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A novel nonlinear programming approach for estimating CAPM beta of an asset using fuzzy regression

机译:一种使用模糊回归估计资产的CAPM beta的新型非线性规划方法

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摘要

The evaluation of risky assets is one of the major research tasks in the finance theory. There are several Capital Asset Pricing Models (CAPM) in the literature; the most popular one of those is the Sharpe-Lint-ner-Black mean-variance CAPM. According to this model, the typical measure of systematic risk is the beta coefficient. The beta coefficient can be evaluated by means of least squares method (LSM), Robust Regression Techniques (RRT), or similar approaches. However, the statistical assumptions of LSM might be invalid in the existence of extreme observations in data set. In order to decrease influence on the beta coefficient of extreme observations, most analyst apply to RRT"s. However, either RRTs remove the extreme observations from the data set, or decrease their influences on the beta coefficient. Whereas the omitted observations might be valuable for investors since they carry substantial information about the state of nature. In other words, there is a clash between statistical and financial theory. In this study, to overcome this incompatibility, and to take into account the extreme observations carried worthy information, a novel fuzzy regression approach is proposed. The proposed approach is based on both possibility concepts and central tendency in the estimation of beta coefficient. In application section of this paper, the beta coefficients of three assets traded in Istanbul Stock Exchange (ISE) are estimated by the proposed fuzzy approach and the traditional techniques, and then the results of analysis are compared, and discussed.
机译:风险资产的评估是金融理论的主要研究任务之一。文献中有几种资本资产定价模型(CAPM)。其中最受欢迎的一种是Sharpe-Lint-ner-Black平均方差CAPM。根据该模型,系统风险的典型度量是β系数。可以通过最小二乘法(LSM),稳健回归技术(RRT)或类似方法评估beta系数。但是,在数据集中存在极端观测时,LSM的统计假设可能无效。为了减少对极端观测值的beta系数的影响,大多数分析师都将其应用于RRT。但是,RRT会从数据集中删除极端观测值,或者减小其对beta系数的影响。而被忽略的观测值可能是有价值的对于投资者而言,因为他们拥有关于自然状态的大量信息,也就是说,统计理论和金融理论之间存在冲突;在本研究中,为了克服这种不兼容性,并考虑到带有有价值信息的极端观察结果,提出了模糊回归方法,该方法是基于可能性概念和β趋势系数估计的集中趋势,在本文的应用部分中,由伊斯坦布尔证券交易所(ISE)对三种资产的β系数进行估计。提出了模糊方法和传统技术,然后对分析结果进行了比较,讨论。

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