数据流挖掘中基于capsnet的漂移检测

Borong Lin, Nanlin Jin
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引用次数: 1

摘要

对于数据流,漂移检测方法警告并检测模式随时间的变化。例如,在智能制造中,许多数据流是由监控制造实时运行的传感器产生的。漂移检测可以用来发现是否以及如何操作状态的变化。目前,漂移检测主要有三种方法:基于错误率的方法、基于分布的方法和基于假设的方法。然而,这些方法有一个不切实际的限制:由于对计算时间的需求而导致的延迟。在大规模和高速数据流中,时间效率高的检测器是至关重要的。为了解决这个问题,本文提出了一种基于capsnet的漂移检测算法(CapsNet-DDM)。我们的实验结果和比较研究发现,CapsNet-DDM在计算时间上具有显著优势,在准确性、F1分数和有效漂移检测率方面没有妥协。
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CapsNet-based drift detection in data stream mining
For data streams, drift detection methods warn and detect the changes in patterns over time. For example, in smart manufacturing, many data streams are generated from sensors that monitor the real-time operation of manufacturing. Drift detection can be used to discover if and how the operation status changes. At present, there have been three main approaches in drift detection: error rate-based, distribution-based, and hypothesis-based. However, these approaches bear an impractical limitation: delays due to the demand for computational time. In a large-scale and high-speed data stream, a time-efficient detector is vital. To address this, this paper proposes a CapsNet-based drift detection algorithm (CapsNet-DDM). Our experimental results and comparative studies have found that CapsNet-DDM demonstrates a distinguishing advantage on computational time, with no compromise on accuracy, F1 score, and effective drift detection rates.
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