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Sentiment Analysis of Online News Using MALLET

机译:MALLET在线新闻的情感分析

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摘要

The challenge of sentiment analysis consists in automatically determining whether a text is positive or negative in tone. Part of the difficulty in this task stems from the fact that the same words or sentences can have very different sentimental meaning given their context. In our work, we further focus on news articles, which tend to use a more neutral vocabulary, as opposed to the emotionally charged vocabulary of opinion pieces such as editorials, reviews, and blogs. In this paper, we use MALLET (Machine Learning for Language Toolkit) to implement and train several algorithms for sentiment analysis, and run experiments to compare and contrast them.
机译:情感分析的挑战在于自动确定文本的语调是肯定的还是否定的。这项任务的部分困难源于以下事实:相同的单词或句子在给定其上下文的情况下可能具有截然不同的情感含义。在我们的工作中,我们进一步关注新闻文章,这些新闻倾向于使用更为中性的词汇,而不是诸如社论,评论和博客之类的舆论情感词汇。在本文中,我们使用MALLET(语言机器学习工具)来实现和训练几种用于情感分析的算法,并进行实验以进行比较和对比。

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