基于原型的概念漂移数据流学习

Junming Shao, Zahra Ahmadi, Stefan Kramer
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引用次数: 65

摘要

数据流挖掘因其在目标营销、电子邮件过滤、网络入侵检测等领域的广泛应用而受到越来越多的关注。在本文中,我们提出了一个基于原型的数据流分类模型,称为SyncStream,它动态建模随时间变化的概念,并以局部方式进行预测。SyncStream不是在滑动窗口或集成学习中学习单个模型,而是通过在称为p树的新数据结构中动态维护一组原型来捕获不断发展的概念。原型是通过错误驱动的代表性学习和同步启发的约束聚类获得的。为了识别数据流中突然的概念漂移,采用了PCA和基于统计的启发式方法。SyncStream有几个吸引人的好处:(a)它能够从一个小的原型集动态建模不断发展的概念,并且对噪声示例具有鲁棒性。(b)基于同步的约束聚类和P-Tree支持高效的数据表示和维护。(c)可以有效地发现逐渐和突然的概念漂移。实证结果表明,与最先进的算法相比,我们的方法实现了良好的预测性能,并且比另一种基于实例的流挖掘算法所需的时间要少得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prototype-based learning on concept-drifting data streams
Data stream mining has gained growing attentions due to its wide emerging applications such as target marketing, email filtering and network intrusion detection. In this paper, we propose a prototype-based classification model for evolving data streams, called SyncStream, which dynamically models time-changing concepts and makes predictions in a local fashion. Instead of learning a single model on a sliding window or ensemble learning, SyncStream captures evolving concepts by dynamically maintaining a set of prototypes in a new data structure called the P-tree. The prototypes are obtained by error-driven representativeness learning and synchronization-inspired constrained clustering. To identify abrupt concept drift in data streams, PCA and statistics based heuristic approaches are employed. SyncStream has several attractive benefits: (a) It is capable of dynamically modeling evolving concepts from even a small set of prototypes and is robust against noisy examples. (b) Owing to synchronization-based constrained clustering and the P-Tree, it supports an efficient and effective data representation and maintenance. (c) Gradual and abrupt concept drift can be effectively detected. Empirical results shows that our method achieves good predictive performance compared to state-of-the-art algorithms and that it requires much less time than another instance-based stream mining algorithm.
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