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基于双条件选择策略的Ant-Miner算法 被引量:2

Ant-Miner algorithm based on dual condition choose strategy
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摘要 针对Ant-Mine算法提出一种新的条件选择策略-双条件选择策略。将该策略应用于Ant-Miner算法中,并与原Ant-Miner算法在两个公开的数据集上进行实验比较,结果表明应用了双条件选择策略的算法较原算法不仅具有更快的运行速度,而且获得了更高的预测精度。 This paper proposes a new condition choose strategy for Ant-Miner,is called dual condition choose strategy.Applied it to Ant-Miner algorithm,and compared it with original Ant-Miner on two standard data sets.The result shows that it is better than original algorithm on both predicted accuracy rate and run time.
出处 《计算机工程与应用》 CSCD 北大核心 2009年第11期147-149,共3页 Computer Engineering and Applications
基金 教育部科学技术研究重点项目No.207018~~
关键词 蚁群优化 Ant-Miner 双条件选择策略 ant colony optimization Ant-Miner dual condition choose strategy
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参考文献12

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共引文献29

同被引文献20

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