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An agent-based hybrid framework for database mining

journal contribution
posted on 2003-05-01, 00:00 authored by Zili ZhangZili Zhang, C Zhang, Shichao Zhang
While knowledge discovery in databases (KDD) is defined as an iterative sequence of the following steps: data pre-processing, data mining, and post data mining, a significant amount of research in data mining has been done, resulting in a variety of algorithms and techniques for each step. However, a single data-mining technique has not been proven appropriate for every domain and data set. Instead, several techniques may need to be integrated into hybrid systems and used cooperatively during a particular data-mining operation. That is, hybrid solutions are crucial for the success of data mining. This paper presents a hybrid framework for identifying patterns from databases or multi-databases. The framework integrates these techniques for mining tasks from an agent point of view. Based on the experiments conducted, putting different KDD techniques together into the agent-based architecture enables them to be used cooperatively when needed. The proposed framework provides a highly flexible and robust data-mining platform and the resulting systems demonstrate emergent behaviors although it does not improve the performance of individual KDD techniques.

History

Journal

Applied artificial intelligence

Volume

17

Issue

5&6

Pagination

383 - 398

Publisher

Taylor and Francis Inc

Location

Washington, D.C., Wash.

ISSN

0883-9514

eISSN

1087-6545

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Copyright notice

2003, Taylor & Francis

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