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Public Opinion Analysis Strategy of Short Video Content Review in Big Data Environment

机译:大数据环境中短视频内容审查的舆论分析策略

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With the rapid development of mobile Internet and 4G, short video apps came into being. Internet companies have launched such explosive short video platforms as "weishi", "TikTok" and "kuaishou" in response to the fragmented reading habits of the public. Internet users can more easily browse public opinion news, express opinions and emotions. In view of a variety of public opinion events and a large amount of comment information from Internet users, this paper proposes a big data public opinion analysis strategy which integrates short video content comments. Firstly, an improved kernel k-means algorithm based on local density and single-pass is proposed for topic discovery, which solves the problems of uncertainty of initial center point and high time complexity of K-means algorithm. Then, according to the characteristics of online public opinion, a model is proposed to quantitatively express the emotional value of public opinion comments. In the spark platform, the description titles and high praise comments of the hot videos of the short video platform in the past three months are used as the data set for simulation experiments. The results show that the improved algorithm improves the clustering effect, and solves the low efficiency problem caused by the high time complexity and large amount of data. The affective index of hot events given by the affective value measurement model accords with the public opinion guidance of recent public opinion events.
机译:随着移动互联网和4G的快速发展,短视频应用进入了。互联网公司推出了这种爆炸性的短视频平台,作为“Weishi”,“Tiktok”和“Kuaishou”,以应对公众的碎片阅读习惯。互联网用户可以更轻松地浏览公众舆论新闻,表达意见和情绪。鉴于各种公众意见事件和来自互联网用户的大量评论信息,本文提出了一项大数据公众舆论分析策略,整合了短视频内容评论。首先,提出了一种基于局部密度和单级通过的改进的内核K-均值算法进行主题发现,其解决了初始中心点的不确定度和k均值算法的高时间复杂性的问题。然后,根据在线舆论的特点,提出了一种模型来定量表达舆论评论的情感价值。在Spark平台中,过去三个月短视频平台的热门视频的描述和高度赞扬评论用作模拟实验的数据集。结果表明,改进的算法改善了聚类效果,解决了由高时间复杂度和大量数据引起的低效率问题。情感价值测量模型给出的热门事件的情感指标符合最近舆论事件的舆论指导。

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