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Adaptive Learning from Evolving Data Streams

机译:从不断发展的数据流中自适应学习

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We propose and illustrate a method for developing algorithms that can adaptively learn from data streams that drift over time. As an example, we take Hoeffding Tree, an incremental decision tree inducer for data streams, and use as a basis it to build two new methods that can deal with distribution and concept drift: a sliding window-based algorithm, Hoeffding Window Tree, and an adaptive method, Hoeffding Adaptive Tree. Our methods are based on using change detectors and estimator modules at the right places; we choose implementations with theoretical guarantees in order to extend such guarantees to the resulting adaptive learning algorithm. A main advantage of our methods is that they require no guess about how fast or how often the stream will drift; other methods typically have several user-defined parameters to this effect.rnIn our experiments, the new methods never do worse, and in some cases do much better, than CVFDT, a well-known method for tree induction on data streams with drift.
机译:我们提出并说明了一种开发算法的方法,该算法可以从随时间漂移的数据流中自适应学习。作为示例,我们以Hoeffding树(一种用于数据流的增量决策树诱导器)为基础,并以此为基础来构建两个可以处理分布和概念漂移的新方法:基于滑动窗口的算法,Hoeffding窗口树和一种自适应方法,霍夫丁自适应树。我们的方法基于在正确的地方使用变化检测器和估计器模块;我们选择具有理论保证的实现方式,以便将此类保证扩展到最终的自适应学习算法。我们的方法的主要优点是,它们无需猜测流会漂移多快或多久。其他方法通常具有几个用户定义的参数来达到此效果。在我们的实验中,新方法从未比CVFDT做得更好,在某些情况下还做得好得多,CVFDT是一种众所周知的对带有漂移的数据流进行树归纳的方法。

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