학술논문

Learning Mutual Fund Categorization using Natural Language Processing
Document Type
Working Paper
Source
Subject
Quantitative Finance - Computational Finance
Quantitative Finance - Statistical Finance
Statistics - Machine Learning
Language
Abstract
Categorization of mutual funds or Exchange-Traded-funds (ETFs) have long served the financial analysts to perform peer analysis for various purposes starting from competitor analysis, to quantifying portfolio diversification. The categorization methodology usually relies on fund composition data in the structured format extracted from the Form N-1A. Here, we initiate a study to learn the categorization system directly from the unstructured data as depicted in the forms using natural language processing (NLP). Positing as a multi-class classification problem with the input data being only the investment strategy description as reported in the form and the target variable being the Lipper Global categories, and using various NLP models, we show that the categorization system can indeed be learned with high accuracy. We discuss implications and applications of our findings as well as limitations of existing pre-trained architectures in applying them to learn fund categorization.
Comment: 8 pages, 5 figures, 2-column format