期刊文献+

对基于知识发现的神经元网络集成方法的研究 被引量:1

A Research on the Knowledge-based Neural Network Ensembles
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摘要 该文对应用知识发现技术训练神经元网络集成的方法进行了研究,提出了以并行操作的方式结合归纳学习所获取的知识和演绎学习所获取的知识的神经元网络集成模型KBNNE(Knowledge-basedNeuralNetworkEnsem-bles)。实验表明,通过调节所获取知识的权重因子,新模型可以有效提高网络集成的性能。 This article explores the utility of knowledge discovery in Neural Network Ensembles. A novel neural network ensemble model KBNNE(Knowledge-Based Neural Network Ensembles)integrating KDD(Knowledge Discovery in Database)techniques and neural network ensemble algorithms by parallel operations is proposed. By balancing the relative importance of knowledge learned by induction and deduction, the new model improves the quality of neural network ensembles and has been applied successfully to actual modeling problems.
作者 王泳 邢红杰
出处 《计算机科学》 CSCD 北大核心 2006年第10期189-192,共4页 Computer Science
基金 国家自然科学基金资助(60275025 60121302)。
关键词 知识发现 神经元网络集成 归纳学习 演绎学习 Knowledge discovery, Neural network ensembles, Induction,Deduction
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共引文献140

同被引文献14

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