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Modeling affective character network for story analytics

Future generation computer systems : FGCS, v.92, 2019년, pp.458 - 478  

Lee, O-Joun (Corresponding author.) ,  Jung, Jason J.

Abstract AI-Helper 아이콘AI-Helper

Abstract Consideration of the stories included in the narrative works is important for analyzing and providing narrative works (e.g., movies, novels, and comics) to users. In this study, we analyzed the stories in a narrative work with three goals: (i) eliciting, (ii) modeling, and (iii) utilizing ...

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