数据流分类方法综述

Sajad Homayoun, Marzieh Ahmadzadeh
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引用次数: 11

摘要

流数据通常是大量的,动态变化的,可能是无限的,并且包含多维特征。由于数据流挖掘在电子商务、银行、传感器数据和电信记录等广泛的现实世界应用中的存在,对数据流挖掘的关注正在增加。与数据挖掘类似,数据流挖掘包括分类、聚类、频繁模式挖掘等技术;本文特别关注为处理数据流而发明的分类方法。早期的数据流分类方法需要对所有实例进行标记以创建分类器模型,但有一些方法(半监督学习和主动学习)在使用标记数据的同时也使用未标记数据。本文主要从集成方法、半监督学习和主动学习三个方面综述了近年来在这方面的研究进展。
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A review on data stream classification approaches
Stream data is usually in vast volume, changing dynamically, possibly infinite, and containing multi-dimensional features. The attention towards data stream mining is increasing as regards to its presence in wide range of real-world applications, such as e-commerce, banking, sensor data and telecommunication records. Similar to data mining, data stream mining includes classification, clustering, frequent pattern mining etc. techniques; the special focus of this paper is on classification methods invented to handle data streams. Early methods of data stream classification needed all instances to be labeled for creating classifier models, but there are some methods (Semi-Supervised Learning and Active Learning) in which unlabeled data is employed as well as labeled data. In this paper, by focusing on ensemble methods, semi-supervised and active learning, a review on some state of the art researches is given.
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