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Main Authors: Su, Junhao, Grimsman, David, Archibald, Christopher
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.05671
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author Su, Junhao
Grimsman, David
Archibald, Christopher
author_facet Su, Junhao
Grimsman, David
Archibald, Christopher
contents Market valuations for professional athletes is a difficult problem, given the amount of variability in performance and location from year to year. In the National Basketball Association (NBA), a straightforward way to address this problem is to build a tabular data set and use supervised machine learning to predict a player's salary based on the player's performance in the previous year. For younger players, whose contracts are mostly built on draft position, this approach works well, however it can fail for veterans or those whose salaries are on the high tail of the distribution. In this paper, we show that building a knowledge graph with on and off court data, embedding that graph in a vector space, and including that vector in the tabular data allows the supervised learning to better understand the landscape of factors that affect salary. We compare several graph embedding algorithms and show that such a process is vital to NBA salary prediction.
format Preprint
id arxiv_https___arxiv_org_abs_2603_05671
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle The Value of Graph-based Encoding in NBA Salary Prediction
Su, Junhao
Grimsman, David
Archibald, Christopher
Machine Learning
Market valuations for professional athletes is a difficult problem, given the amount of variability in performance and location from year to year. In the National Basketball Association (NBA), a straightforward way to address this problem is to build a tabular data set and use supervised machine learning to predict a player's salary based on the player's performance in the previous year. For younger players, whose contracts are mostly built on draft position, this approach works well, however it can fail for veterans or those whose salaries are on the high tail of the distribution. In this paper, we show that building a knowledge graph with on and off court data, embedding that graph in a vector space, and including that vector in the tabular data allows the supervised learning to better understand the landscape of factors that affect salary. We compare several graph embedding algorithms and show that such a process is vital to NBA salary prediction.
title The Value of Graph-based Encoding in NBA Salary Prediction
topic Machine Learning
url https://arxiv.org/abs/2603.05671