摘要
本文提出了一个综合多种神经网络理论的学习算法FTART(fieldtheory—basedadaptiveresonancetheory),它将ART(adaptiveresonancetheory)算法、FieldTheory和ARTMAP等算法的优点有机结合,并以样本在实例空间出现的概率为启发信息修改分类.FTART由于采用了不同于其它算法的冲突解决和动态扩大分类区域的方法,因此取得了较好的效果.本文还对实现FTART算法的结果进行了验证.
his paper proposes a neural network learning algorithm FTART(field theory-based adaptive resonance theory)that combines many neural network theories.It is based on the main idea of ART(adaptive resonance theory) and makes use of many merits of Field Theory and ARTMAP,etc.,and corrects the classification regarding the supposed possibility of examples in the instance space.FTART gains some goodness by employing a special conflict resolution process and dynamically expanding the classification area. Some benchmark test results are also given.
出处
《软件学报》
EI
CSCD
北大核心
1996年第8期458-465,共8页
Journal of Software
基金
国家自然科学基金
关键词
神经网络
自适应谐振算法
算法
Neural network
adaptive resonance theory
field theory.