首页> 外文会议>International Workshop on Multiple Classifier Systems(MCS 2007); 20070523-25; Prague(CZ) >An Ensemble Approach for Incremental Learning in Nonstationary Environments
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An Ensemble Approach for Incremental Learning in Nonstationary Environments

机译:非平稳环境中增量学习的集成方法

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摘要

We describe an ensemble of classifiers based algorithm for incremental learning in nonstationary environments. In this formulation, we assume that the learner is presented with a series of training datasets, each of which is drawn from a different snapshot of a distribution that is drifting at an unknown rate. Furthermore, we assume that the algorithm must learn the new environment in an incremental manner, that is, without having access to previously available data. Instead of a time window over incoming instances, or an aged based forgetting - as used by most ensemble based nonstationary learning algorithms - a strategic weighting mechanism is employed that tracks the classifiers' performances over drifting environments to determine appropriate voting weights. Specifically, the proposed approach generates a single classifier for each dataset that becomes available, and then combines them through a dynamically modified weighted majority voting, where the voting weights themselves are computed as weighted averages of classifiers' individual performances over all environments. We describe the implementation details of this approach, as well as its initial results on simulated non-stationary environments.
机译:我们描述了一种基于分类器的算法,用于非平稳环境中的增量学习。在此公式中,我们假设为学习者提供了一系列训练数据集,每个训练数据集均来自以未知速率漂移的分布的不同快照。此外,我们假设该算法必须以增量方式学习新环境,也就是说,不能访问先前可用的数据。代替传入实例的时间窗口或基于年龄的遗忘(如大多数基于集合的非平稳学习算法所使用的),采用策略加权机制来跟踪分类器在漂移环境中的表现,以确定适当的投票权重。具体而言,所提出的方法为每个可用的数据集生成一个分类器,然后通过动态修改的加权多数投票将它们组合在一起,其中投票权本身被计算为分类器在所有环境中的单个性能的加权平均值。我们描述了这种方法的实施细节,以及在模拟的非平稳环境下的初步结果。

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