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Class and subclass probability re-estimation to adapt a classifier in the Npresence of concept drift

机译:类别和子类别的概率重新估计,以在概念漂移的存在下适应分类器

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摘要

We consider the problem of classification in environments where training and test data may come from different probability distributions. When the fundamental stationary distribution assumption made in supervised learning (and often not satisfied in practice) does not hold, the classifier performance may significantly deteriorate. Several proposals have been made to deal with classification problems where the class priors change after training, but they may fail when the class conditional data densities also change. To cope with this problem, we propose an algorithm that uses unlabeled test data to adapt the classifier outputs to new operating conditions, without re-training it. The algorithm is based on a posterior probability model with two main assumptions: (1) the classes may be decomposed in several (unknown) subclasses, and (2) all changes in data distributions arise from changes in prior subclass probabilities. Experimental results with a neural network model on synthetic and remote sensing practical settings show that the adaptation at the subclass level can get a better adjustment to the new operational conditions than the methods based on class prior changes.
机译:我们考虑在训练和测试数据可能来自不同概率分布的环境中的分类问题。如果在监督学习中做出的基本平稳分布假设(通常在实践中不满足)不成立,则分类器的性能可能会大大降低。已经提出了一些解决分类问题的建议,这些分类问题是在训练后班级先验发生变化的,但是当班级条件数据密度也发生变化时,它们可能会失败。为了解决这个问题,我们提出了一种算法,该算法使用未标记的测试数据来使分类器的输出适应新的工作条件,而无需对其进行重新训练。该算法基于具有两个主要假设的后验概率模型:(1)可以将这些类分解为几个(未知)子类,并且(2)数据分布的所有变化都源于先前子类概率的变化。在合成和遥感实际设置上使用神经网络模型进行的实验结果表明,与基于班级先前更改的方法相比,在子类级别的适应可以更好地适应新的操作条件。

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