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A0495
Title: Approximate factor models for functional time series Authors:  Sven Otto - University of Cologne (Germany) [presenting]
Nazarii Salish - University Carlos III de Madrid (Spain)
Abstract: An approximate factor model for time-dependent curve data is proposed that represents a functional time series as the aggregate of a predictive low-dimensional component and an unpredictive infinite-dimensional component. Suitable identification conditions lead to a two-stage estimation procedure based on functional principal components, and the number of factors is estimated consistently through an information criterion-based approach. The methodology is applied to the problem of modelling and predicting yield curves. Results indicate that more than three factors are required to characterize the dynamics of the term structure of bond yields.