allowed by a pitcher per nine innings pitched (i.e. the traditional length of a game). It is determined by dividing the number of earned runs allowed by the numb ...
. His findings are counterintuitive to most fans. 'When you try to predict future E.R.A.'s with past E.R.A.'s, you're making a mistake,' Silver said. Silver found that the most predictive statistics, by a considerable margin, are a pitcher's strikeout rate and walk rate. Home runs allowed, lefty-righty breakdowns and other data tell less about a pitcher's future".


Probability distributions

Instead of focusing on making point estimates of a player's future performance (such as batting average, home runs, and strike-outs), PECOTA relies on the historical performance of the given player's "comparables" to produce a
probability distribution In probability theory and statistics, a probability distribution is the mathematical function that gives the probabilities of occurrence of different possible outcomes for an experiment. It is a mathematical description of a random phenomeno ...
of the given player's predicted performance during the next five years. Alan Schwarz has emphasized this feature of PECOTA: "What separates Pecota from the gaggle of projection systems that outsiders have developed over many decades is how it recognizes, even flaunts, the uncertainty of predicting a player's skills. Rather than generate one line of expected statistics, Pecota presents seven – some optimistic, some pessimistic – each with its own confidence level. The system greatly resembles the forecasting of hurricane paths: players can go in many directions, so preparing for just one is foolish". Silver has written,
This procedure requires us to become comfortable with probabilistic thinking. While a majority of players of a certain type may progress a certain way – say, peak early – there will always be exceptions. Moreover, the comparable players may not always perform in accordance with their true level of ability. They will sometimes appear to exceed it in any given season, and other times fall short, because of the sample size problems that we described earlier.
PECOTA accounts for these sorts of factors by creating not a single forecast point, as other systems do, but rather a range of possible outcomes that the player could expect to achieve at different levels of probability. Instead of telling you that it's going to rain, we tell you that there's an 80% chance of rain, because 80% of the time that these atmospheric conditions have emerged on Tuesday, it has rained on Wednesday.
Surely, this approach is more complicated than the standard method of applying an age adjustment based on the 'average' course of development of all players throughout history. However, it is also leaps and bounds more representative of reality, and more accurate to boot.


Team effort

Although Silver was the creator of PECOTA, producing PECOTA forecasts was a team effort: "I might be 'the PECOTA guy,' but it very much is a team effort," Silver has said of the BP staff. "We all do it. It's my baby, but it takes a village to run a PECOTA". For example, PECOTA draws on
Clay Davenport Clay Davenport is a baseball sabermetrician who co-founded Baseball Prospectus (BP) in 1996. He co-edited several of the ''Baseball Prospectus'' annual volumes and is a writer for BaseballProspectus.com. Much of his work for BP was behind the scen ...
's translations (the so-called Davenport Translations or DT's) of minor league and international baseball statistics to estimate the major league equivalent performance of each player. In this way, PECOTA is able to make projections for more than 1,600 players each year, including many players with little or no prior major league experience. The 2009 preseason forecasts were the last ones for which Silver took primary responsibility. In March 2009, Silver announced that PECOTA's extremely complex and laborious set of database manipulations and calculations would be moving to a different
platform Platform may refer to: Technology * Computing platform, a framework on which applications may be run * Platform game, a genre of video games * Car platform, a set of components shared by several vehicle models * Weapons platform, a system ...
. Although Baseball Prospectus had been the owner of PECOTA since Silver sold it to them in 2003 – and Silver stewarded and took responsibility for the forecasts – henceforth PECOTA forecasts would be generated by the Baseball Prospectus team, initially with Clay Davenport in charge of the effort, and later, through the 2013 season, with Colin Wyers heading up both production and improvements in PECOTA.


Alternative forecasting systems

Most of the other popular forecasting systems do not use a "comparable players" approach. Instead most rely on direct projections from a player's past performance to his future performance, typically by using as a baseline a
weighted average The weighted arithmetic mean is similar to an ordinary arithmetic mean (the most common type of average), except that instead of each of the data points contributing equally to the final average, some data points contribute more than others. The ...
of a player's performance in his previous three years. Like PECOTA, many of those systems also adjust the projections for aging,
park effects In sports, park effects are the unique factors of each stadium/arena which impact a game's outcome. These effects are broken down into different components and used in advanced statistical analysis. While most sports have regulation-sized fields, so ...
and
regression toward the mean In statistics, regression toward the mean (also called reversion to the mean, and reversion to mediocrity) is the fact that if one sample of a random variable is extreme, the next sampling of the same random variable is likely to be closer to i ...
. Like PECOTA, they may also adjust for the competitive difficulty of each of the two major leagues. The systems differ from one another, however, in the types and intensities of age adjustments, regression-effect estimates, park adjustments, and league-difficulty adjustments that they may make as well as in whether they use similarity scores. PECOTA also makes projections for many more players than do other systems, because PECOTA relies on adjusted minor league statistics as well as major league statistics and tries to make projections for all of the players on major league expanded rosters (40 players per team) as well as other prospects. Beginning in 2000, the
Cleveland Indians The Cleveland Guardians are an American professional baseball team based in Cleveland. The Guardians compete in Major League Baseball (MLB) as a member club of the American League (AL) Central division. Since , they have played at Progressive ...
developed a proprietary analytical database called ''DiamondView'' to evaluate scouting information gathered by the team; this system later incorporated player performance indicators and financial indicators, for purposes of evaluating and projecting the performance of all major league players. During 2008–2009, the
Pittsburgh Pirates The Pittsburgh Pirates are an American professional baseball team based in Pittsburgh. The Pirates compete in Major League Baseball (MLB) as a member club of the National League (NL) National League Central, Central division. Founded as part o ...
were in process of developing ''MITT'' ("Managing, Information, Tools and Talent"), a proprietary database that integrates scouting reports, medical and contract information, and performance statistics and projections.


