Network analysis and link prediction in competitive women's basketball
Network structure and its role in prediction are examined in competitive basketball at the team and player levels. Adversarial game outcome networks from the National Collegiate Athletic Association (NCAA) Division I women’s basketball from 2021 to 2024 are used to compute the common out-neighbor score and PageRank, which are combined into a low-key leader strength that identifies competitors' influence through structural similarity despite relatively low centrality. This measure is related to changes in NCAA NET rankings by grouping teams into quantiles and comparing average rank changes across seasons for both previous-to-current and current-to-next transitions. Link prediction is then studied using node2vec embeddings across three interaction settings.
For NCAA regular-season game networks, cosine similarity between team embeddings is used as a feature in a logistic regression model to predict March Madness matchups. For the Women's National Basketball Association (WNBA) shot-blocking networks, future directed blocking interactions are predicted via logistic regression on concatenated source-target player embeddings. For WNBA passing networks, region embeddings learned from first-quarter passes are evaluated for their ability to predict subsequent passing connections. Across NCAA and WNBA settings, embedding-based models provide statistically significant evidence that higher-order network structure contains predictive signals for future interactions, while the passing experiment shows weaker predictive performance but yields interpretable similarity patterns consistent with passing feasibility.

