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題名: Detecting Drifting Concepts on the Internet
作者: Chien-I Lee;Cheng-Jung Tsai;Chien-Hui Hsieh
貢獻者: 數學系
關鍵詞: Internet;Incremental learning;Concept drift
日期: 2008-07
上傳時間: 2011-05-10T06:29:07Z
出版者: National Dong Hwa University
摘要: With the explosive growth of information sources available on the World Wide Web, it has become increasingly necessary to utilize automated tools to discovery interesting and potentially useful patterns from data on the Internet. Since the data on the Internet such as communication packages, email, and e-commerce transactions come consecutively, an efficient and accurate incremental learning approach is required. Moreover, since the labels of these data may change over time, the problem of concept drift must be considered while incrementally learning from the data on the Internet. In this paper, we give a detailed discussion of the concept-drifting problem on the Internet. We also address a new problem called two-way drift. An approach adapted to the occurrence of concept drift is then proposed as the solution to incrementally learn from the data on the Internet. Our approach works as a preprocessor to detect the occurrence of concept drift and can be incorporated into any existing classification techniques. Our approach can also reveal which attribute values cause concept drift and therefore enables systems or decision makers to adopt proper decision in advance.
關聯: Journal of Internet Technology, 9(3): 229-236
顯示於類別:[數學系] 期刊論文

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