Movilizer Application with Genre and Rating Classification Using NW-KNN Method

V. C. Mawardi, Cindy Winata, J. Hendryli
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引用次数: 1

Abstract

Information about movies can be easily seen in cyberspace. However, not all film sites present relevant and accurate information as examples of high rating films but have bad comments. In addition, there is a review that has not been accompanied by ratings and the genre is unknown. The classification of input data in the form of text will be processed and classified into the same or similar class using the Neighbor-Weighted K-Nearest Neighbor (NW-KNN) method. The NW-KNN method is able to classify well for data that is not evenly distributed by giving weights to each class in the system. The description text of the film will be classified into 10 classes with the number of training data as many as 1028, while the movie review text will be classified into 5 classes with the number of training data as many as 10032. The results of system testing indicate that the NW-KNN method produces an accuracy of 96.6% film genre and 86.85% to classify film reviews into movie ratings.
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用NW-KNN方法进行类型和等级分类的电影应用
关于电影的信息可以很容易地在网络上看到。然而,并不是所有的电影网站都提供了相关和准确的信息,作为高评级电影的例子,但有差评。此外,还有一篇评论没有附带评分,类型不明。对文本形式的输入数据进行分类处理,使用邻加权k近邻(NW-KNN)方法将其分类到相同或相似的类中。NW-KNN方法通过赋予系统中每个类别的权重,能够很好地分类非均匀分布的数据。影片的描述文本将被划分为10类,训练数据数量多达1028个;电影评论文本将被划分为5类,训练数据数量多达10032个。系统测试结果表明,NW-KNN方法将电影评论分类为电影评级的准确率为96.6%,准确率为86.85%。
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