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POWER-WEIGHTED DENSITIES FOR TIME SERIES DATA

机译:时间序列数据的功率加权密度

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While time series prediction is an important, actively studied problem, the predictive accuracy of time series models is complicated by nonstationarity. We develop a fast and effective approach to allow for nonstationarity in the parameters of a chosen time series model. In our power-weighted density (PWD) approach, observations in the distant past are down-weighted in the likelihood function relative to more recent observations, while still giving the practitioner control over the choice of data model. One of the most popular nonstationary techniques in the academic finance community, rolling window estimation, is a special case of our PWD approach. Our PWD framework is a simpler alternative compared to popular state-space methods that explicitly model the evolution of an underlying state vector. We demonstrate the benefits of our PWD approach in terms of predictive performance compared to both stationary models and alternative nonstationary methods. In a financial application to thirty industry portfolios, our PWD method has a significantly favorable predictive performance and draws a number of substantive conclusions about the evolution of the coefficients and the importance of market factors over time.
机译:尽管时间序列预测是一个重要且正在积极研究的问题,但是时间序列模型的预测准确性由于不稳定而变得复杂。我们开发了一种快速有效的方法,以使所选时间序列模型的参数具有非平稳性。在我们的功率加权密度(PWD)方法中,相对于较新的观测值,遥远的过去的观测值在似然函数中权重较低,同时仍使从业人员可以控制数据模型的选择。滚动窗口估计是学术金融界最受欢迎的非平稳技术之一,是我们PWD方法的特例。与流行的状态空间方法相比,我们的PWD框架是一种更简单的替代方法,后者可以对基础状态向量的演化进行显式建模。与固定模型和其他非固定方法相比,我们证明了PWD方法在预测性能方面的优势。在对30个行业投资组合的金融应用中,我们的PWD方法具有非常有利的预测性能,并随着时间的推移得出了有关系数演变和市场因素重要性的大量实质性结论。

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