情感分析中监督式机器学习技术的性能分析

Biswaranjan Samal, Anil Behera, M. Panda
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引用次数: 36

摘要

广泛使用互联网和网络应用程序,如反馈收集系统,现在使人们更聪明。在这些应用程序中,人们过去常常对他们看过的电影、产品、服务等给出反馈,这些反馈是公开的,供将来参考。对于机器来说,识别反馈类型是一项繁琐的任务,无论是积极的还是消极的。在这里,机器学习技术在训练机器并使其智能化方面发挥着至关重要的作用,这样机器就能够识别反馈类型,从而为这些网络应用程序和用户提供更多的好处和功能。有许多监督机器学习技术可用,因此选择最好的技术是一项困难的任务。在本文中,我们收集了不同规模的电影评论数据集,并选择了一些广泛使用和流行的监督机器学习算法来训练模型。这样模型就可以对评论进行分类。Python的NLTK包以及WinPython和Spyder用于处理电影评论。然后使用Python的sklearn包来训练模型并查找模型的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance analysis of supervised machine learning techniques for sentiment analysis
Wide use of internet and web applications like, feedback collection systems are now making peoples smarter. In these applications, peoples used to give their feedback about the movies, products, services, etc through which they have gone, and this feedback are publicly available for future references. It is a tedious task for the machines to identify the feedback types, i:e positive or negative. And here Machine Learning Techniques plays vital roles to train the machine and make it intelligent so that the machine will be able to identify the feedback type which may give more benefits and features for those web applications and the users. There are many supervised machine learning techniques are available so it is a difficult task to choose the best one. In this paper, we have collected the movie review datasets of different sizes and have selected some of the widely used and popular supervised machine learning algorithms, for training the model. So that the model will be able to categorize the review. Python's NLTK package along with the WinPython and Spyder are used for processing the movie reviews. Then Python's sklearn package is used for training the model and finding the accuracy of the model.
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