Nonlinear Time Series Modeling: A Unified Perspective, Algorithm, and Application

Mukhopadhyay, Subhadeep, Parzen, Emanuel

arXiv.org Machine Learning 

A new comprehensive approach to nonlinear time series analysis and modeling is developed in the present paper. We introduce novel data-specific mid-distribution based Legendre Polynomial (LP) like nonlinear transformations of the original time series {Y (t)} that enables us to adapt all the existing stationary linear Gaussian time series modeling strategy and made it applicable for non-Gaussian and nonlinear processes in a robust fashion. The emphasis of the present paper is on empirical time series modeling via the algorithm LPTime. We demonstrate the effectiveness of our theoretical framework using daily S&P 500 return data between Jan/2/1963 - Dec/31/2009. Our proposed LPTime algorithm systematically discovers all the'stylized facts' of the financial time series automatically all at once, which were previously noted by many researchers one at a time.

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