A Nonparametric Test of a Strong Leverage Hypothesis

O. Linton, Yoon-Jae Whang, Yu-Min Yen
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引用次数: 9

Abstract

The so-called leverage hypothesis is that negative shocks to prices/returns aect volatility more than equal positive shocks. Whether this is attributable to changing nancial leverage is still subject to dispute but the terminology is in wide use. There are many tests of the leverage hypothesis using discrete time data. These typically involve tting of a general parametric or semiparametric model to conditional volatility and then testing the implied restrictions on parameters or curves. We propose an alternative way of testing this hypothesis using realized volatility as an alternative direct nonparametric measure. Our null hypothesis is of conditional distributional dominance and so is much stronger than the usual hypotheses considered previously. We implement our test on a number of stock return datasets using intraday data over a long span. We nd powerful evidence in favour of our hypothesis.
强杠杆假设的非参数检验
所谓的杠杆假设是,对价格/回报的负面冲击对波动性的影响大于正面冲击。这是否归因于不断变化的财务杠杆仍存在争议,但该术语已被广泛使用。利用离散时间数据对杠杆假设进行了许多检验。这些通常涉及将一般参数或半参数模型用于条件波动,然后测试参数或曲线上的隐含限制。我们提出了另一种方法来检验这一假设,使用已实现的波动率作为替代的直接非参数度量。我们的零假设是条件分布优势,因此比之前考虑的通常假设强得多。我们在许多股票回报数据集上实现了我们的测试,这些数据集使用了长时间内的日内数据。我们有强有力的证据支持我们的假设。
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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