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mnist-classification's Introduction

MNIST Classification

PCA, LDA, SVM classification on MNIST dataset

Ruoteng Li
11.11.2016

0. Installation and Dataset

  • In order to run this script, please make sure MNIST dataset is available at mnist folder. You may want to go MNIST Database to download:
  • Please install MATLAB 2014b or later version

1. Run Project Scripts

  • Principal Component Analysis (PCA) - Run Command below (in project root directory)
>> PCA
  • Linear Discriminative Analysis (LDA) - Run Command below(in project root directory)
>> LDA
  • Support Vector Machine (SVM) - Run Command below (in project root directory)
>> SVM

2. Description of directories

- liblinear-2.1 : linear SVM package
- libSVM-3.21   : Non linear SVM package
- mnist         : original MNIST data set
- utils         : private functions used in PCA and LDA

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