用谓词特征分析西班牙语新闻文章的情感

Antonio Tamayo, Julián David Arias-Londoño, Diego A. Burgos, Gabriel Quiroz
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引用次数: 1

摘要

如今,自动预测参与社会或经济趋势的代理人的行动过程是一项迫切的挑战。然而,这是一项艰巨的任务,因为立场或观点经常在冗长复杂的文本中传播,例如新闻文章。目前的研究测试了句子谓词作为特征,以自动确定作者在新闻文章中的立场。我们通过对连接句的属性、及物句的谓语、形容词短语和文章的小节等特征进行编码来捕捉文本的语义和立场。在假设这些特征的信息量足以对文本的语义进行建模的情况下,每个单词序列都会被消除歧义,并使用加权规则为其分配一个情感值。使用SentiWordNet和ML Senticon进行不同的实验来确定单词的情感。自动构建特征向量以填充数据库,该数据库使用两种机器学习算法进行测试。使用具有高斯核的SVM以及特征选择策略实现了69%的效率。这个分数超过了单词袋基线的12%。考虑到情绪分析是对用西班牙语写的非常复杂的文本进行的,这些结果是有希望的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentiment Analysis of News Articles in Spanish using Predicate Features
The automatic prediction of the course of action of agents involved in social or economic trends is an imperative challenge nowadays. However, it is a difficult task because stance or opinion is often spread throughout long, complex texts, such as news articles. The current study tests sentence predicates as features to automatically determine the writer’s stance in news articles. We capture the semantics and stance of the text by encoding features such as the attribute of copulative sentences, the predicate of transitive sentences, adjectival phrases, and the section of the article. Under the assumption that these features are informative enough to model the semantics of the text, each word sequence is disambiguated and assigned a sentiment value using weighting rules. Different experiments were run using either SentiWordNet and ML-Senticon to determine words’ sentiment. Feature vectors are automatically built to populate a database that is tested using two machine learning algorithms. An efficiency of 69% was achieved using a SVM with Gaussian kernel along with a feature selection strategy. This score outperformed the bag-of-words baseline in 12%. These results are promising considering that the sentiment analysis is performed on very complex texts written in Spanish.
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