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Social Network Analysis of TV Drama Characters via Deep Concept Hierarchies

机译:深度概念层次结构的电视剧字符的社交网络分析

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TV drama is a kind of big data, containing enormous knowledge of modern human society. As the character-centered stories unfold, diverse knowledge, such as economics, politics and the culture, is displayed. However, unless we have efficient dynamic multi-modal data processing and picture processing methods, we cannot analyze drama data effectively. Here, we adopt the recently proposed deep concept hierarchies (DCH) and convolutional-recursive neural network (C-RNN) models to analyze the social network between the drama characters. DCH uses multi hierarchies structure to translate the vision-language concepts of drama characters into diversified abstract concepts, and utilizes Markov Chain Monte Carlo algorithm to improve the retrieval efficiency of organizing conceptual spaces. Adopting approximately 4400-minute data of TV drama - Friends, we process face recognition on the characters by using convolutional-recursive deep learning model. Then we establish the social network between the characters by deep concept hierarchies model and analyze their affinity and the change of social network while the stories unfold.
机译:电视剧是一种大数据,包含对现代人类社会的巨大知识。随着以特征为中心的故事展开,展示各种知识,如经济学,政治和文化。但是,除非我们具有高效的动态多模态数据处理和图片处理方法,否则我们无法有效地分析戏剧数据。在这里,我们采用最近提出的深度概念层次结构(DCH)和卷积递归神经网络(C-RNN)模型来分析戏剧性字符之间的社交网络。 DCH使用多层次结构来将戏剧字符的视觉语言概念转换为多样化的抽象概念,并利用Markov Chain Monte Carlo算法来提高组织概念空间的检索效率。采用大约4400分钟的电视剧数据 - 朋友,我们通过使用卷积递归的深度学习模型来处理人物面部识别。然后,我们通过深度概念层次结构模型建立人物之间的社交网络,并分析他们的亲和力和社交网络的变化,而在故事展开的同时。

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