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Movie Title Keywords: A Text Mining and Exploratory Factor Analysis of Popular Movies in the United States and China

机译:电影标题关键词:美国和中国流行电影的文本挖掘和探索性因素分析

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Unprecedented opportunities have been brought by advancements in machine learning in the prediction of the economic success of movies. The analysis of movie title keywords is one promising but rarely investigated direction of study. To address this gap, we performed a text mining and exploratory factor analysis (EFA) of the relationships between movie titles and their corresponding movies’ levels of success. Specifically, intragroup and intergroup analyses of 217 top hit movies in the United States and 245 top hit movies in China showed that successful movies in these two major movie markets with outstanding total lifetime grosses featured titles with similar and different patterns of most frequently used words, revealing useful information about viewers’ preferences in these countries. The findings of this study will serve to better inform the movie industry in giving more economically promising names to their products from a machine-learning perspective and inspire further studies.
机译:在电影经济成功预测的情况下,机器学习的进步提出了前所未有的机会。电影标题关键词的分析是一个有希望的,但很少调查的研究方向。为了解决这一差距,我们对电影标题与其相应的电影成功水平的关系进行了文本挖掘和探索性因子分析(EFA)。具体而言,在美国和245部热门电影中的217个热门电影的科学间和跨组分析表明,这两部主要电影市场中的成功电影具有杰出的总终身,具有相似和不同模式的特色头衔,最常用的单词揭示关于这些国家的观众偏好的有用信息。本研究的调查结果将用于更好地通知电影业从机器学习的角度来为其产品提供更经济上有希望的名称,并激发进一步的研究。

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