The methodology used to construct tree structured rules is the focus of this monograph. Unlike many other statistical procedures, which moved from pencil and paper to calculators, this text's use of trees was unthinkable before computers. Both the practical and theoretical sides have been developed in the authors' study of tree methods. Classification and Regression Trees reflects these two sides, covering the use of trees as a data analysis method, and in a more mathematical framework, proving some of their fundamental properties.
2021-03-05 11:42:41 7.39MB 决策树 机器学习
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CNN_classification_feature_extraction 该存储库是pytorch中用于分类和特征提取的CNN的实现。 Pytorch预训练的模型已被用于其解释。 该代码支持数据并行性和多GPU,提早停止和类权重。 此外,您可以选择加载预训练的权重(在ImageNet数据集上进行训练)或使用随机权重从头开始训练。 预训练的模型结构在最后一层有1000个节点。 此代码将所有模型的最后一层修改为可与每个数据集兼容。 可以使用以下模型: 'resnet18', 'resnet34', 'resnet50', 'resnet101', 'resnet152', 'resnext50_32x4d', 'resnext101_32x8d', 'wide_resnet50_2', 'wide_resnet101_2', 'vgg11', 'vgg11_bn', 'vgg13'
2021-03-05 02:48:47 19KB Python
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CIFAR10-img-classification-tensorflow-master.zip
2021-03-04 20:04:23 512KB tensorflow
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推荐阅读: cvpr2021 / cvpr2020 / cvpr2019 / cvpr2018 / cvpr2017(论文/代码/项目/论文阅读) 论文解读摘要: ://bbs.cvmart.net/articles/3031论文分类汇总: : 2000〜2020年历届CVPR最佳论文,解释等汇总: ://bbs.cvmart.net/topics/665/CVPR-Best-Paper 目录 密码:t69g 下载链接:链接: ://pan.baidu.com/s/1dhXrWFHeKeJ1kFsKBxQzVg密码:f53l 3/28晚点云分割分享重构 4月18日晚目标检测分享重组 5月9日晚单目标跟踪分享重组 [5月30日晚人脸识别分享分享 : 6月13日晚三维多人多视角姿态识别共享分享 密码:72r2 CVPR 2017全部论文下载百度云链接: : 密码:7j
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Image Classification Based on Saliency Coding with Category-specific Codebooks
2021-02-22 14:05:50 1007KB 研究论文
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This paper presents a Crotch Ensemble classification model for high dimensional data. A Crotch Ensemble is obtained from a decision cluster tree built by calling a clustering algorithm recursively. A crotch is an inner node of the tree together with its direct children. If the children of a crotch h
2021-02-20 20:09:19 640KB 研究论文
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图像分类 使用python的Mini_project
2021-02-18 15:06:56 11KB JupyterNotebook
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Handwriting_Digits_Classification:使用Tensorflow和keras进行手写数字分类,训练数据集的准确性为99%,测试数据集的准确性为91%
2021-02-18 11:05:55 6KB JupyterNotebook
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机器学习分类模型 Introduction-to-ML-Classification-Models-using-scikit-learn-master.zip
2021-02-15 15:09:08 15.3MB 机器学习
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音频分割技术
2021-02-14 09:04:06 814KB 音频分割
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