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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
1

推理類神經網路及其應用 / The Reasoning Neural Network and It's Applications

徐志鈞, Hsu Chih Chun Unknown Date (has links)
大部的類神經網路均為解決特定問題而設計,並非真正去模擬人腦的功能 ,在本論文中介紹一個模擬人類學習方式的類神經網路,稱為推理類神經 網路(The Reasoning Neural Network),其主要兩個組成為強記( cram -ming)及推理(reasoning)部份,透過彈性的組合這兩個部份可 使類神經網路具有類似人類的學習程序。在本論文中介紹其中一個學習程 序並用四個實驗來評估推理類神經網路的績效,從實結果得知,推理類神 經網路能以合理的隱藏節點數(hidden nodes)達到學習的目標,並建立 一個網路內部表示方式(internal representation),及具有好的推理 能力(g eneralization ability)。 / Most of artification Neural Networks are designed to resolve spe -cific problems, rather than to model the brain. The Reasoning N -eural Network (RNN) that imitates the way of human learning is presented here. Two key components of RNN are the cramming and t -he reasoning. These components coulds be arranged flexibly to a -chieve the human-like learning procedure. One edition of the RNN used in experiments is introduces, and four different proble -ms are used to evaluate the RNN's performance. From simulation results, the RNN accomplishes the goal of learning with a reason -able number of hidden nodes, and evolves a good internal repres -entation and a generalization ability.

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