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  4. Player modeling for intelligent difficulty adjustment (resubmission)
 
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2009
Conference Paper
Title

Player modeling for intelligent difficulty adjustment (resubmission)

Abstract
In this paper we aim at automatically adjusting the difficulty of computer games by clustering players into different types and supervised prediction of the type from short traces of gameplay. An important ingredient of video games is to challenge players by providing them with tasks of appropriate and increasing difficulty. How this difficulty should be chosen and increase over time strongly depends on the ability, experience, perception and learning curve of each individual player. It is a subjective parameter that is very difficult to set. Wrong choices can easily lead to players stopping to play the game as they get bored (if underburdened) or frustrated (if overburdened). An ideal game should be able to adjust its difficulty dynamically governed by the player's performance. Modern video games utilise a game-testing process to investigate among other factors the perceived difficulty for a multitude of players. In this paper, we investigate how machine learning techn iques can be used for automatic difficulty adjustment. Our experiments confirm the potential of machine learning in this application.
Author(s)
Missura, Olana  
Gärtner, Thomas  
Mainwork
LWA 2009 - Workshop-Woche: Lernen-Wissen-Adaptivität  
Conference
Symposium "Lernen, Wissen, Adaptivität" (LWA) 2009  
Language
English
Fraunhofer-Institut für Intelligente Analyse- und Informationssysteme IAIS  
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