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Forecasting Compositional Time Series with Exponential Smoothing Methods

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posted on 2022-11-01, 05:09 authored by Anne B. Koehler, Ralph D. Snyder, J. Keith Ord, Adrian Beaumont
Compositional time series are formed from measurements of proportions that sum to one in each period of time. We might be interested in forecasting the proportion of home loans that have adjustable rates, the proportion of nonagricultural jobs in manufacturing, the proportion of a rock's geochemical composition that is a specific oxide, or the proportion of an election betting market choosing a particular candidate. A problem may involve many related time series of proportions. There could be several categories of nonagricultural jobs or several oxides in the geochemical composition of a rock that are of interest. In this paper we provide a statistical framework for forecasting these special kinds of time series. We build on the innovations state space framework underpinning the widely used methods of exponential smoothing. We couple this with a generalized logistic transformation to convert the measurements from the unit interval to the entire real line. The approach is illustrated with two applications: the proportion of new home loans in the U.S. that have adjustable rates; and four probabilities for specified candidates winning the 2008 democratic presidential nomination.

History

Classification-JEL

C22

Creation date

2010-11

Working Paper Series Number

20/10

Length

15 pages

File-Format

application/pdf

Handle

RePEc:msh:ebswps:2010-20

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