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Mining online reviews and tweets for predicting sales performance and success of movies

机译:挖掘在线评论和推文以预测电影的销售业绩和成功

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Now a day's, online reviews has become one of the most important part of any business. Posting reviews online for products bought or services received has become a trendy approach for people to express opinions and sentiments, which is essential for business intelligence, vendors and other interested parties. Social media like Twitter contains rich information about people's preferences. In this paper movie domain is considered for data mining. For dealing the problem of review mining for predicting sales performance, we have used massive collection of online reviews from IMDB along with thoughts of people about movies from Twitter; both are mined and processed by applying various algorithms. Our analysis shows that both Sentiments captured from reviews and tweets have a major impact on the future sales performance of the movie. For the sentiment factor, we have used Sentiment Probabilistic Latent Semantic Analysis (S-PLSA) model it is a probabilistic approach to analyzing the sentiments in reviews and tweets, which provides succinct summary of the sentiment information. The summarization of both reviews and tweets in terms of sentiments along with additional input of the box office collection from IMDB is given to an Autoregressive Sentiment-Aware model (ARSA) for sales prediction. After that we have done sentiment analysis of online reviews. In sentiment analysis reviews are classified into negative and positive. We used a simple metric P-N ratio to predict the success of movies i.e. Hit, Average, Flop.
机译:如今,在线评论已成为所有业务中最重要的部分之一。在线发布关于购买的产品或获得的服务的评论已成为人们表达意见和情感的一种流行方法,这对于商业智能,供应商和其他感兴趣的各方是必不可少的。像Twitter这样的社交媒体包含有关人们偏好的丰富信息。在本文中,电影领域被认为是用于数据挖掘的。为了处理评论挖掘以预测销售业绩的问题,我们使用了IMDB的大量在线评论以及人们对Twitter电影的想法;两者都可以通过应用各种算法进行开采和处理。我们的分析表明,从评论和推文中捕获的情感都对电影的未来销售业绩产生重大影响。对于情感因素,我们使用了情感概率潜在语义分析(S-PLSA)模型,这是一种用于分析评论和推文中情感的概率方法,它提供了情感信息的简要摘要。根据情感将评论和推文的摘要以及来自IMDB的票房收藏的额外输入提供给用于销售预测的自回归情绪感知模型(ARSA)。之后,我们对在线评论进行了情感分析。在情绪分析中,评论分为正面评论和负面评论。我们使用简单的指标P-N比率来预测电影的成功率,即命中率,平均率和翻牌率。

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