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Evolving possibilistic fuzzy modeling for equity options pricing

机译:演化的可能性模糊建模在股票期权定价中的应用

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The correct pricing of financial derivatives plays a key role in risk management and in hedge operations. Besides the Black and Scholes closed-form formula simplicity and good results for pricing European options, several of the assumptions used in the method may be unrealistic and influence the results significantly. In order to overcome this limitation, this paper suggests an evolving possibilistic fuzzy modeling (ePFM) approach for European equity options pricing. The approach is based on an extension of the possibilistic fuzzy c-means clustering and functional fuzzy rule-based modeling. ePFM employs memberships and typicalities to recursively cluster data, and uses participatory learning to adapt the model structure as a stream data is input. The model does not require any assumptions about data distribution, it is an effective robust method to handle noisy data and outliers in option price dynamics modeling, and it is also capable to access volatility clustering due to its clustering-based nature. Computational experiments consider the pricing of European equity options (calls and puts) on preference shares of Petrobras (PETR4), one of the most liquidity options traded in the Brazilian derivatives market. The results show that ePFM is a potential candidate for equity options pricing, with comparable or better performance than the Black and Scholes method and alternative evolving fuzzy approaches.
机译:金融衍生品的正确定价在风险管理和对冲操作中起着关键作用。除了Black和Scholes封闭式公式的简单性以及对欧洲期权定价的良好结果外,该方法中使用的一些假设可能是不现实的,并且会严重影响结果。为了克服这一限制,本文提出了一种发展的可能性模糊建模(ePFM)方法,用于欧洲股票期权定价。该方法基于可能的模糊c均值聚类和基于功能性模糊规则的建模的扩展。 ePFM使用成员资格和典型性来递归地对数据进行聚类,并在输入流数据时使用参与式学习来调整模型结构。该模型不需要任何关于数据分布的假设,它是一种有效的鲁棒方法,可以处理期权价格动态建模中的嘈杂数据和离群值,并且由于其基于聚类的性质,因此还能够访问波动性聚类。计算实验考虑了巴西国家石油公司(PETR4)的优先股对欧洲股票期权(看涨期权和看跌期权)的定价,这是巴西衍生品市场交易量最大的流动性期权之一。结果表明,ePFM是股票期权定价的潜在候选者,其性能可与Black and Scholes方法和替代发展的模糊方法相媲美或更好。

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