Machine learning fund categorizations

D. Mehta, Dhruv Desai, Jithin Pradeep
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引用次数: 5

Abstract

Given the surge in popularity of mutual funds (including exchange-traded funds (ETFs)) as a diversified financial investment, a vast variety of mutual funds from various investment management firms and diversification strategies have become available in the market. Identifying similar mutual funds among such a wide landscape of mutual funds has become more important than ever because of many applications ranging from sales and marketing to portfolio replication, portfolio diversification and tax loss harvesting. The current best method is data-vendor provided categorization which usually relies on curation by human experts with the help of available data. In this work, we establish that an industry wide well-regarded categorization system is learnable using machine learning and largely reproducible, and in turn constructing a truly data-driven categorization. We discuss the intellectual challenges in learning this man-made system, our results and their implications.
机器学习基金分类
由于共同基金(包括交易所交易基金)作为一种多元化的金融投资而受到广泛欢迎,市场上出现了各种投资管理公司和多样化策略的各种共同基金。在如此广泛的共同基金中识别相似的共同基金变得比以往任何时候都更加重要,因为从销售和营销到投资组合复制、投资组合多样化和税收损失收集等许多应用。目前最好的方法是数据供应商提供的分类,它通常依赖于人类专家在可用数据的帮助下进行管理。在这项工作中,我们建立了一个业界广泛认可的分类系统,它可以使用机器学习学习,并且在很大程度上是可重复的,从而构建了一个真正的数据驱动的分类。我们讨论了学习这个人造系统的智力挑战,我们的结果和它们的含义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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