A MODIFIED BOX-COX TRANSFORMATION IN THE MULTIVARIATE ARMA MODEL
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概要
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The Box-Cox transformation has been used as a simple method of transforming dependent variable in ordinary-linear regression circumstances for improving the Gaussian-likelihood fit and making the disturbance terms of a model reasonably homoscedastic. The paper introduces a new version of the Box-Cox transformation and investigates how it works in terms of asymptotic performance and application, focusing in particular on inference on stationary multivariate ARMA models. The paper proposes a computational estimation procedure which extends the three-step Hannan and Rissanen method so as to accommodate the transformation and, for the purpose of parameter testing, the paper proposes a Monte-Carlo Wald test. The allied algorithm is applied to a bivariate series of the Tokyo stock-price index (Topix) and the call rate.
著者
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Hosoya Yuzo
Department Of Economics Meisei University
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Terasaka Takahiro
Department Of Economics Otaru University Of Commerce. For Correspondence
関連論文
- INFERENCE ON THE COINTEGRATION RANK AND A PROCEDURE FOR VARMA ROOT-MODIFICATION
- INFERENCE ON A SET OF STATISTICAL MODELS(CELEBRATION VOLUME FOR AKAIKE)
- A MODIFIED BOX-COX TRANSFORMATION IN THE MULTIVARIATE ARMA MODEL