Updates and revisions

First introduced in 2003, PECOTA projections are produced each year and published both in the ''Baseball Prospectus'' annual monographs and on the BaseballProspectus.com website. PECOTA has undergone several improvements since 2003. The 2006 version introduced metrics for the market valuation of players based on the predicted performance levels. The 2007 version introduced adjustments for league effects, to account for differences in the competitive environment of the two major leagues. The 2008 update took into account differences in players' performance during the first and second halves of the previous season as well as platoon splits (how well a player performed against hitters or pitchers who were left- or right-handed). It also took account of baserunning. In 2009, Baseball Prospectus introduced in-season PECOTA projections, to update and supplement its beginning of the season projections. In 2012, PECOTA substantially changed the way it weighed past years' performance in establishing the baseline for projections. In addition, 10-year forecasts and percentile forecasts were added to the individual player PECOTA cards that are published on-line.


Accuracy

Although Baseball Prospectus promotes PECOTA commercially as "deadly accurate," all projection systems are subject to considerable uncertainty. A comparison found that PECOTA had outperformed several other forecasting systems for the 2006 season in predicting
OPS In ancient Roman religion, Ops or ''Opis'' (Latin: "Plenty") was a fertility deity and earth goddess of Sabine origin. Her equivalent in Greek mythology was Rhea. Iconography In Ops' statues and coins, she is figured sitting down, as Chthon ...
. It performed nearly as well as the best of the other systems in predicting ERA. Although PECOTA projections are made for well over 1000 hitters each season, the evaluation of the system included only slightly over 100 players who had a minimum of 500 major league AB and had also been included in projections by the other systems. Nate Silver's own comparison of the performance of alternative projection systems for hitters in 2007 also showed that PECOTA led the field, though a couple of others were close. Although designed primarily for predicting ''individual'' player performance, PECOTA has been applied also to predicting ''team'' performance. For this purpose, projected team depth charts are established with projected playing times for each team member, drawing on the expert advice of the Baseball Prospectus staff. The number of runs a team will score and allow during the coming season is estimated based on the playing times and PECOTA's predicted individual performance of each player, using a "Marginal Lineup Value" algorithm created by David Tate and further developed by Keith Woolner. A team's expected wins is based on applying an improved version of Bill James' Pythagorean Formula to the estimated number of runs scored and allowed by the roster of players under the given playing-time assumptions. PECOTA has been used in preseason forecasts of how many wins teams will attain and in mid-season simulations of the number of wins each team will attain and its odds of reaching the playoffs. In 2006, PECOTA's preseason forecasts compared favorably to other forecasting systems (including
Las Vegas Las Vegas (; Spanish language, Spanish for "The Meadows"), often known simply as Vegas, is the List of United States cities by population, 25th-most populous city in the United States, the most populous city in the U.S. state, state of Neva ...
betting line odds) in predicting the number of wins teams would earn during the season. An independent evaluation by the website Vegas Watch showed that PECOTA had the lowest error in predicting Major League team wins in 2008 of all the best known forecasts, both those that were sabermetrically based and those that relied on individual expertise. In 2009, however, PECOTA lagged behind all the well-known forecasters. A summary for the 2003 through 2007 seasons shows that PECOTA's average error between the predicted and actual team wins declined: 2003 5.91 wins; 2004 7.71 wins; 2005 5.14 wins; 2006 4.94 wins; 2007 4.31 wins. Silver conjectures that the improvement has come in part from taking defense into account in the forecasts beginning in 2005. In 2008 the average error was 8.5 wins."Taking the Over on PECOTA," VegasWatch.net
February 8, 2009


References


Sources

* Jonah Keri, "'Tis the Season to Project Stats,
''ESPN.com'', February 14, 2007
*Rich Lederer, "An Unfiltered Interview with Nate Silver,
''BaseballAnalysts.com'', February 12, 2007
* Alan Schwarz, "Numbers Suggest Mets Are Gambling on Zambrano,
''New York Times'', August 22, 2004
*Nate Silver, "The Science of Forecasting,
''BaseballProspectus.com'', March 11, 2004
*Nate Silver, "Introducing PECOTA," ''Baseball Prospectus 2003'' (Dulles, VA: Brassey's Publishers, 2003): 507–514. *Nate Silver, "PECOTA Takes on the Field: How'd It Fare Against Six Other Projections Systems?
''BaseballProspectus.com'', January 16, 2004
*Nate Silver, "PECOTA 2004: A Look Back and a Look Ahead," ''Baseball Prospectus 2004'' (New York: Workman Publishers, 2004): 5–10. *Nate Silver, "Rearranging PECOTA," ''Baseball Prospectus 2006'' (New York: Workman Publishers, 2006): 6–11. *Nate Silver, "Why Was Kevin Maas a Bust?" ''Baseball Between the Numbers'', Jonah Keri, Ed. (New York: Basic Books, 2006): 253–271. *Dave van Dyke, "Predictions: Ignore Them at Your Peril,
''Chicago Tribune'', March 9, 2008
*Childs Walker, "Baseball Prospectus Makes Predicting Future Thing of Past," ''Baltimore Sun,'' February 21, 2006. {{refend Baseball statistics Baseball culture Fantasy sports