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.
Reference57 articles.
1. Ahmed, R. (2011). New Density-based Clustering Technique [PhD Thesis]. Computer Engineering Department, The Islamic University of Gaza.
2. Data Mining for Player Modeling in Videogames
3. AnayaL. H. (2011). Comparing Latent Dirichlet Allocation and Latent Semantic Analysis as Classifiers [Doctorate].
4. Clustering flood events from water quality time series using Latent Dirichlet Allocation model
5. LSA-Based Automatic Acquisition of Semantic Image Descriptions