mirror of
https://gitee.com/TheAlgorithms/Statistical-Learning-Method_Code.git
synced 2025-01-04 01:42:21 +08:00
49 lines
2.9 KiB
Markdown
49 lines
2.9 KiB
Markdown
前言
|
||
====
|
||
|
||
力求每行代码都有注释,重要部分注明公式来源。具体会追求下方这样的代码,学习者可以照着公式看程序,让代码有据可查。
|
||
|
||
![image](https://github.com/Dod-o/Statistical-Learning-Method_Code/blob/master/CodePic.png)
|
||
|
||
|
||
如果时间充沛的话,可能会试着给每一章写一篇博客。先放个博客链接吧:[传送门](http://www.pkudodo.com/)。
|
||
|
||
##### 注:其中Mnist数据集已转换为csv格式,由于体积为107M超过限制,改为压缩包形式。下载后务必先将Mnist文件内压缩包直接解压。
|
||
|
||
|
||
|
||
实现
|
||
======
|
||
|
||
### 第二章 感知机:
|
||
博客:[统计学习方法|感知机原理剖析及实现](http://www.pkudodo.com/2018/11/18/1-4/)
|
||
实现:[perceptron/perceptron_dichotomy.py](https://github.com/Dod-o/Statistical-Learning-Method_Code/blob/master/perceptron/perceptron_dichotomy.py)
|
||
|
||
### 第三章 K近邻:
|
||
博客:[统计学习方法|K近邻原理剖析及实现](http://www.pkudodo.com/2018/11/19/1-2/)
|
||
实现:[KNN/KNN.py](https://github.com/Dod-o/Statistical-Learning-Method_Code/blob/master/KNN/KNN.py)
|
||
|
||
### 第四章 朴素贝叶斯:
|
||
博客:[统计学习方法|朴素贝叶斯原理剖析及实现](http://www.pkudodo.com/2018/11/21/1-3/)
|
||
实现:[NaiveBayes/NaiveBayes.py](https://github.com/Dod-o/Statistical-Learning-Method_Code/blob/master/NaiveBayes/NaiveBayes.py)
|
||
|
||
### 第五章 决策树:
|
||
博客:[统计学习方法|决策树原理剖析及实现](http://www.pkudodo.com/2018/11/30/1-5/)
|
||
实现:[DecisionTree/DecisionTree.py](https://github.com/Dod-o/Statistical-Learning-Method_Code/blob/master/DecisionTree/DecisionTree.py)
|
||
|
||
### 第六章 逻辑斯蒂回归与最大熵模型:
|
||
博客:逻辑斯蒂回归:[统计学习方法|逻辑斯蒂原理剖析及实现](http://www.pkudodo.com/2018/12/03/1-6/)
|
||
博客:最大熵:[统计学习方法|最大熵原理剖析及实现](http://www.pkudodo.com/2018/12/05/1-7/)
|
||
|
||
实现:逻辑斯蒂回归:[Logistic_and_maximum_entropy_models/logisticRegression.py](https://github.com/Dod-o/Statistical-Learning-Method_Code/blob/master/Logistic_and_maximum_entropy_models/logisticRegression.py)
|
||
实现:最大熵:[Logistic_and_maximum_entropy_models/maxEntropy.py](https://github.com/Dod-o/Statistical-Learning-Method_Code/blob/master/Logistic_and_maximum_entropy_models/maxEntropy.py)
|
||
|
||
### 第七章 支持向量机:
|
||
实现:[SVM/SVM.py](https://github.com/Dod-o/Statistical-Learning-Method_Code/blob/master/SVM/SVM.py)
|
||
|
||
### 第八章 提升方法:
|
||
实现:[AdaBoost/AdaBoost.py](https://github.com/Dod-o/Statistical-Learning-Method_Code/blob/master/AdaBoost/AdaBoost.py)
|
||
|
||
### 第九章 EM算法及其推广:
|
||
实现:[EM/EM.py](https://github.com/Dod-o/Statistical-Learning-Method_Code/blob/master/EM/EM.py)
|