Abstract:Averaged onedependence estimators (AODE) is an important Bayesian learning method. However, in AODE all outputs of the superparentonedependence estimators (SPODEs) are equally considered, which may bring bad influences to the final results. In this paper, every SPODE is viewed as a generative model, and the model likelihood is used to measure its performance. Then, a new approach, named modellikelihood based superparentone dependence estimator (LODE), is proposed which integrates the SPODEs based on model likelihood. Compared with AODE, LODE significantly improves the classification performance with only a slight increase in computation.
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