Goal Recognition with Markov Logic Networks for Player-Adaptive Games
Ha, Eun Young (North Carolina State University) | Rowe, Jonathan P. (North Carolina State University) | Mott, Bradford W. (North Carolina State University) | Lester, James C. (North Carolina State University)
Goal recognition is the task of inferring users’ goals from sequences of observed actions. By enabling player-adaptive digital games to dynamically adjust their behavior in concert with players’ changing goals, goal recognition can inform adaptive decision making for a broad range of entertainment, training, and education applications. This paper presents a goal recognition framework based on Markov logic networks (MLN). The model’s parameters are directly learned from a corpus of actions that was collected through player interactions with a non-linear educational game. An empirical evaluation demonstrates that the MLN goal recognition framework accurately predicts players’ goals in a game environment with multiple solution paths.
Oct-9-2011
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