Bayesian forecaster using class-based optimization

作者:Jae Joon Ahn, Hyun Woo Byun, Kyong Joo Oh, Tae Yoon Kim

摘要

Suppose that several forecasters exist for the problem in which class-wise accuracies of forecasting classifiers are important. For such a case, we propose to use a new Bayesian approach for deriving one unique forecaster out of the existing forecasters. Our Bayesian approach links the existing forecasting classifiers via class-based optimization by the aid of an evolutionary algorithm (EA). To show the usefulness of our Bayesian approach in practical situations, we have considered the case of the Korean stock market, where numerous lag-l forecasting classifiers exist for monitoring its status.

论文关键词:Bayesian approach, Class-based optimization, Evolutionary algorithm, Forecasting classifier

论文评审过程:

论文官网地址:https://doi.org/10.1007/s10489-011-0275-2