首页> 外文会议>Pacific Rim International Conference on Artificial Intelligence >A Method on Improvement of the Online Mode Error Backpropagation Algorithm for Pattern Recognition
【24h】

A Method on Improvement of the Online Mode Error Backpropagation Algorithm for Pattern Recognition

机译:一种改进在线模式误差估计误差算法的方法

获取原文

摘要

Having a variety of good characteristics against other pattern recognition techniques, the multilayer perceptron (MLP) has been used in many applications. But, it is known that the error backpropagation (EBP) algorithm that the MLP uses in learning has the defect that requires relatively long learning time. In order to increase learning speed it is very effective to use the online-based learning methods, which update the weight vector of the MLP pattern by pattern, because the learning data for pattern recognition contain high redundancy. A typical online EBP algorithm applies the fixed learning rate for each update of the weight vector. Though a large amount of speedup with the online EBP can be obtained just by choosing the appropriate fixed rate, fixing the rate has the inefficiency that doesn't fully utilize the instant updates of the online mode. And, although the patterns come to be divided into the learned and the unlearned during learning process and the learned have no need to go through the computation for learning, the existing online EBP uniformly computes the whole patterns during an epoch. To remedy these inefficiencies, this paper proposes a Changing rate and Omitting patterns in Instant Learning (COIL) method to apply the appropriate rate for each pattern and put only the unlearned into learning. To verify the efficiency of the COIL, experimentations are conducted for speaker verification and speech recognition as the applications of pattern recognition and the results are presented.
机译:对其他模式识别技术具有各种良好的特性,多层Perceptron(MLP)已用于许多应用中。但是,众所周知,MLP在学习中使用的错误逆产(EBP)算法具有需要相对较长的学习时间的缺陷。为了提高学习速度,使用基于在线的学习方法是非常有效的,该方法通过模式更新MLP模式的权重向量,因为用于模式识别的学习数据包含高冗余。典型的在线EBP算法适用于权重向量的每个更新的固定学习率。虽然与在线EBP大量加速的可以只通过选择适当的固定利率获得,固定利率具有不充分利用联机模式的即时更新的低效率。并且,尽管这些模式分为学习和学习过程中未经读数的信息,但学到的没有必要通过计算来学习,但现有的在线EBP在时代期间统一地计算整个模式。为了解决这些效率低下,本文提出了即时学习(线圈)方法中的变化率和省略模式,以适应每个模式的适当速率,并仅放入学习。为了验证线圈的效率,为扬声器验证和语音识别进行实验,作为模式识别的应用和结果。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号