Generate Believable Causal Plots with User Preferences Using Constrained Monte Carlo Tree Search

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Abstract

We construct a large scale of causal knowledge in term of Fabula elements by extracting causal links from existing common sense ontology ConceptNet5. We design a Constrained Monte Carlo Tree Search (cMCTS) algorithm that allows users to specify positive and negative concepts to appear in the generated stories. cMCTS can find a believable causal story plot. We show the merits by experiments and discuss the remedy strategies in cMCTS that may generate incoherent causal plots.

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APA

Soo, V. W., Lee, C. M., & Chen, T. H. (2016). Generate Believable Causal Plots with User Preferences Using Constrained Monte Carlo Tree Search. In Proceedings - AAAI Artificial Intelligence and Interactive Digital Entertainment Conference, AIIDE (pp. 218–224). Association for the Advancement of Artificial Intelligence. https://doi.org/10.1609/aiide.v12i1.12875

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