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个人信息Personal Information
副教授
博士生导师
硕士生导师
性别:男
毕业院校:大连理工大学
学位:博士
所在单位:软件学院、国际信息与软件学院
学科:计算机应用技术
办公地点:大连理工大学软件学院综合楼225
联系方式:david@dlut.edu.cn
电子邮箱:david@dlut.edu.cn
Cross-Entropy Pruning for Compressing Convolutional Neural Networks
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论文类型:期刊论文
发表时间:2018-11-01
发表刊物:NEURAL COMPUTATION
收录刊物:PubMed、SCIE、Scopus
卷号:30
期号:11
页面范围:3128-3149
ISSN号:0899-7667
关键字:Digital storage; Errors; Neural networks; Object detection, Convolutional neural network; Cross entropy; Data set; Output neurons; Sparse modeling; Storage costs, Entropy
摘要:The success of CNNs is accompanied by deep models and heavy storage costs. For compressing CNNs, we propose an efficient and robust pruning approach, cross-entropy pruning (CEP). Given a trained CNN model, connections were divided into groups in a group-wise way according to their corresponding output neurons. All connections with their cross-entropy errors below a grouping threshold were then removed. A sparse model was obtained and the number of parameters in the baseline model significantly reduced. This letter also presents a highest cross-entropy pruning (HCEP) method that keeps a small portion of weights with the highest CEP. This method further improves the accuracy of CEP. To validate CEP, we conducted the experiments on low redundant networks that are hard to compress. For the MNIST data set, CEP achieves an 0.08% accuracy drop required by LeNet-5 benchmark with only 16% of original parameters. Our proposed CEP also reduces approximately 75% of the storage cost of AlexNet on the ILSVRC 2012 data set, increasing the top-1 errorby only 0.4% and top-5 error by only 0.2%. Compared with three existing methods on LeNet-5, our proposed CEP and HCEP perform significantly better than the existing methods in terms of the accuracy and stability. Some computer vision tasks on CNNs such as object detection and style transfer can be computed in a high-performance way using our CEP and HCEP strategies.