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Data clustering method for bayesian data reduction

机译:贝叶斯数据约简的数据聚类方法

摘要

This invention is a method of training a mean-field Bayesian data reduction algorithm (BDRA) based classifier which includes using an initial training for determining the best number of levels. The Mean-Field BDRA is then retrained for each point in a target data set and training errors are calculated for each training operation. Cluster candidates are identified as those with multiple points having a common training error. Utilizing these cluster candidates and previously identified clusters as the identified target data, the clusters can be confirmed by comparing a newly calculated training error with the previously calculated common training error for the cluster. The method can be repeated until all cluster candidates are identified and tested.
机译:本发明是一种训练基于平均场贝叶斯数据约简算法(BDRA)的分类器的方法,该方法包括使用初始训练来确定最佳级别数。然后,对目标数据集中的每个点重新训练平均场BDRA,并为每个训练操作计算训练误差。聚类候选者被识别为具有多个共同训练错误点的候选者。利用这些候选簇和先前识别出的簇作为识别出的目标数据,可以通过将新计算出的训练误差与先前计算出的该簇的通用训练误差进行比较来确认这些簇。可以重复该方法,直到所有候选聚类都被识别和测试为止。

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