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Diversification-consistent data envelopment analysis based on directional-distance measures

Publication at Faculty of Mathematics and Physics |
2015

Abstract

We propose new diversification-consistent DEA models suitable for assessing efficiency of investment opportunities available on financial markets. The formulations based on directional distance measures enable to use several risk measures as inputs and return measures as outputs, which can take both positive and negative values.

If we consider discretely distributed returns, we can prove that under proper choice of the inputs (CVaRs) and outputs (expected return), the strongest model is able to identify efficient investment opportunities with respect to the second-order stochastic dominance. Moreover, the model can be formulated as a linear programming problem.

In the numerical study, the proposed DEA models are applied to 48 representative industry portfolios from US stock markets.