Publications

GCN-WP -- Semi-Supervised Graph Convolutional Networks for Win Prediction in Esports

Abstract

Win prediction is crucial to understanding skill modeling, teamwork and matchmaking in esports. In this paper we propose GCN-WP, a semi-supervised win prediction model for esports based on graph convolutional networks. This model learns the structure of an esports league over the course of a season (1 year) and makes predictions on another similar league. This model integrates over 30 features about the match and players and employs graph convolution to classify games based on their neighborhood. Our model achieves state-of-the-art prediction accuracy when compared to machine learning or skill rating models for LoL. The framework is generalizable so it can easily be extended to other multiplayer online games.

Date
July 26, 2022
Authors
Alexander J Bisberg, Emilio Ferrara
Conference
2022 IEEE Conference on Games (CoG)
Pages
449-456
Publisher
doi: 10.1109/CoG51982.2022.9893671