Yule–Walker equations

Difference equations relating the autocorrelation coefficients of an autoregressive process to the coefficients on the lags.

Background

The Yule–Walker equations are fundamental in the analysis and understanding of autoregressive processes. Originating from the field of econometrics, they form an essential tool for estimating the parameters of such time series models.

Historical Context

Named after British statisticians George Udny Yule and Gilbert Walker, these equations have been instrumental since the early 20th century in time series analysis and subsequently in econometric models. Their contributions laid the groundwork for the examination of time-dependent data, essential in economics and several other fields.

Definitions and Concepts

  • Yule–Walker equations: These are a set of linear equations that express the relationship between the autocorrelation coefficients of an autoregressive (AR) process and the coefficients on the lags of the process.

Major Analytical Frameworks

Classical Economics

The Yule–Walker equations are not generally addressed in classical economics, which traditionally does not focus on time series analysis or autoregressive processes prevalent in modern econometrics.

Neoclassical Economics

Neoclassical economists, especially those involved in empirical research, might utilize Yule–Walker equations to analyze macroeconomic time series data, such as GDP or inflation rates, from a stationary standpoint.

Keynesian Economic

Keynesian economics often uses autoregressive models to study the dynamics of economic variables over time, especially to investigate lingering effects or time-dependent relationships in data, where Yule–Walker equations assist in parameter estimation.

Marxian Economics

Marxian economic analysis does not typically rely on advanced time series models; hence, the application of Yule–Walker equations in this framework is limited.

Institutional Economics

While institutional economics focuses on the roles of institutional contexts and evolution, the Yule–Walker equations could be applied for empirical time series analysis if seeking to establish statistical significance and robustness of institutional impact over time.

Behavioral Economics

Behavioral economists rarely engage with the Yule–Walker equations unless examining economic behaviors and patterns over time where autocorrelation plays a pivotal role.

Post-Keynesian Economics

Post-Keynesian analysis often involves dynamic models, and the Yule–Walker equations can be essential for estimating parameters in autoregressive processes specific to economic phenomena being modeled.

Austrian Economics

Austrian economics does not traditionally employ autoregressive models and thus seldom uses the Yule–Walker equations.

Development Economics

Development economists might use the Yule–Walker equations in examining the behavior of economic growth variables and other macro indicators over long time horizons.

Monetarism

Monetarists may employ Yule–Walker equations to analyze serial correlations in monetary aggregates and inflation data  to support monetarist assertions of money supply dynamics.

Comparative Analysis

Yule–Walker equations stand as a cornerstone in econometric time series analysis, a method predominantly used in contrast to other time series modeling techniques like moving averages or mixed autoregressive-moving-average models (ARMA). This comparison outlines the specialized approach of Yule–Walker to parameter estimation, specifically honing in on the autoregressive parameters.

Case Studies

Example 1: Predicting GDP Growth Rates

Utilizing quarterly GDP data, the Yule–Walker equations can assist in fitting an AR model, which then forecasts future quarterly growth rates given the historical autocorrelation structure.

Suggested Books for Further Studies

  1. “Time Series Analysis” by James D. Hamilton
  2. “Introduction to Time Series and Forecasting” by Peter J. Brockwell and Richard A. Davis
  3. “Econometric Analysis” by William H. Greene
  • Autoregressive (AR) Process: A model where the current value of the series is expressed as a function of its previous values.
  • Autocorrelation: The correlation of a signal with a delayed copy of itself.
  • Stationary Process: A stochastic process whose unconditional joint probability distribution does not change when shifted in time.
  • ARMA Model: A combination of autoregressive and moving average models used in time series analysis.