Making Data Stream Classification Tree-Based Ensembles Lighter

V. G. T. D. Costa, S. M. Mastelini, A. Carvalho, Sylvio Barbon Junior
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引用次数: 7

Abstract

Recently, several classification algorithms capable of dealing with potentially infinite data streams have been proposed. One of the main challenges of this task is to continuously update predictive models to address concept drifts without compromise their predictive performance. Moreover, the classification algorithm used must be able to efficiently deal with processing time and memory limitations. In the data stream mining literature, ensemble-based classification algorithms are a good alternative to satisfy the previous requirements. These algorithms combine multiple weak learner algorithms, e.g., the Very Fast Decision Tree (VFDT), to create a model with higher predictive performance. However, the memory costs of each weak learner are stacked in an ensemble, compromising the limited space requirements. To manage the trade-off between accuracy, memory space, and processing time, this paper proposes to use the Strict VFDT (SVFDT) algorithm as an alternative weak learner for ensemble solutions which is capable of reducing memory consumption without harming the predictive performance. This paper experimentally compares two traditional and three state-of-the-art ensembles using as weak learners the VFDT and SVFDT across thirteen benchmark datasets. According to the experimental results, the proposed algorithm can obtain a similar predictive performance with a significant economy of memory space.
使基于数据流分类树的集成更轻
最近,已经提出了几种能够处理潜在无限数据流的分类算法。该任务的主要挑战之一是不断更新预测模型以解决概念漂移而不影响其预测性能。此外,所使用的分类算法必须能够有效地处理处理时间和内存限制。在数据流挖掘文献中,基于集成的分类算法是满足上述要求的一个很好的替代方案。这些算法结合了多种弱学习算法,如快速决策树(VFDT),以创建具有更高预测性能的模型。然而,每个弱学习器的记忆成本是堆叠在一个集合中,损害了有限的空间要求。为了处理精度、内存空间和处理时间之间的权衡,本文提出使用严格VFDT (SVFDT)算法作为集成解决方案的替代弱学习器,它能够在不损害预测性能的情况下减少内存消耗。本文在13个基准数据集上实验比较了两种传统集成和三种最先进集成作为弱学习器的VFDT和SVFDT。实验结果表明,该算法在节省内存空间的前提下,可以获得相似的预测性能。
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