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Machine_learning_practice

Machine_learning_practice

Python 手写代码实现机器学习的相关代码:

预计实现:

1、naive bayes(朴素贝叶斯算法-分类) (已完成)

2、梯度下降法-一元线性回归 (已完成)

3、梯度下降法-多元线性回归(已完成)

4、梯度下降法-逻辑回归(已完成)

5、梯度下降法-非线性逻辑回归(已完成)

6、聚类算法-含tensorflow实现(已完成)

7、KNN算法(已完成)

8、SVM算法实践

9、决策树实践

10、随机森林实践

11、adaboost实践

12、GDBT实践

13、XGBoost实践

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