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A small example package

Project description

Auto_ML_C 0.0.8

Illustrate:

​ 这是崔连山和小伙伴们的机器学习拓展包,代有浓厚的社会主义开源分享精神,极富创造力和战斗力。在这里让我们为他们鼓掌 :clinking_glasses:

Spend

测试集数据位置:{Example}

如果全流程,源码的速度是 Fast_Example.ipynb是 38s

函数【有感知机版本】 耗时 函数【无感知机版本】 耗时
以下数据在i9-9750H 12核上测试
binary_ROC(X,Y,5,) 566.51 也就是去掉NuSVC 52.63
auto_model(X,Y,5) 556.12 52.60

Request_install

可以参考学习当前目录下的环境备份:Auto_ML_C.yaml

主要是涉及到的软件如下:

Package 最低版本——待检测
python=3.8.10
seaborn=0.11.2
pandas=1.3.3
matplotlib=3.4.2
numpy=1.20.3
py-xgboost=1.4.0

Content:

​ 该包是基于Sklearn,imblance等机器学习拓展包之上的Package,共计划分为两个部分,

  • 分类任务

    1. binary_classfication.py

      内部可用函数如下

      函数名 功能 返回值
      cal_add_1(num1,num2):wave: 简单的欢迎函数 num1,num2
      LogisticRegressionCV_mdoel(X, Y,cv)
      SGDClassifier_model(X,Y,cv)
      LinearDiscriminantAnalysis_model(X, Y,cv)
      LinearSVC_model(X, Y,cv)
      SVC_model(X, Y,cv)
      NuSVC_model(X,Y,cv)
      DecisionTreeClassifier_model(X,Y,cv)
      AdaBoostClassifier_model(X,Y,cv)
      BaggingClassifier_model(X, Y,cv)
      GradientBoostingClassifier_model(X, Y,cv)
      RandomForestClassifier_model(X, Y,cv)
      xgboost_model(X, Y,cv)
      KNeighborsClassifier_model(X, Y,cv)
      NearestNeighbors_model(X, Y,cv)
      BernoulliNB_model(X, Y,cv)
      GaussianNB_model(X,Y,cv)
      下面是新增函数
      binary_ROC(X,Y,k,fig_name) 绘制标量超参数搜索下最佳的ROC fig
      auto_model(X, Y, k) 模型的标量超参数搜索结果 Auc_data, Acc_data,
      Recall_data, Precision_data
      estimator_violion(df1,df2,fig_name) 为auto_model结果的Dataframe绘制小提琴图 fig
    2. binary_classfication_ws.py

      这是为了速度考虑,舍弃占用90%时间的NuSVC函数的函数

    3. 多分类函数

      等待

    4. 数据增强函数

    5. waited

How to Use

Install

:warning: MacOS not pass

# Method 1
# Create a new environment, here is conda as an example
conda create --name Auto_ML_C python=3.8.10

# Activate the newly created environment
conda activate Auto_ML_C

# Installation package
pip install Auto_ML_C==0.0.8

# Suggest the pipeline of Jupyter notebook [optional, recommended]
conda install jupyter notebook
conda install ipykernel 
python -m ipykernel install --user --name Auto_ML_C --display-name   "Auto_ML_C"
# Install Sklearn 0.6.  this will fixed next version
conda install -c conda-forge sklearn-contrib-lightning
conda install xgboost
[之后完善可以看到这里依赖项比较多
  _py-xgboost-mutex  anaconda/pkgs/main/osx-64::_py-xgboost-mutex-2.0-cpu_0
  libxgboost         anaconda/pkgs/main/osx-64::libxgboost-1.3.3-h23ab428_0
  py-xgboost         anaconda/pkgs/main/osx-64::py-xgboost-1.3.3-py38hecd8cb5_0
  xgboost            anaconda/pkgs/main/osx-64::xgboost-1.3.3-py38hecd8cb5_0
]

brew install scipy

# Method2
# Use the yaml environment file on the GitHub homepage to directly copy the current environment
conda env create -n Auto_ML_C -f Auto_ML_C.yaml

# Activate the newly created environment
conda activate 

# Suggest the pipeline of Jupyter notebook [optional, recommended]
conda install jupyter notebook
conda install ipykernel 
python -m ipykernel install --user --name Auto_ML_C --display-name   "Auto_ML_C"

Binary Classication

# Here is an example of the function binary_classfication_ws  
# 这里以函数binary_classfication_ws举例
# if you use macOS and can't load xgboost ,  please use function binary_classfication_ws_for_mac,This function abandons xgboost which is more troublesome for mac

ConTact

VX:Cuizy13390906310_ic

QQ:1776228595

E-mail:1776228595@qq.com

GitHub:地址待填写

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