On a Weight Limit Approach for Enhancing Fault Tolerance of Feedforward Neural Networks
スポンサーリンク
概要
- 論文の詳細を見る
To enhance fault tolerance ability of the feedforward neural networks (NNs for short) implemented in hardware, we discuss the learning algorithm that converges without adding extra neurons and a large amount of extra learning time and cycles. Our algorithm modified from the standard backpropagation algorithm (SBPA for short) limits synaptic weights of neurons in range during learning phase. The upper and lower bounds of the weights are calculated according to the average and standard deviation of them. Then our algorithm reupdates any weight beyond the calculated range to the upper or lower bound. Since the above enables us to decrease the standard deviation of the weights, it is useful in enhancing fault tolerance. We apply NNs trained with other algorithms and our one to a character recognition problem. It is shown that our one is superior to other ones in reliability, extra learning time and/or extra learning cycles. Besides we clarify that our algorithm never degrades the generalization ability of Ns although it coerces the weights within the calculated range.
- 社団法人電子情報通信学会の論文
- 2000-11-25
著者
-
HATA Yutaka
Graduate School of Engineering, University of Hyogo
-
Hata Y
Graduate School Of Engineering University Of Hyogo
-
Hata Yutaka
The Authors Are With Department Of Computer Engineering Himeji Institute Of Technology : The Author
-
KAMIURA Naotake
The authors are with the Department of Computer Engineering, Himeji Institute of Technology
-
MATSUI Nobuyuki
The authors are with the Department of Computer Engineering, Himeji Institute of Technology
-
ISOKAWA Teijiro
The authors are with the Department of Computer Engineering, Himeji Institute of Technology
-
YAMATO Kazuharu
The author is with the Department of Economics & Information Science, Hyogo University
-
Kamiura N
Graduate School Of Engineering University Of Hyogo
-
Kamiura Naotake
The Authors Are With Department Of Computer Engineering Himeji Institute Of Technology
-
ISOKAWA Teijiro
Graduate School of Engineering, University of Hyogo
-
Matsui N
Graduate School Of Engineering University Of Hyogo
-
Isokawa Teijiro
Graduate School Of Engineering University Of Hyogo
-
Yamato K
The Author Is With The Department Of Economics & Information Science Hyogo University
-
Hata Y
Himeji Institute Of Technology Japan
-
Yamato Kazuharu
The Author Is With The Department Of Economics & Information Science Hyogo University
関連論文
- Cerebral cortex segmentation with adaptive fuzzy spatial modeling in 3.0T IR-FSPGR MR images (特集 医用システム)
- An Ultrasonic and Air Pressure Sensing System for Detection of Behavior before Getting out of Bed Aided by Fuzzy Theory
- Fuzzy ultrasonic imaging system for visualizing brain surface and skull considering refraction (特集 医用システム)
- Ultrasonography System Aided by Fuzzy Logic for Identifying Implant Position in Bone(Computation and Computational Models)
- A New Ultrasonic Oscillosensor and Its Application in Biological Information Measurement System Aided by Fuzzy Theory(Biological Engineering)
- Computer-Aided Diagnosis of Intracranial Aneurysms in MRA Images with Case-Based Reasoning(Biological Engineering)
- Unconstrained Evaluation System for Heart Rate Using Ultrasonic Vibrograph
- Automated Extraction System of Embedded Tubes from Pulse Radar Image Based on Fuzzy Expert System(Systems and Control)
- D-16-10 An Improved Small Region Growing Method for Segmenting 3-D Liver region from Multidetector CT Images
- Ultrasonic Nondestructive Evaluation for Embedded Objects in Concrete Aided by Fuzzy Logic(Regular Section)
- A Learning Algorithm with Activation Function Manipulation for Fault Tolerant Neural Networks
- On a Weight Limit Approach for Enhancing Fault Tolerance of Feedforward Neural Networks
- Design of Multiple-Valued Programmable Logic Array with Unary Function Generators
- Design and Fault Masking of Two-Level Cellular Arrays on Multiple-Valued Logic
- On Ternary Cellular Arrays Designed from Ternary Decision Diagrams
- Design of Repairable Cellular Arrays on Multiple-Valued Logic
- On a Class of Multiple-Valued Logic Functions with Truncated Sum, Differential Product and Not Operations
- Design of a Multiple-Valued Cellular Array (Special Issue on Multiple-Valued Integrated Circuits)
- Cortical Dysplasia Detection Method with Support Vector Machine in Pediatric Brain MR Images(International Forum on Medical Imaging in Asia 2009 (IFMIA 2009))
- A New Sulcus Extraction Algorithm Using MAGNET Principle
- Classification for data of hematopoietic tumor patients with fast block-matching-based self-organizing map learning in dynamic environments (特集 医用システム)
- Self-Organizing Map Based Data Detection of Hematopoietic Tumors(Nonlinear Problems)
- Self-Organizing Map Based on Block Learning(Nonlinear Problems)
- A Self-Organizing Map Approach for Detecting Confusion between Blood Samples
- On Fault-Tolerant Fuzzy Controllers Based on Shifting Fuzzy Variables