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Predicting consumer sentiments from online text

机译:通过在线文本预测消费者情绪

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摘要

Sentiment analysis from unstructured text has witnessed a boom in interest in recent years, due to the sheer volume of online reviews and news corpora available in digital form. An accurate method for predicting sentiments could enable us, for instance, to extract opinions from the Internet and gauge online customers' preferences, which could prove valuable for economic or marketing research, for leveraging a strategic advantage for an enterprise, or for detecting cyber risk and security threats. In this paper, we propose a heuristic search-enhanced Markov blanket model that is able to capture the dependencies among words and provide a vocabulary that is adequate for the purpose of extracting sentiments. Computational results on two collections of online movie reviews and three collections of online news show that our method is able to identify a parsimonious set of predictive features, yet simultaneously yield comparable or better prediction results about sentiment orientations, than several state-of-the-art feature selection algorithms as well as sentiment prediction methods. Our results suggest that sentiments are captured by conditional dependencies among words as well as by keywords or high-frequency words.
机译:近年来,由于大量的在线评论和数字形式的新闻语料库,对非结构化文本的情感分析引起了人们的关注。例如,一种准确的预测情绪的方法可以使我们从Internet上提取意见并评估在线客户的偏好,这对于经济或市场研究,利用企业的战略优势或检测网络风险可能证明是有价值的。和安全威胁。在本文中,我们提出了一种启发式搜索增强型马尔可夫毯模型,该模型能够捕获单词之间的依存关系,并提供足以提取情感目的的词汇。根据两个在线电影评论集和三个在线新闻集的计算结果表明,我们的方法能够识别出简约的一组预测特征,但与几种状态相比,它同时可以产生与情感取向相当或更好的预测结果艺术特征选择算法以及情感预测方法。我们的结果表明,情感是通过单词之间的条件依赖性以及关键字或高频单词来捕获的。

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