Fujipress Home | Search | About FINDER

Paper:
Language: English:

Computing Higher Order Derivatives in Universal Learning Networks


Kotaro Hirasawa, Jinglu Hu, Masanao Ohbayashi, and Junichi Murata


Department of Electrical and Electronic Systems Engineering, Kyushu University. Hakozaki, Fukuoka 812-81, Japan


Received: October 27, 1997

Accepted: March 3, 1998


Keywords: learning network, neural network, higher order derivative, backward propagation, forward propagation

Journal ref: Journal of Advanced Computational Intelligence and Intelligent Informatics, Vol.2, No.2 pp. 47-53, 1998

Abstract



This paper discusses higher order derivative computing for universal learning networks that form a super set of all kinds of neural networks. Two computing algorithms, backward and forward propagation, are proposed. Using a technique called "local description" expresses the proposed algorithms very simply. Numerical simulations demonstrate the usefulness of higher order derivatives in neural network training.
preview Preview (PDF)  full text Full Text (PDF 3829KB)

Reference

[Notice]
* "Preview" is the first 2 pages of the article. You don't need the registration.
* To read the PDF file you will then need to download and install the Adobe Reader.
Adobe Reader is free and available for download here:

adobe reader

Terms and Conditions | Privacy Policy | Recruit | Advertising Information | Contact Us