期刊文献+

用创新计算动力学研究神经网络的组合创新

Research on Combinatorial Innovation of Neural Network Using Dynamics for Computational Creativity
下载PDF
导出
摘要 创新计算动力学研究创新的基本规律,不仅为创新的机械化实现奠定基础,也为人类的创新活动提供规则化支持。文中利用创新计算动力学的基本定律研究神经网络技术的组合创新活动,归纳了组合创新的重要前提,同时证明了神经网络的组合创新过程是符合创新计算的基本定律之联想与组合定律。最后,提出了相似组合、对立组合和信息域关联组合三种具体的组合创新模式。由于创新活动的广泛性和创新计算动力学的一般性,它们对于神经网络的未来发展以及其它理论或技术的创新都具有一定的启发意义。 Dynamics for computational creativity (DCC) not only lays a theoretical basis for mechanization of innovation, but also provides the rules for human innovation activities. It is utilized to study the combinatorial innovation of neural network, and several important prerequisites to combinatorial innovation are proposed. At the same time, the innovation of neural network is proved to be in conformity with reminding and combining, which is one of the basic laws of DOC. Then according to the laws, three specific innovative schemas are concluded and illustrated. Because of the popularization of innovation and the generality of DCC, these prerequisites and innovative schemas will provide some procedural guidance for the development of neural network as well as the innovation of other technologies.
出处 《计算机技术与发展》 2007年第3期51-54,共4页 Computer Technology and Development
基金 国家自然科学基金资助项目(60003019)
关键词 创新计算动力学 创新计算定律 联想组合 神经网络 dynamics for computational creativity laws of computational creativity reminding and combining neural network
  • 相关文献

参考文献15

  • 1Wen Guihua,Shadbolt R N.Fundamental Laws of Dynamics for Computational Creativity[C]∥Proceedings of Computational Creativity Workshop at Nineteenth International Joint Conference on Artificial Intelligence (IJCAI05).Edinburgh,UK:[s.n.],2005.
  • 2文贵华 郑启伦 丁月华.创新计算的旋转动力学理论框架[A]..第九届全国人工智能学术会议论文集[C].北京,2001.145—148.
  • 3文贵华,丁月华,张宇.基于对立的联想计算[J].计算机研究与发展,1999,36(8):982-987. 被引量:15
  • 4文贵华,郑启伦,丁月华.一种基于信息域关联的创造性联想算法CRA[J].模式识别与人工智能,1999,12(4):393-401. 被引量:12
  • 5Takagi H.Fusion.Technology of Neural Networks and Fuzzy Systems:A Chronicled Progression from the Laboratory to Our Daily Lives[J].Applied Mathematics and Computer Science,2000,10 (4):647-673.
  • 6李孝安,康继昌,蔡小斌,戴冠中.进化神经网络研究进展[J].控制与决策,1998,13(6):617-623. 被引量:13
  • 7张东波,王耀南,易灵芝.粗集神经网络及其在智能信息处理领域的应用[J].控制与决策,2005,20(2):121-126. 被引量:22
  • 8董军,胡上序.混沌神经网络研究进展与展望[J].信息与控制,1997,26(5):360-368. 被引量:50
  • 9Zhang Q H,Benveniste A.Wavelet networks[J].IEEE Transactions on Neural Networks,1992,3 (6):889-898.
  • 10Haider S,Abbas A,Zaidi A K.A multi-technique approach for user identification through keystroke dynamics[C]∥IEEE International Conference on Systems,Man,and Cybernetics.Nashville,Tennessee,USA:[s.n.],2000:1336-1341.

二级参考文献46

共引文献244

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部