Fine-Grained, Aspect-Based Sentiment Analysis on Economic and Financial Lexicon

S. Consoli, Luca Barbaglia, S. Manzan
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引用次数: 32

Abstract

The last two decades have seen a tremendous increase in the adoption of Semantic Web technologies as a result of the availability of big data, the growth in computational power and the advancement of artificial intelligence (AI) technologies. Cutting-edge semantic techniques are now able to capture sentiments more accurately in various practical applications, including economic and financial forecasting. In particular, the extraction of sentiment from news text, social media and blogs for the prediction of economic and financial variables has attracted attention in recent years. Despite many successful applications of sentiment analysis (SA) in these domains, the range of semantic techniques employed is still limited and mostly focused on the detection of sentiment at a coarse-grained level, that is, whether the sentiment expressed by the entire text of a sentence is either positive or negative. This paper proposes a novel methodology for Fine-Grained Aspect-based Sentiment (FiGAS) analysis. The aim of the approach is to identify the sentiment associated to specific topics of interest in each sentence of a document and assigning real-valued polarity scores between -1 and +1 to those topics. The proposed approach is completely unsupervised and customized to the economic and financial domains by using a specialized lexicon make available along with the source code of FiGAS. Our lexicon-based SA approach relies on a detailed set of semantic polarity rules that allow understanding the origin of sentiment, in the spirit of the recent trend on \textit{Interpretable AI}. We provide an in-depth comparison of the performance of the FiGAS algorithm relative to other popular lexicon-based SA approaches in predicting a humanly annotated data set in the economic and financial domains. Our results indicate that FiGAS statistically outperforms the other methods by providing a sentiment score that is closer to one of the human annotators.
经济金融词汇的细粒度、面向方面的情感分析
在过去的二十年中,由于大数据的可用性、计算能力的增长和人工智能(AI)技术的进步,语义网技术的采用有了巨大的增长。尖端的语义技术现在能够在各种实际应用中更准确地捕捉情感,包括经济和金融预测。特别是近年来,从新闻文本、社交媒体和博客中提取情绪以预测经济和金融变量的研究引起了人们的关注。尽管情感分析(SA)在这些领域有许多成功的应用,但所采用的语义技术的范围仍然有限,并且主要集中在粗粒度水平上的情感检测,即整个句子文本所表达的情感是积极的还是消极的。提出了一种新的细粒度基于方面的情感(FiGAS)分析方法。该方法的目的是识别文档中每个句子中与特定感兴趣主题相关的情感,并为这些主题分配-1到+1之间的实值极性分数。所建议的方法是完全不受监督的,并且通过使用与FiGAS的源代码一起提供的专门词汇来针对经济和金融领域进行定制。我们基于词典的人工智能方法依赖于一组详细的语义极性规则,这些规则允许理解情绪的起源,本着最近\textit{可解释人工智能}的趋势。我们深入比较了FiGAS算法与其他流行的基于词典的SA方法在预测经济和金融领域人工注释数据集方面的性能。我们的结果表明,FiGAS通过提供更接近人类注释者的情感得分,在统计上优于其他方法。
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