具有突然概念漂移的流数据的长短期记忆专家组合

Sabine Apfeld, A. Charlish, G. Ascheid
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引用次数: 1

摘要

处理流数据时遇到的挑战之一是数据分布的变化,这被称为概念漂移。已经证明,集成方法在应对这种变化方面是有效的。然而,如果集成成员(专家)是具有内部状态的长短期记忆网络,那么集成的体系结构和配置以及场景的性质如何影响预测精度,目前还没有研究。本文评估了几种配置下的六种集成体系结构对处理具有突然、反复出现的概念漂移的流数据的适用性。利用公共数据集进行评估,显示了在不同条件下,体系结构和配置对集成精度的影响,以及概念稳定期和长短期记忆专家内部状态的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensembles of Long Short-Term Memory Experts for Streaming Data with Sudden Concept Drift
One of the challenges encountered when processing streaming data is a change of the data distribution, which is called concept drift. It has been shown that ensemble methods are effective in reacting to such a change. However, so far it has not been investigated how the architecture and configuration of the ensemble, as well as the properties of the scenario, influence the prediction accuracy if the ensemble members (experts) are Long Short-Term Memory networks with an internal state. This paper evaluates six ensemble architectures in several configurations with regards to their suitability for processing streaming data with sudden, recurring concept drift. The evaluation with a public dataset shows the impact of the architecture and configuration on the ensembles’ accuracies, as well as the influence of the concepts’ stability periods and the Long Short-Term Memory experts’ internal states under several conditions.
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