基于机器学习的孟加拉电影状态评估系统

S. Akter, M. Huda
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引用次数: 1

摘要

本研究针对孟加拉电影开发了一个基于机器学习的电影状态评估系统。在世界范围内,电影的制作数量日益增加,电影制作商对电影产业的投资也越来越高。在这种情况下,评估电影状态是非常重要的。在我们提出的研究中,我们基于三种不同类型的基于机器学习(ML)的分类,包括两个目标类的二元分类器,包括三个目标类的三重分类器和包括四个目标类的四分类器来评估达莱坞电影(孟加拉国电影院)的现状。在这里,我们将对数据进行详细分析,因为孟加拉国电影数据收集是我们工作的主要挑战,因此,我们以不同的方式分析数据以设置目标变量以提高模型的准确性。这是第一次有研究集中在好莱坞电影数据上,我们使用了不同的基于机器学习的模型来分析数据。我们对三种不同的类分类中的每一种应用相同的ML算法,通过比较获得的准确性来找到哪个分类器对我们的数据和问题表现良好。实验结果表明,三类分类的准确率高于二类分类和四类分类。在五种应用的机器学习算法中,随机森林算法的准确率在85%左右。我们的研究提供了一种完全不同的方法,基于维基百科数据、新闻、男女演员传记和YouTube上观众对特定电影的反应来设置目标变量类别。我们之所以采用这种方法,是因为孟加拉国电影在IMDb上的评级并不完美,也没有找到所有电影的预算和收入。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning Based Movie Status Evaluation System for Bangladesh Movies
This study develops a machine learning based on movie status evaluation system for Bangladesh movies. The number of movie production rate is growing day by day worldwide and the movie maker invests highly in the movie industry. In such a scenario, this is very important to evaluate movie status. In our proposed research, we evaluate the status of Dhallywood movie (Bangladesh Cinema) based on three different types of Machine Learning (ML) based classification, Binary classifier that includes two targeted classes, Triple classifier that includes three targeted classes and, four classifier that includes four targeted classes. Here, we will give our detailed analysis of data because Bangladeshi movie data collection is the main challenge of our work and consequently, we analyze our data in different ways to set target variable to improve the accuracy of models. For the first time any research focuses on Dhallywood movie data where we have used different machine learning based models for analyzing data. We apply the same ML algorithm for each of the three different class classifications to find which classifier is performing well for our data and the problem by comparing the obtained accuracies. From the experiments, it is observed that the triple class classification accuracy is higher than binary and four class classifications. Among the five applied ML algorithms, the Random Forest shows the best accuracy around 85%. Our research provides a quite different approach to set target variable class based on Wikipedia data, news, actor- actress biography, and viewer response on YouTube for a particular movie. We go for this approach because Bangladeshi movie rating is not perfect on IMDb also the budgets and revenues are not found for all movies.
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