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Tracking topic evolution via salient keyword matching with consideration of semantic broadness for Web video discovery

机译:考虑到Web视频发现的语义广泛性,通过突出关键词匹配跟踪主题演变

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摘要

A method to track topic evolution via salient keyword matching with consideration of semantic broadness for Web video discovery is presented in this paper. The proposed method enables users to understand the evolution of topics over time for discovering Web videos in which they are interested. A framework that enables extraction and tracking of the hierarchical structure, which contains Web video groups with various degrees of semantic broadness, is newly derived as follows: Based on network analysis using multimodal features, i.e., features of video contents and metadata, our method extracts the hierarchical structure and salient keywords that represent contents of each Web video group. Moreover, salient keyword matching, which is newly developed by considering salient keyword distribution, semantic broadness of each Web video group and initial topic relevance, is applied to each hierarchical structure obtained in different time stamps. Unlike methods in previous works, by considering the semantic broadness as well as the salient keyword distribution, our method can overcome the problem of the desired semantic broadness of topics being different depending on each user. Also, the initial topic relevance enables correction of the gap from an initial topic at the start of tracking. Consequently, it becomes feasible to track the evolution of topics over time for finding Web videos in which the users are interested. Experimental results for real-world datasets containing YouTube videos verify the effectiveness of the proposed method.
机译:本文提出了一种基于显着关键词匹配的主题演化跟踪方法,该方法考虑了网络视频发现的语义范围。所提出的方法使用户能够了解主题随时间的演变,以发现他们感兴趣的Web视频。如下重新获得一个框架,该框架能够提取和跟踪层次结构,该层次结构包含具有不同语义扩展程度的Web视频组:基于网络分析,使用多模式特征(即视频内容和元数据的特征),我们的方法提取代表每个Web视频组内容的层次结构和主要关键字。此外,通过考虑显着关键词分布,每个Web视频组的语义广度和初始主题相关性而新开发的显着关键词匹配应用于在不同时间戳中获得的每个层次结构。与先前工作中的方法不同,通过考虑语义范围和显着的关键字分布,我们的方法可以克服主题的期望语义范围因每个用户而异的问题。而且,初始主题相关性使得能够在跟踪开始时校正与初始主题的差距。因此,随着时间的推移跟踪主题的发展以找到用户感兴趣的Web视频变得可行。包含YouTube视频的真实数据集的实验结果证明了该方法的有效性。

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