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大数据主题投资:以私募股权为例

Thematic Investing with Big Data: The Case of Private Equity

Financial Analysts Journal · 2023
被引 3
人大 BABS 3

中文导读

用自然语言处理给公司打分,构建一个可高频更新的上市私募股权指数,与常用私募股权基金指数相关性近90%,且收益相似,方法可推广到其他投资主题。

Abstract

Using natural language processing, we score companies based on the frequency with which news articles contain both their names and terms private equity and leveraged buy-out. An index is then created and can be updated seamlessly at high frequency. The weights are set as a function of the relative exposure to this theme. We add liquidity constraints to ensure minimal transaction costs. Even though the algorithm does not optimize on either return or correlation, this listed private equity index is highly correlated to commonly used private equity fund market indices: nearly 90% correlation with Burgiss LBO fund index. In addition, our index has similar returns as non-tradable Leveraged Buy-Outs (LBO) fund indices. Our approach can be generalized to many other investment themes.

私募股权大数据自然语言处理主题投资指数构建