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Beyond Expected Goals: A Probabilistic Framework for Shot Occurrences in Soccer

Published: November 28, 2025 | arXiv ID: 2512.00203v1

By: Jonathan Pipping, Tianshu Feng, R. Paul Sabin

Potential Business Impact:

Predicts soccer goals before they happen.

Business Areas:
Fantasy Sports Gaming, Sports

Expected goals (xG) models estimate the probability that a shot results in a goal from its context (e.g., location, pressure), but they operate only on observed shots. We propose xG+, a possession-level framework that first estimates the probability that a shot occurs within the next second and its corresponding xG if it were to occur. We also introduce ways to aggregate this joint probability estimate over the course of a possession. By jointly modeling shot-taking behavior and shot quality, xG+ remedies the conditioning-on-shots limitation of standard xG. We show that this improves predictive accuracy at the team level and produces a more persistent player skill signal than standard xG models.

Page Count
21 pages

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