用机器学习揭示共同基金的私有信息

Alan L. Zhang
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引用次数: 4

摘要

本文利用共同基金股东信中披露的文本信息,实现自然语言处理(NLP)模型和神经网络来预测共同基金业绩。通过预测模型识别的知情基金提供了优越的异常回报,并且更有可能获得晨星评级的提升。知情基金在披露股东函后的3天至24个月内吸引的资金流也会增加,特别是当其披露受到投资者更大的关注时,这表明投资者认可了定性披露的信息。机器学习模型显示,知情的基金倾向于讨论行业专业化、投资组合风险承担、金融市场的大局以及跨资产的混合策略。总的来说,这项研究表明,共同基金披露包含丰富的、与价值相关的文本信息,这些信息可以通过最先进的机器学习模型进行分析,并帮助投资者识别知情的基金。
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Uncovering Mutual Fund Private Information with Machine Learning
This paper implements natural language processing (NLP) models and neural networks to predict mutual fund performance using the textual information disclosed in mutual fund shareholder letters. Informed funds identified by the prediction model deliver superior abnormal returns and are more likely to receive an upgrade in Morningstar ratings. Informed funds also attract greater flows in three days and up to 24 months after the disclosure of shareholder letters, especially when their disclosure has greater investor attention, suggesting that investors recognize the information from the qualitative disclosure. The machine learning model shows that informed funds tend to discuss sector specializations, portfolio risk taking, big picture of the financial market, and mixed strategies across assets. Collectively, this study shows that mutual fund disclosure contains rich, value-relevant textual information that can be analyzed by state-of-the-art machine learning models and help investors identify informed funds.
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