结合DBM(深度置信网络)与ELM(极限学习机)改进DBN-ELM模型-matlab-python实现完整源码.7z

上传者: DeepLearning_ | 上传时间: 2022-12-02 09:29:38 | 文件大小: 7.34MB | 文件类型: 7Z
1、结合DBN和ELM的改进DBN-ELM模型 2、文件matlab:包含改进算法的matlab实现 3、mnist: 包含ELM、DBN、DBN-ELM算法在mnist数据集上的表现 4、Skin_NonSkin: 包含ELM、DBN、DBN-ELM算法在Skin_NonSkin数据集上的表现 5、文件python:包含改进算法的python实现 运行环境MATLAB2018b及以上

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