概念漂移模式识别中的半监督学习

Mitrokhin M. A., Zaharov S. M., Mitrokhina N. Yu.
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引用次数: 1

摘要

本文描述了利用半监督学习来适应具有概念漂移的模式识别问题中的决策规则。已经使用从不断变化的环境中可用的额外数据集生成了一个新的分类器。该分类器是一个结合了改进的加权贝叶斯决策规则的聚类结构,其中权重使用分类器的当前决策动态更新。在每个聚类中识别概率密度函数,并将决策规则定义为分布混合。自适应机制允许算法通过将最近和相关的聚类加权到更高的权重来跟踪环境变化。介绍了自适应算法,并通过具体的模型问题与静态自适应算法进行了性能比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semisupervised learning in pattern recognition with concept drift
We describe the use of semisupervised learning to adapt decision rule in the pattern recognition problem with concept drift. There has been generated a new classifier using additional dataset that becomes available from the changing environment. The classifier is a combined cluster structure with a modified weighted Bayesian decision rule, where the weights are dynamically updated using the classifier’s current decision. The probability density functions are identified in each cluster and the decision rule is defined as a distribution mixture. The adaptation mechanism allows the algorithm to track the environment changes by weighting the most recent and relevant cluster higher. The adaptive algorithm is described, and its performance is compared to the static one by using specific model problem.
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