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IWEC
2004

MMOG Player Classification Using Hidden Markov Models

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MMOG Player Classification Using Hidden Markov Models
In this paper, we describe our work on classification of players in Massively Multiplayer Online Games using Hidden Markov Models based on player action sequences. In our previous work, we have discussed a classification approach using a variant of Memory Based Reasoning based on player action frequencies. That approach, however, does not exploit time structures hidden in action sequences of the players. The experimental results given in this paper show that Hidden Markov Models have higher recognition performance than our previous approach, especially for classification of players of different types but having similar action frequencies.
Yoshitaka Matsumoto, Ruck Thawonmas
Added 31 Oct 2010
Updated 31 Oct 2010
Type Conference
Year 2004
Where IWEC
Authors Yoshitaka Matsumoto, Ruck Thawonmas
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