基于文化理解的开放电影数据库字符图估计

Yuta Ohwatari, Takahiro Kawamura, Y. Sei, Yasuyuki Tahara, Akihiko Ohsuga
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引用次数: 0

摘要

在许多电影中,文化、社会状况和对时代问题的认识以任何形式被描绘出来。尽管奇幻小说和科幻小说远离现实,但它们的故事确实反映了现实世界。因此,我们认为可以通过分析电影来了解现实世界的社会状况和文化。作为分析电影的一种方法,我们决定估计电影中人物之间的人际关系。本文提出了一种利用马尔可夫逻辑网络从网络上的电影剧本数据库中估计人物之间人际关系的方法。马尔可夫逻辑网络是一种概率逻辑网络,它可以描述人物之间的关系,这种关系不一定在任何情况下都能得到满足。在实验中,我们证实了我们提出的方法可以估计电影中角色之间的偏好,精度为64.2%。最后,通过与社会指标的比较,我们讨论了电影与现实世界的相关性。
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Estimation of character diagram from open-movie databases for cultural understanding
In many movies, cultures, social conditions, and awareness of the issues of the times are depicted in any form. Even if fantasy and SF are works far from reality, the stories do mirror the real world. Therefore, we assumed to be able to understand social conditions and cultures of the real world by analyzing the movie. As a way to analyze the film, we decided to estimate the interpersonal relationships between the characters in the movies. In this paper, we propose a method of estimating interpersonal relationships of the characters using Markov Logic Network from movie script databases on the Web. Markov Logic Network is a probabilistic logic network that can describe the relationships between characters, which are not necessarily satisfied on every occasion. In experiments, we confirmed that our proposed method can estimate favors between the characters in a movie with a precision of 64.2%. Finally, by comparing the estimated relationships with social indicators, we discussed the relevance of the movie to the real world.
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