Forecasting with Partial Least Squares When a Large Number of Predictors Are Available

Forecasting with Partial Least Squares When a Large Number of Predictors Are Available
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Book Synopsis Forecasting with Partial Least Squares When a Large Number of Predictors Are Available by : Seung C. Ahn

Download or read book Forecasting with Partial Least Squares When a Large Number of Predictors Are Available written by Seung C. Ahn and published by . This book was released on 2022 with total page 0 pages. Available in PDF, EPUB and Kindle. Book excerpt: We consider Partial Least Squares (PLS) estimation of a time-series forecasting model with the data containing a large number (T) of time series observations on each of a large number (N) of predictor variables. In the model, a subset or a whole set of the latent common factors in predictors are determinants of a single target variable to be forecasted. The factors relevant for forecasting the target variable, which we refer to as PLS factors, can be sequentially generated by a method called "Nonlinear Iterative Partial Least Squares" (NIPLS) algorithm. Two main findings from our asymptotic analysis are the following. First, the optimal number of the PLS factors for forecasting could be much smaller than the number of the common factors in the original predictor variables relevant for the target variable. Second, as more than the optimal number of PLS factors is used, the out-of-sample forecasting power of the factors could rather decrease while their in-sample explanatory power may increase. Our Monte Carlo simulation results confirm these asymptotic results. In addition, our simulation results indicate that unless very large samples are used, the out-of-sample forecasting power of the PLS factors is often higher when a smaller than the asymptotically optimal number of factors are used. We find that the out-of-sample forecasting power of the PLS factors often decreases as the second, third, and more factors are added, even if the asymptotically optimal number of the factors is greater than one.


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