Maximum Likelihood Estimation of a Unit Root Bilinear Model with an Application to Prices

Daniela Hristova, City University London

Abstract

We estimate a unit root bilinear process using the Maximum Likelihood method with log-likelihood function constructed by means of the Kalman filter, and evaluate the finite sample properties of this estimator.

One hundred and five world-wide price series are tested for unit root bilinearity applying the test suggested by Charemza et al. (forthcoming). Applying the Maximum Likelihood estimator based on the Kalman filter, the null hypothesis of no bilinearity is rejected for 39 out of 105 series at the 5% level of significance. Most of the significant unit root bilinear coefficient estimates are explosive.

Recommended Citation

Daniela Hristova (2005) "Maximum Likelihood Estimation of a Unit Root Bilinear Model with an Application to Prices", Studies in Nonlinear Dynamics & Econometrics: Vol. 9: No. 1, Article 4.
http://www.bepress.com/snde/vol9/iss1/art4

Related Files

hristova_datacode.zip (117 kB)
Data and GAUSS code

 
 
 
 

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