Contrary to Popular Belief Incremental Discretization can be Sound, Computationally Efficient and Extremely Useful for Streaming Data

Geoffrey I. Webb
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引用次数: 17

Abstract

Discretization of streaming data has received surprisingly little attention. This might be because streaming data require incremental discretization with cut points that may vary over time and this is perceived as undesirable. We argue, to the contrary, that it can be desirable for a discretization to evolve in synchronization with an evolving data stream, even when the learner assumes that attribute values' meanings remain invariant over time. We examine the issues associated with discretization in the context of distribution drift and develop computationally efficient incremental discretization algorithms. We show that discretization can reduce the error of a classical incremental learner and that allowing a discretization to drift in synchronization with distribution drift can further reduce error.
与普遍的看法相反,增量离散化可以是可靠的,计算效率高,对流数据非常有用
流数据的离散化很少受到关注。这可能是因为流数据需要随时间变化的切割点的增量离散化,这被认为是不可取的。相反,我们认为离散化与不断发展的数据流同步发展是可取的,即使学习者假设属性值的含义随时间保持不变。我们研究了分布漂移背景下与离散化相关的问题,并开发了计算效率高的增量离散化算法。我们证明了离散化可以减小经典增量学习器的误差,并且允许离散化与分布漂移同步漂移可以进一步减小误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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