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Sentiment analysis and machine learning in finance: a comparison of methods and models on one million messages

机译:情绪分析和机器学习金融:一个比较的方法和模型一百万条信息

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We use a large dataset of one million messages sent on the microblogging platform StockTwits to evaluate the performance of a wide range of preprocessing methods and machine learning algorithms for sentiment analysis in finance. We find that adding bigrams and emojis significantly improve sentiment classification performance. However, more complex and time-consuming machine learning methods, such as random forests or neural networks, do not improve the accuracy of the classification. We also provide empirical evidence that the preprocessing method and the size of the dataset have a strong impact on the correlation between investor sentiment and stock returns. While investor sentiment and stock returns are highly correlated, we do not find that investor sentiment derived from messages sent on social media helps in predicting large capitalization stocks return at a daily frequency.
机译:我们使用一个大型数据集的一百万条消息在微博平台上StockTwits送到评估一系列的性能预处理方法和机器学习情感分析的算法。发现添加三元和emojis显著提高情绪分类性能。然而,更复杂和耗时的机器学习方法,如随机森林或神经网络,不改善的准确性的分类。预处理方法和证据数据集的大小有很强的影响投资者情绪与股票之间的相关性的回报。回报是高度相关的,我们找不到投资者情绪来自消息社交媒体有助于预测大型发送市值股票还在每天频率。

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