Title of article :
Consistent variable selection in large panels when factors are observable
Author/Authors :
Ouysse، نويسنده , , Rachida، نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی سال 2006
Pages :
39
From page :
946
To page :
984
Abstract :
In this paper we develop an econometric method for consistent variable selection in the context of a linear factor model with observable factors for panels of large dimensions. The subset of factors that best fit the data is sequentially determined. Firstly, a partial R 2 rule is used to show the existence of an optimal ordering of the candidate variables. Secondly, We show that for a given order of the regressors, the number of factors can be consistently estimated using the Bayes information criterion. The Akaike will asymptotically lead to overfitting of the model. The theory is established under approximate factor structure which allows for limited cross-section and serial dependence in the idiosyncratic term. Simulations show that the proposed two-step selection technique has good finite sample properties. The likelihood of selecting the correct specification increases with the number of cross-sections both asymptotically and in small samples. Moreover, the proposed variable selection method is computationally attractive. For K potential candidate factors, the search requires only 2 K regressions compared to 2 K for an exhaustive search.
Keywords :
arbitrage pricing theory , Consistency , convergence in probability , Model selection , information criterion
Journal title :
Journal of Multivariate Analysis
Serial Year :
2006
Journal title :
Journal of Multivariate Analysis
Record number :
1558409
Link To Document :
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