Mutual Learning for Pattern Recognition.

2023 IEEE International Conference on Systems, Man, and Cybernetics (SMC)(2023)

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摘要
Mutual learning algorithm can be an efficient mechanism for improving the machine learning and neural network efficiency in a multi-agent system. Specifically, in many cases, where the system cannot be trained using a big training dataset, the data exchange in teacher-student network system can lead to efficient learning. Usually, in mutual learning algorithms, a big network plays the role of a static teacher and passes the data to smaller networks, known as student networks, to improve the efficiency of the latter. In this paper, we will show that two small networks can dynamically play the changing roles of teacher and student to share their knowledge and hence, the efficiency of both the networks improve simultaneously. We demonstrate the concept and the proposed mutual learning algorithm using convolutional neural networks (CNNs) to recognize the benchmark Modified National Institute of Standards and Technology (MNIST) hand-writing dataset.
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关键词
Mutual Learning,Neural Network,Machine Learning,Learning Algorithms,Training Dataset,Convolutional Neural Network,Role Of Education,Multi-agent Systems,Big Datasets,Student Network,Training Set,Training Data,Support Vector Machine,Artificial Neural Network,Test Dataset,Number Of Data Points,Hyperplane,High Level Of Accuracy,Previous Training,Linear Support Vector Machine,Small Training Set,Rest Of The Dataset,Non-linear Support Vector Machine,Maximum Accuracy,Nonlinear Kernel,Teacher Network,Linear Kernel,Heterogeneous Agents,Handwritten Digits
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