Detection of financial opportunities in micro-blogging data with a stacked classification system

Francisco de Arriba-Pérez, Silvia García-Méndez, José A. Regueiro-Janeiro, Francisco J. González-Castaño
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Abstract

Micro-blogging sources such as the Twitter social network provide valuable real-time data for market prediction models. Investors' opinions in this network follow the fluctuations of the stock markets and often include educated speculations on market opportunities that may have impact on the actions of other investors. In view of this, we propose a novel system to detect positive predictions in tweets, a type of financial emotions which we term "opportunities" that are akin to "anticipation" in Plutchik's theory. Specifically, we seek a high detection precision to present a financial operator a substantial amount of such tweets while differentiating them from the rest of financial emotions in our system. We achieve it with a three-layer stacked Machine Learning classification system with sophisticated features that result from applying Natural Language Processing techniques to extract valuable linguistic information. Experimental results on a dataset that has been manually annotated with financial emotion and ticker occurrence tags demonstrate that our system yields satisfactory and competitive performance in financial opportunity detection, with precision values up to 83%. This promising outcome endorses the usability of our system to support investors' decision making.
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利用叠加分类系统检测微博数据中的金融机会
Twitter 等微博社交网络为市场预测模型提供了宝贵的实时数据。投资者在该网络中的观点紧随股票市场的波动,通常包括对市场机会的有根据的预测,这些预测可能会对其他投资者的行动产生影响。有鉴于此,我们提出了一种新颖的系统来检测推文中的积极预测,这是一种我们称之为 "机会 "的金融情绪,类似于普拉奇克理论中的 "预期"。具体来说,我们寻求高检测精度,以便为金融操作员提供大量此类推文,同时在我们的系统中将它们与其他金融情绪区分开来。我们通过三层堆叠的机器学习分类系统来实现这一目标,该系统具有通过自然语言处理技术提取有价值语言信息的复杂特征。实验结果表明,我们的系统在金融机会检测方面取得了令人满意且具有竞争力的性能,精确度高达 83%。这一令人满意的结果证明了我们的系统在支持投资者决策方面的可用性。
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