Trade-Off between Requirement of Learning and Computational Cost
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概要
- 論文の詳細を見る
Machine learning in real-world situations sometimes starts from an initial collection of training instances;learning then proceeds off and on as new training instances come intermittently. The idea of two-phase learning has then been proposed here for effectively solving the learning problems in which training instances come in this two-stage way. Four two-phase learning algorithms based on the learning method PRISM have also been proposed for inducing rules from training instances. These alternatives from a spectrum, showing achievement of the requirement of PRISM(keeping down the number of irrelevant attributes)heavily dependent on the spent computational cost. The suitable alternative, as a trade-off between computational costs and achievement to the requirements, can then be chosen according to the request of the application domains.
- 社団法人電子情報通信学会の論文
- 1998-06-25
著者
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Wang Ching-hung
Chunghwa Telecommunication Laboratories
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Tseng Shian-shyong
Institute Of Computer And Information Science National Chiao-tung University
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HONG Tzung-Pei
the Department of Information Management, I-Shou University
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Hong Tzung-pei
The Department Of Information Management I-shou University