User-driven narrative variation in large story domains using monte carlo tree search

AAMAS(2014)

引用 40|浏览20
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摘要
Planning-based techniques are powerful tools for automated narrative generation, however, as the planning domain grows in the number of possible actions traditional planning techniques suffer from a combinatorial explosion. In this work, we apply Monte Carlo Tree Search to goal-driven narrative generation. We demonstrate our approach to have an order of magnitude improvement in performance over traditional search techniques when planning over large story domains. Additionally, we propose a Bayesian story evaluation method to guide the planning towards believable narratives which achieve user-defined goals. Finally, we present an interactive user interface which enables users of our framework to modify the believability of different actions, resulting in greater narrative variety.
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关键词
believable narrative,planning domain,traditional planning technique,narrative generation,automated narrative generation,monte carlo tree search,user-driven narrative variation,greater narrative variety,traditional search technique,bayesian story evaluation method,large story domain
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