Study on the CBOE Volatility Data Forecast Using Statistical and Computational Simulations

Richard Kyung, Minjun Kye
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引用次数: 2

Abstract

Economic indexes can be influenced by many different factors; therefore, it is difficult to use a single variable linear regression to determine the effectiveness of patterns. Modeling an economic pattern for a focused area and performing data analysis is especially difficult with a complex data pattern. To predict the effectiveness of such a trend, this paper focuses on a specific, objective main factor that determines the economic status in the field of stock markets. The CBOE Volatility Index, known by its ticker symbol VIX, is a popular measure of the stock market’s expectation of volatility implied by S&P 500 index options. It is calculated and disseminated on a real-time basis by the Chicago Board Options Exchange (CBOE) and is commonly referred to as the fear index, or the fear gauge. In this paper, a statistical method is used to model the distribution of the maximum/minimum of a number of samples. Statistical measurements such as exceedance probability that an event exceeds mean value and return period are found based on historical data.
基于统计和计算模拟的CBOE波动率数据预测研究
经济指标受多种因素的影响;因此,很难使用单变量线性回归来确定模式的有效性。对于复杂的数据模式,为重点领域建模经济模式并执行数据分析尤其困难。为了预测这种趋势的有效性,本文着重研究了决定股票市场经济地位的一个具体的、客观的主要因素。芝加哥期权交易所波动率指数(CBOE Volatility Index)是衡量股市对标普500指数期权隐含波动率预期的常用指标。它是由芝加哥期权交易所(CBOE)实时计算和传播的,通常被称为恐惧指数或恐惧指标。本文采用统计方法对若干样本的最大值/最小值的分布进行建模。统计度量,例如事件超过平均值的概率和返回周期,是基于历史数据发现的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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