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Bayesian Decision Tree Averaging for the Probabilistic Interpretation of Solar Flare Occurrences

机译:贝叶斯决策树平均对太阳耀斑发生概率的解释

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Bayesian averaging over Decision Trees (DTs) allows the class posterior probabilities to be estimated, while the DT models are understandable for domain experts. The use of Markov Chain Monte Carlo (MCMC) technique of stochastic approximation makes the Bayesian DT averaging feasible. In this paper we describe a new Bayesian MCMC technique exploiting a sweeping strategy allowing the posterior distribution to be estimated accurately under a lack of prior information. In our experiments with the solar flares data, this technique has revealed a better performance than that obtained with the standard Bayesian DT technique.
机译:决策树(DT)上的贝叶斯平均可以估计类后验概率,而DT模型对于领域专家是可以理解的。马尔可夫链蒙特卡洛(MCMC)随机逼近技术的使用使贝叶斯DT平均化成为可能。在本文中,我们描述了一种新的贝叶斯MCMC技术,该技术利用了一种扫描策略,可以在缺乏先验信息的情况下准确地估计后验分布。在我们的太阳耀斑数据实验中,该技术显示出比标准贝叶斯DT技术更好的性能。

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