APLGFeb 26, 2023

NBA2Vec: Dense feature representations of NBA players

arXiv:2302.13386v11 citationsh-index: 6
Originality Incremental advance
AI Analysis

This addresses player performance analysis for basketball teams and analysts, though it is incremental as it adapts an existing method to a new domain.

The paper tackles the problem of evaluating NBA players in context by developing NBA2Vec, a neural network model that predicts possession outcomes using dense player embeddings, achieving a 0.3 K-L divergence on over 3.5 million plays.

Understanding a player's performance in a basketball game requires an evaluation of the player in the context of their teammates and the opposing lineup. Here, we present NBA2Vec, a neural network model based on Word2Vec which extracts dense feature representations of each player by predicting play outcomes without the use of hand-crafted heuristics or aggregate statistical measures. Specifically, our model aimed to predict the outcome of a possession given both the offensive and defensive players on the court. By training on over 3.5 million plays involving 1551 distinct players, our model was able to achieve a 0.3 K-L divergence with respect to the empirical play-by-play distribution. The resulting embedding space is consistent with general classifications of player position and style, and the embedding dimensions correlated at a significant level with traditional box score metrics. Finally, we demonstrate that NBA2Vec accurately predicts the outcomes to various 2017 NBA Playoffs series, and shows potential in determining optimal lineup match-ups. Future applications of NBA2Vec embeddings to characterize players' style may revolutionize predictive models for player acquisition and coaching decisions that maximize team success.

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