Identifying Latent Semantics in Action Games for Player Modeling

Author:

Kermanidis Katia Lida1ORCID

Affiliation:

1. Ionian University, Department of Informatics, Corfu, Greece

Abstract

Machine learning approaches to player modeling traditionally employ a high-level game-knowledge-based feature for representing game sessions, and often player behavioral features as well. The present work makes use of generic low-level features and latent semantic analysis for unsupervised player modeling, but mostly for revealing underlying hidden information regarding game semantics that is not easily detectable beforehand.

Publisher

IGI Global

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