在经济和金融领域进行细粒度的、基于方面的语义情感分析

S. Consoli, Luca Barbaglia, S. Manzan
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引用次数: 2

摘要

情感分析在金融和经济领域的应用近年来备受关注。新闻和社交媒体是有价值的信息来源,可以及时获得,并有可能改善对经济和金融时间序列的预测。尽管情感分析在这些领域有许多成功的应用,但所采用的自然语言处理技术的范围仍然非常有限。在这项工作中,我们详细介绍了一种细粒度的基于方面的语义情感分析算法的技术表示,并检查了它在人工注释数据集方面的性能。所提出的方法是完全无监督的,依赖于一个大型的定制特定领域词典和一个彻底的语义极性方案,允许更好的解释和解释分析。我们的方法显示出有希望的结果,在大多数情况下,所提出的算法分配的情感分数与人类注释器相似。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fine-grained, aspect-based semantic sentiment analysis within the economic and financial domains
The application of sentiment analysis in financial and economic applications has attracted great attention in recent years. News and social media represent a valuable source of information, that is timely available and potentially able to improve the forecast of economic and financial time series. Despite many successful applications of sentiment analysis in these domains, the range of natural language processing techniques employed is still very limited. In this work, we detail the technical presentation of a fine-grained aspect-based semantic sentiment analysis algorithm and check its performance with respect to a humanly annotated data set. The proposed approach is completely unsupervised and relies on a large custom-specific domain lexicon and on a thorough semantic polarity scheme, allowing a better interpretation and explanation of the analysis. Our method shows promising re-suits, with the proposed algorithm assigning a similar sentiment score as human annotators in the large majority of cases.
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