Rapid Skill Capture in a First-Person Shooter

David Buckley, Ke Chen, Joshua Knowles

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    Abstract

    Various aspects of computer game design, including adaptive elements of game levels, characteristics of “bot” behavior, and player matching in multiplayer games, would ideally be sensitive to a player's skill level. Yet, while game difficulty and player learning have been explored in the context of games, there has been little work analyzing skill per se, and how this is related to the interaction of a player with the controls of the game - the player's input. To this end, we present a data set of 476 game logs from over 40 players of a first-person shooter game (Red Eclipse) as a basis of a case study. We then extract features from the keyboard and mouse input and provide an analysis in relation to skill. Finally, we show that a player's skill can be predicted using less than a minute of their keyboard presses. We suggest that the techniques used here are useful for adapting games to match players' skill levels rapidly, arguably more rapidly than solutions based on performance averaging such as TrueSkill.
    Original languageEnglish
    Pages (from-to)63 - 75
    JournalIEEE Transactions on Computational Intelligence and AI in Games
    Volume9
    Issue number1
    Early online date27 Oct 2015
    DOIs
    Publication statusPublished - 1 Mar 2017

    Keywords

    • First-person shooter, player modeling, skill capture, skill measures, skill prediction.

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