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A New Possibilistic Mean - Variance Model Based on the Principal Components Analysis: An Application on the Turkish Holding Stocks

机译:基于主成分分析的可能性均值-方差模型:在土耳其持股中的应用

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摘要

Possibility Theory is a great tool to deal with the imprecise probability. However, the possibilistic counterpart of the mean - variance (MV) model has serious shortcomings. Thus, we propose a new possibilistic MV model, which depends on the Principal Components Analysis. The proposed model enables to incorporate subjective judgments into the portfolio selection. In addition, it captures the asymmetry in the return data unlike the MV model. The proposed model is also tractable as the MV model since it can be expressed as a concave quadratic maximization problem. After laying down the theoretical points, we illustrate it by using a real data set of six holding stocks trading on the Borsa Istanbul (BIST). We also compare the profitability and performance results of the proposed model and the MV model.
机译:可能性理论是处理不精确概率的好工具。但是,均值-方差(MV)模型的可能对应项存在严重缺陷。因此,我们提出了一种新的可能的MV模型,该模型取决于主成分分析。提出的模型可以将主观判断纳入投资组合选择。另外,与MV模型不同,它捕获了返回数据中的不对称性。所提出的模型也可以作为MV模型使用,因为它可以表示为凹二次最大化问题。在列出理论要点之后,我们通过使用在伊斯坦布尔证券交易所(BIST)上交易的六只持股的真实数据集来说明这一点。我们还比较了所提模型和MV模型的盈利能力和绩效结果。

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