DocumentCode :
451055
Title :
A comparative study on model selection and multiple model fusion
Author :
Chen, Huimin ; Huang, Shuqing
Author_Institution :
Dept. of Electr. Eng., New Orleans Univ., LA, USA
Volume :
1
fYear :
2005
fDate :
25-28 July 2005
Abstract :
There exist quite a few criteria for penalty-based model selection. Although they have various justifications for large sample problems, their performance under small or moderate sample size is unclear which hinders the development of model combination methods using the appropriate penalty term. In this paper, we assess the performance of seven model selection criteria based on linear regression models with unknown noise variance. We set the true data generation mechanism to be within the model set as well as outside the model set. In the latter case, soft model selection through multiple model fusion is proposed and its difference from Bayesian model averaging is highlighted. The penalty term used in each model selection criterion provides a natural link to estimate the model probability without assuming any prior knowledge of the unknown parameter. An important question is whether the estimated model probabilities are consistent when multiple models are fused for prediction or interpolation. We argue that strong consistency only holds under large sample regime while soft model selection can still be better than choosing a single model with small sample size. Our numerical results using different model selection criteria for polynomial fitting indicate that the conditional model estimator (CME) has the best performance in selecting the correct model order and fusing multiple models for prediction and interpolation. The minimum description length (MDL) based criteria are next to CME and outperform Bayesian information criterion (BIC) and Akaike information criterion (AIC) significantly.
Keywords :
interpolation; polynomial approximation; prediction theory; regression analysis; sensor fusion; signal denoising; signal sampling; CME; MDL; conditional model estimator; interpolation method; linear regression models; minimum description length; multiple model fusion; penalty-based model selection; polynomial fitting; prediction theory; probability estimation; sample problem; true data generation mechanism; unknown noise variance; Bayesian methods; Computer science; Fusion power generation; Interpolation; Linear regression; Parameter estimation; Polynomials; Predictive models; State estimation; Time series analysis; Model selection; estimation fusion; linear regression; multiple model inference; time series analysis;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Information Fusion, 2005 8th International Conference on
Print_ISBN :
0-7803-9286-8
Type :
conf
DOI :
10.1109/ICIF.2005.1591938
Filename :
1591938
Link To Document :
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