基于SABR模型的隐含波动面预测资产走势

Shao-Jun Xu, Hongxin Huan, Y. Qi, Guoxiang Guo, J. Yen
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引用次数: 0

摘要

在金融领域,预测资产的未来价格一直是一个热门话题。现有的方法主要有两种:一种是在价格预测中对资产价格趋势进行建模。因此,这种方法不可避免地在资产序列的拐点处存在滞后性。二是从互联网上挖掘市场意见信息,预测未来价格走向。这种方法的挑战在于非结构化数据的处理和分析是困难的。因此,我们提出了一种基于SABR[3]模型的资产移动预测方法。一方面,期权隐含的市场对资产趋势的预测可以用来解决滞后性问题。另一方面,期权数据易于处理和分析。在本文中,我们尝试使用神经网络模型来捕捉市场对隐藏在随机波动面中的资产未来趋势的看法,并建立与资产价格的映射关系。结果表明,该方法可以有效地消除价格预测的滞后性,提高预测的准确性。
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Asset Movement Forcasting with the Implied Volatility Surface Analysis Based on SABR Model
In financial field, predicting the future price of an asset has always been a hot topic. There are mainly two existing methods: One is to model the trend of asset prices in price prediction. Therefore, this method inevitably has a lag at the inflection point of the asset sequence. The other is to mine market opinion information from the internet to predict the future direction of prices. The challenge with this approach is that unstructured data processing and analysis is difficult. Therefore, we propose a method for asset movement prediction based on SABR [3] model. On the one hand, the market’s prediction of asset trends implied in options can be used to solve the hysteresis problem. On the other hand, options data is easy to process and analyze. In this article, we try to use a neural network model to capture the market’s view of the future trend of assets hidden in the stochastic volatility surface generated by the stochastic volatility model and establish a mapping relationship with asset prices. The results show that our methods can effectively eliminate the lag of price prediction and improve the accuracy of the prediction.
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