drawcodeboy / first_ML_DL

<혼자 공부하는 머신러닝 + 딥러닝>을 통해 공부한 실습 자료 리포지토리입니다.

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first_ML_DL

<혼자 공부하는 머신러닝 + 딥러닝>을 통해 공부한 실습 자료 리포지토리입니다.

  • 9.25 1회독

File List

Machine Learning

  • 01_3: Binary Classfication using KNN
  • 02_1: Train Set and Test Set Split
  • 02_2: Data Preprocessing: Scaling
  • 03_1: Regression using KNN
  • 03_2: Linear Regression
  • 03_3: Feature Engineering and Regularization
  • 04_1: Multiple Regression, Logistic Regression (Sigmoid & Softmax)
  • 04_2: Stochastic Gradient Descent, Loss Function, Epoch
  • 05_1: Decision Tree (+ Gini Impurity)
  • 05_2: Cross Validation & Grid Search
  • 05_3: Tree Ensemble (Random Forest, Extra Tree, Gradient Boosting, Histogram-based Gradient Boosting)
  • 06_1: Unsupervised Learning: Clustering
  • 06_2: KMeans (+ Elbow using Inertia)
  • 06_3: PCA(Principal Components Analysis), Dimension Reduction

Deep Learning

  • 07_1: ANN, Structure of ANN (Tensorflow and Keras)
  • 07_2: DNN, relu (activation function for Image Classification), Optimizer(RMSprop, Adam, .. etc)
  • 07_3: ANN Model Training (history, validation set loss, dropout, callback(ModelCheckpoint, EarlyStopping))
  • 08_2: CNN Modeling (Filter, Kernel, Padding, Stride, Pooling)
  • 08_3: CNN Visualization (Filter, Feature Map)
  • 09_2: RNN Modeling (One-hot Encoding, Word Embedding)
  • 09_3: RNN Modeling 2 (LSTM, GRU, Dropout, 2-RNN)

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<혼자 공부하는 머신러닝 + 딥러닝>을 통해 공부한 실습 자료 리포지토리입니다.


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