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User-Driven Narrative Variation in Large Story Domains using Monte Carlo Tree Search

机译:使用Monte Carlo树搜索的大故事域中的用户驱动的叙事变化

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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.
机译:基于规划的技术是用于自动叙事生成的强大工具,因为规划领域在可能的动作的数量增加,传统规划技术遭受组合爆炸。在这项工作中,我们将Monte Carlo树搜索应用于目标驱动的叙事。我们展示了我们在规划大故事域时,在传统的搜索技术方面具有大量提高的程度。此外,我们提出了一种贝叶斯故事评估方法,以指导规划达到可信的叙述,实现用户定义的目标。最后,我们提出了一个交互式用户界面,使我们的框架用户能够修改不同动作的可信度,从而产生更大的叙述品种。

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