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首页> 外文期刊>Asia-Pacific Journal of Operational Research >NEW DEA PERFORMANCE EVALUATION INDICES AND THEIR APPLICATIONS IN THE AMERICAN FUND MARKET
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NEW DEA PERFORMANCE EVALUATION INDICES AND THEIR APPLICATIONS IN THE AMERICAN FUND MARKET

机译:新的DEA绩效评估指标及其在美国基金市场中的应用

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摘要

The data envelopment analysis (DEA) method is a mathematical programming approach to evaluate the relative performance of portfolios. Considering that the risk input indicators of existing DEA performance evaluation indices cannot reflect the pervasive fat tails and asymmetry in return distributions of mutual funds, we originally introduce new risk measures CVaR and VaR into inputs of relevant DEA indices to measure relative performance of portfolios more objectively. To fairly evaluate the performance variation of the same fund during different time periods, we creatively treat them as different decision making units (DMUs). Different from available DEA applications which mainly investigate the American mutual fund performance from the whole market or industry aspect, we analyze in detail the effect of different input/output indicator combinations on the performance of individual funds. Our empirical results show that VaR and CVaR, especially their combinations with traditional risk measures, are very helpful for comprehensively describing return distribution properties such as skewness and leptokurtosis, and can thus better evaluate the overall performance of mutual funds.
机译:数据包络分析(DEA)方法是一种数学编程方法,用于评估投资组合的相对绩效。考虑到现有DEA绩效评估指标的风险输入指标不能反映共同基金收益分布中普遍存在的尾巴和不对称现象,因此,我们最初将新的风险度量CVaR和VaR引入相关DEA指标的输入中,以便更客观地衡量投资组合的相对绩效。为了公平地评估同一基金在不同时期的业绩变化,我们创造性地将它们视为不同的决策单位(DMU)。与主要从整个市场或整个行业调查美国共同基金业绩的可用DEA应用程序不同,我们详细分析了不同投入/产出指标组合对单个基金业绩的影响。我们的经验结果表明,VaR和CVaR,尤其是它们与传统风险度量的组合,对于全面描述收益分布特性(如偏度和峰度)非常有帮助,因此可以更好地评估共同基金的整体绩效。

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