/DS_explore

Primary LanguageJupyter NotebookMIT LicenseMIT

ML Threasury

Tasks: focuse on exploring new algorithms and their applications, pay attention to the portability and interpretability of code, and do not need to package in advance

format of submitting:

  • images file: store pictures obtained from code running or pictures for external loading
  • code: with the suffix of ipynb or py, ipynb is highly recommended
  • readme.txt: author and the functions of codes are needed

Current Codes:

  • Linear and Polylinear Regression
  • Dimensionality Reduction
  • Ensemble Learning
  • Clustering (KMeans、AP、GaussianMixture)
  • Stratified Sampling
  • Deep Neutral Network
  • Support Vector Machine

任务:以探索新算法及其应用为主,注重代码的可移植性和可解释性,不需要提前封装

上传格式

  • images文件夹:存放代码运行获得的图片或用于外部加载的图片
  • 代码:ipynb or py格式,建议以ipynb为主
  • readme.txt:姓名/代码功能

目前已有模型代码

  • 线性回归+多项式回归
  • 降维
  • 集成学习
  • 聚类(KMeans、AP、GaussianMixture)
  • 分层抽样
  • 神经网络