缓存层次启发压缩:数据流的新架构

G. Holmes, B. Pfahringer, Richard Kirkby
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引用次数: 1

摘要

我们提出了一种基于web缓存层次结构中常见结构的数据流架构。其主要思想是根据数据流构建的多个级别构建一个元级别分析器。我们给出了该系统的总体架构以及在分类中的应用。该体系结构是一般包装器思想的一个实例,它允许我们在固有的增量学习环境中重用标准批处理学习算法。通过人工生成数据源,我们证明了包含混合模型的层次结构能够随着时间的推移适应数据源。在这些实验中,层次结构使用基于基本性能的替换策略和非加权投票来做出分类决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cache Hierarchy Inspired Compression: a Novel Architecture for Data Streams
We present an architecture for data streams based on structures typically found in web cache hierarchies. The main idea is to build a meta level analyser from a number of levels constructed over time from a data stream. We present the general architecture for such a system and an application to classification. This architecture is an instance of the general wrapper idea allowing us to reuse standard batch learning algorithms in an inherently incremental learning environment. By artificially generating data sources we demonstrate that a hierarchy containing a mixture of models is able to adapt over time to the source of the data. In these experiments the hierarchies use an elementary performance based replacement policy and unweighted voting for making classification decisions.
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