首页> 外文会议>Proceedings of the 2016 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining >Narrative smoothing: Dynamic conversational network for the analysis of TV series plots
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Narrative smoothing: Dynamic conversational network for the analysis of TV series plots

机译:叙事平滑:用于分析电视剧情节的动态对话网络

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Modern popular TV series often develop complex storylines spanning several seasons, but are usually watched in quite a discontinuous way. As a result, the viewer generally needs a comprehensive summary of the previous season plot before the new one starts. The generation of such summaries requires first to identify and characterize the dynamics of the series subplots. One way of doing so is to study the underlying social network of interactions between the characters involved in the narrative. The standard tools used in the Social Networks Analysis field to extract such a network rely on an integration of time, either over the whole considered period, or as a sequence of several time-slices. However, they turn out to be inappropriate in the case of TV series, due to the fact the scenes showed onscreen alternatively focus on parallel storylines, and do not necessarily respect a traditional chronology. In this article, we introduce narrative smoothing, a novel, still exploratory, network extraction method. It smooths the relationship dynamics based on the plot properties, aiming at solving some of the limitations present in the standard approaches. In order to assess our method, we apply it to a new corpus of 3 popular TV series, and compare it to both standard approaches. Our results are promising, showing narrative smoothing leads to more relevant observations when it comes to the characterization of the protagonists and their relationships. It could be used as a basis for further modeling the intertwined storylines constituting TV series plots.
机译:现代流行的电视连续剧通常会发展跨越多个季节的复杂故事情节,但通常以不连续的方式观看。结果,观众通常需要在新季开始之前对上季的全面总结。这种摘要的生成首先需要识别和表征系列子图的动态。这样做的一种方法是研究叙事中人物之间相互作用的潜在社会网络。 “社交网络分析”字段中用于提取此类网络的标准工具依赖于时间的积分,该时间积分可以是整个考虑的时间段,也可以是多个时间片的序列。但是,由于在屏幕上显示的场景或者聚焦在平行的故事情节上,因此事实证明它们在电视连续剧中是不合适的,并且不一定尊重传统的编年史。在本文中,我们介绍了叙事平滑,这是一种新颖的,仍在探索中的网络提取方法。它基于图的特性来平滑关系动态,旨在解决标准方法中存在的一些限制。为了评估我们的方法,我们将其应用于3个受欢迎的电视连续剧的新语料库,并将其与两种标准方法进行比较。我们的结果是有希望的,表明叙事的平滑化导致在描述主角及其关系时更有意义的观察结果。它可以用作进一步建模构成电视剧情节的交织在一起的故事情节的基础。

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