SILS-ETD

Please use this identifier to cite or link to this item: http://hdl.handle.net/1901/574

Title: Effectiveness of Text Representations in the Automatic Classification of Regional Game Design Trends in Video Game Reviews
Authors: Benjamin B Pennell
Keyword: Text Mining
Keyword: Natural Language Processing
Keyword: Text Representation
Keyword: Video Games
Keyword: Review Mining
Issue Date: 17-Nov-2008
Publisher: School of Information and Library Science
Abstract: The video game industry is one of the fastest growing segments of the global entertainment market, and thus represents the design decisions of a wide spectrum of developers. This paper seeks to show that text mining can be used to predict trends in game design by identifying the region and release date automatically from video game reviews. When framed as a multi-class classification problem, a Support Vector Machine (SVM) achieves an average predictive confidence of 30.27% for noun and verb text representations, or by individual text representation: text windowing 11.22%, noun phrases 32.15%, noun phrases without game titles 31.40%, noun phrases with verbs 29.66%, individual term 27.88%. The SVM achieved better performance of 52.93% when predicting the release date trained on nouns and verbs. By text representation, the classifier found: noun phrases 62.97%, noun phrases without game titles 55.13%, noun phrases with verbs 61.10%, individual term 36.51% features.
URI: http://hdl.handle.net/1901/574
Appears in Collections:SILS Master's Papers

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