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Sentiment analysis based on a social media customised dictionary

机译:基于社交媒体定制字典的情感分析

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摘要

This article presents a methodology to classify the polarity of words from selected Tweets. Usually, social media sentiment (SMS) is lexically determined, manually or by machine learning. However, these methods are either slow or based on a pre-established dictionary, thus not providing a customised analysis. We propose a methodology that, after having mined the topic-related Tweets, filters relevant words based on the mean and standard deviation frequency in positive and negative market days to remove neutral terms. Subsequently, through an ad hoc perceptual mapping, we assign a polarity to the dataset. This method allows the building of a dictionary associated with the investor sentiment customised to that organisation. A practical application was carried out to test the proposed methodology. The results were significant and in line with the behavioural finance theory, confirming that irrational investor feelings—expressed via social media—drive a portion of asset prices. Results also confirm the investor asymmetric behaviour under gain or loss scenarios, with the latter generating more impact than the former because people are risk-averse. The proposed method is expected to identify patterns of behaviour in social media linked to market oscillations, thereby contributing to risk management and optimising decision-making in the stock market.
机译:本文介绍了一种方法来对所选推文的单词极性分类。通常,社交媒体情绪(SMS)是简称,手动或通过机器学习确定的。然而,这些方法是慢慢地或基于预先建立的字典,因此不提供定制分析。我们提出了一种方法,在挖掘与主题相关的推文之后,基于正面和负市场日的平均值和标准偏差频率过滤相关的单词,以消除中立术语。随后,通过AD HoC感知映射,我们为数据集分配极性。此方法允许建立与该组织定制的投资者情绪相关联的字典。进行实际应用以测试提出的方法。结果是显着的,符合行为金融理论,确认通过社交媒体的情感无情的投资者 - 驱动一部分资产价格。结果还确认了在增益或损失方案下的投资者不对称行为,后者产生比前者更大的影响,因为人们是风险的。建议的方法预计将确定与市场振荡相关的社交媒体的行为模式,从而有助于风险管理和优化股票市场的决策。

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