机器学习入门专栏笔记对应jupyter notebook以及封装的各种算法

上传者: Engineering_ | 上传时间: 2023-03-24 18:57:22 | 文件大小: 20MB | 文件类型: ZIP
机器学习入门专栏笔记对应jupyter notebook以及封装的各种算法。 包含:jupyter notebook、numpy、matplotlib的使用以及常见函数,KNN算法,线性回归算法,梯度下降算法(随机梯度下降算法),PCA与梯度上升法,多项式回归与模型泛化,逻辑回归,评价分类,SVM,决策树,集成学习与随机森林等机器学习的基础算法。 笔记还在更新中 个人笔记,如有错误,感谢指出!

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