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Detection and Prevention of Copywriting Multimedia Contents in Youtube Using Multi-Keyword Ranking Algorithm

机译:使用多关键字排名算法检测和防止Youtube中的广告文案多媒体内容

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YouTube, an American video sharing website has become the most preferred site for watching videos online, with millions of content creators. YouTube is often said to be the second largest search engine in the world after Google itself, where people spend hours watching videos, generating billions of views. Popularity dynamics of YouTube videos highly depends on the meta-tags, number of view counts and the social dynamics which indicates the interaction between the content creators (channels) and YouTube users. Social networks like videos spreads and sensitivity of YouTube meta-level features provide an important impact on the popularity of videos. Our dataset includes all the videos from the YouTube site and are imported into a centralized database of our system using EmbetiSource: In the context of video analysis, each video is characterized into four attributes: Title, Category, Description, Embedded links. The non-frequent search words used by the users are converted to its equivalent signature using the Digital Signature Algorithm (DSA). We propose a Multi -Keyword Ranking (MKR) algorithm which scales the popular or originally created video using attributes such as view count, number of subscribers, title, description and the comments and ratings generated by users computed using sentimental analysis. The outcome of this proposed work would be an optimized search of the original video that was actually created by the channel.
机译:YouTube(美国的视频共享网站)已成为拥有数百万人创建内容的在线观看视频的首选网站。 YouTube通常被认为是仅次于Google的全球第二大搜索引擎,人们花费大量时间观看视频,产生数十亿的观看次数。 YouTube视频的受欢迎程度在很大程度上取决于元标记,观看次数和社交动力,这些动力表明内容创建者(渠道)与YouTube用户之间的互动。诸如视频传播之类的社交网络以及YouTube元级别功能的敏感性对视频的受欢迎程度产生了重要影响。我们的数据集包括YouTube网站上的所有视频,并使用EmbetiSource导入到我们系统的集中式数据库中:在视频分析的上下文中,每个视频都具有四个属性:标题,类别,描述,嵌入式链接。使用数字签名算法(DSA)将用户使用的非频繁搜索词转换为其等效签名。我们提出了一种多关键字排名(MKR)算法,该算法使用诸如观看次数,订户数量,标题,描述以及用户使用情感分析计算出的评论和评分等属性来缩放受欢迎的视频或最初创建的视频。这项拟议工作的结果将是对该频道实际创建的原始视频进行优化搜索。

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