Funds exchange: an approach for risk and portfolio management

V. Cherkassky, Filip Mulier, Anna B. Sheng
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引用次数: 3

Abstract

This paper describes a new approach for asset allocation and risk management called funds exchange. The funds exchange approach generically describes short-term trading of (broadly-based) mutual funds or indices based on statistical strategies aimed at achieving improved returns and, at the same time, reducing market risk (i.e., market exposure). Unlike many statistically-based trading and advisory systems trying to predict and benefit from the major (big) changes in the stock market, the funds exchange approach tries to capitalize on the short-term (daily) market volatility, i.e. small daily changes. This paper describes concepts and assumptions underlying this approach, and mathematical formulation of the funds exchange approach as a problem of predictive learning. Finally we show empirical evidence that the proposed approach can indeed provide improved returns and reduce market risk for SP 500 mutual funds.
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基金交换:一种风险和投资组合管理方法
本文介绍了一种新的资产配置和风险管理方法——资金交换。基金交易所方法一般描述了基于统计策略的(广泛基础的)共同基金或指数的短期交易,旨在实现更高的回报,同时降低市场风险(即市场敞口)。与许多基于统计的交易和咨询系统试图预测并从股票市场的主要(大)变化中获利不同,基金交易方法试图利用短期(每日)市场波动,即每日的小变化。本文描述了这种方法的概念和假设,以及作为预测学习问题的资金交换方法的数学公式。最后,我们展示了实证证据,表明所提出的方法确实可以为标准普尔500共同基金提供更高的回报和降低市场风险。
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