Forecasting US consumer price index : does nonlinearity matter?

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Authors

Alvarez-Diaz, Marcos
Gupta, Rangan

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Routledge

Abstract

The objective of this paper is to predict, both in-sample and out-of-sample, the consumer price index (CPI) of the United States (US) economy based on monthly data covering the period of 1980:1-2013:12, using a variety of linear (random walk (RW), autoregressive (AR) and seasonally-adjusted autoregressive moving average (SARIMA)) and nonlinear (artificial neural network (ANN) and genetic programming (GP)) univariate models. Our results show that, while the SARIMA model is superior relative to other linear and nonlinear models, as it tends to produce smaller forecast errors; statistically, these forecasting gains are not significant relative to higher-order AR and nonlinear models, though simple benchmarks like the RW and AR(1) models are statistically outperformed. Overall, we show that in terms of forecasting the US CPI, accounting for nonlinearity does not necessarily provide us with any statistical gains.

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Keywords

Forecasting, Consumer price index (CPI), United States (US), Random walk (RW), Autoregressive (AR), Seasonally-adjusted autoregressive moving average (SARIMA), Artificial neural network (ANN), Genetic programming (GP)

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Citation

Marcos Álvarez-Díaz & Rangan Gupta (2016) Forecasting US consumer price index: does nonlinearity matter?, Applied Economics, 48:46, 4462-4475, DOI: 10.1080/00036846.2016.1158922.