This file is part of IDEAS, which uses RePEc data


[ Papers | Articles | Software | Books | Chapters | Authors | Institutions | JEL Classification | NEP reports | Search | New papers by email | Author registration | Rankings | Volunteers | FAQ | Blog | Help! ]

Proxying Inflation Forecasts With Fuller/Roy-Type Median Unbiased Near Unit Root Coefficient Estimates

Author info | Abstract | Publisher info | Download info | Related research | Statistics
Author Info
Huston McCulloch, Jeffery A. Stec (The Ohio State University)
Abstract

The Moderate Quantity Theory of Money (McCulloch, 1980) specifies the functional form of the price adjustment equation as: pi(t) = a(m(t-1)-md(t-1)) + E(pi(t-1)) + e(t), (1) where pi(t) is inflation at time t, a is an adjustment parameter, m(t-1) and md(t-1) are real money balances and a specification for real money demand, respectively, E(pi(t-1)) is the public's expectation, as of t-1, of pi(t), and e(t) is a white noise error term. In order to implement this model, we proxy E(pi(t-1)) with forecasts that are obtained from a univariate time series model, using monthly data only available up to time t-1, over the post-war period (Jan. 1959 - May, 1999). Although equation (1) implies that the excess supply of money also affects inflation, a small value of a and a small R-squared make it plausible that this signal is too weak to be worth the public's while to try to detect, once the history of inflation is taken into account.In the early portion of our period, a unit root in inflation may be rejected, while in the later portion, it generally cannot be. Work by Andrews (1993), Andrews and Chen (1994), Fuller (1996), and Fuller and Roy (1998) has suggested that the direct modeling of a unit root or near unit root process should be done using median unbiased estimators. It is well known that the coefficient on the AR(1) term in an OLS autoregression will be biased downward as the true value of the estimator approaches one (Mariott and Pope (1954), Pantula and Fuller (1985), and Shaman and Stine (1988). To correct for this bias, these authors calculate the bias contingent on the sample size and the true AR(1) parameter. The estimated parameter is then corrected by incorporating this bias.Since the size of the root nearest unity of the U.S. annualized monthly inflation series appears to change over time, we use an expanding window. For each month, we first estimate a modified long-lag AR process using Weighted Symmetric Least Squares as in Fuller (1996), then adjust the lead coefficient along the lines he proposes. However, in order to incorporate MA terms, we then pseudo-difference the inflation series to date using the median-unbiased AR(1) coefficient, to ensure we are dealing with a stationary series. We then fit a parsimonious ARMA, as determined by the Schartz-Bayesian Criterion, and generate one-step ahead forecasts. The entire procedure is repeated each month, using only past data, and starting with data back to January 1950.The Ljung-Box Q statistic indicates that the differenced series is quasi-white noise, i.e., the inflation series has been modeled adequately. The serially uncorrelated forecasts are then used in equation (1) to test the Moderate Quantity Theory of Money and to estimate money demand.

Download Info
To our knowledge, this item is not available for download. To find whether it is available, there are three options:
1. Check below under "Related research" whether another version of this item is available online.
2. Check on the provider's web page whether it is in fact available.
3. Perform a search for a similarly titled item that would be available.

Publisher Info
Paper provided by Society for Computational Economics in its series Computing in Economics and Finance 2000 with number 295.

Download reference. The following formats are available: HTML, plain text, BibTeX, RIS (EndNote), ReDIF
Length:
Date of creation: 05 Jul 2000
Date of revision:
Handle: RePEc:sce:scecf0:295

Contact details of provider:
Postal: CEF 2000, Departament d'Economia i Empresa, Universitat Pompeu Fabra, Ramon Trias Fargas, 25,27, 08005, Barcelona, Spain
Fax: +34 93 542 17 46
Email:
Web page: http://enginy.upf.es/SCE/
More information through EDIRC

For technical questions regarding this item, or to correct its listing, contact: (Christopher F. Baum).

Related research
Keywords:

Statistics
Access and download statistics

Did you know? IDEAS is also providing many rankings, for example of authors and institutions.

This page was last updated on 2008-12-2.


This information is provided to you by IDEAS at the Department of Economics, College of Liberal Arts and Sciences, University of Connecticut using RePEc data on a server sponsored by the Society for Economic Dynamics.