語言與領(lǐng)域特異性:中文金融情感詞典(RF2022)
題目:Language and Domain Specificity: A Chinese Financial Sentiment Dictionary
摘要:We use Word2vec to develop a financial sentiment dictionary from 3.1 million?Chinese-language financial news articles. Our dictionary maps semantically similar words to a subset of human-expert generated financial sentiment words. In validation tests, our dictionary scores the sentiment of articles consistently with human reading of full articles. In return association tests, our dictionary outperforms and subsumes previous Chinese?financial sentiment dictionaries, such as direct translations of Loughran and?McDonald’s (2011, Journal of Finance, 66, 35–65) Englishlanguage financial dictionary. We also generate a list of politically related positive words that is unique to China; we find that this list has a weaker association with returns than does the list of other positive words. We demonstrate that state media uses more politically related positive and fewer negative words, and exhibits a sentiment bias. This bias renders the state media’s sentiment as less return-informative. Our findings demonstrate that dictionary-based sentiment analysis exhibits strong language and domain specificity.