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A linked data approach to sentiment and emotion analysis of twitter in the financial domain

机译:金融领域推特情绪和情感分析的链接数据方法

摘要

Sentiment analysis has recently gained popularity in the financial domain thanks to its capability to predict the stock market based on the wisdom of the crowds. Nevertheless, current sentiment indicators are still silos that cannot be combined to get better insight about the mood of different communities. In this article we propose a Linked Data approach for modelling sentiment and emotions about financial entities. We aim at integrating sentiment information from different communities or providers, and complements existing initiatives such as FIBO. The ap- proach has been validated in the semantic annotation of tweets of several stocks in the Spanish stock market, including its sentiment information.
机译:由于情感分析能够根据人群的智慧预测股票市场,因此情感分析最近在金融领域变得越来越流行。尽管如此,当前的情绪指标仍然是孤岛,无法综合起来更好地了解不同社区的情绪。在本文中,我们提出了一种链接数据方法,用于对金融实体的情绪和情感进行建模。我们旨在整合来自不同社区或提供者的情绪信息,并补充FIBO等现有计划。该方法已在西班牙股票市场中几只股票的推文的语义注释中得到了验证,包括其情绪信息。

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