Skip to content

Yuya-Furusawa/Self-Study

Repository files navigation

Self-Study

This repository is for my self-study.

Contents

machine-learning

  • Machine Learning(Python)
    • Chapter2 (Classification Problem)
    • Chapter3 (Using scikit-learn)
    • Chapter4 (Data Preprocessing)
    • Chapter5 (Dimensionality Reduction)
    • Chapter6 (Model Evaluation and Hyperparameter Tuning)
    • Chapter7 (Ensemble Method)
    • Chapter10 (Regression Analysis)
    • Chapter11 (Clustering Analysis)
    • Chapter12 (Multilayer Artificial Neural Network)
    • Chapter13 (Basics of TensorFlow)
    • Chapter14 (Mechanism of TensorFlow)

deep-learning

  • Deep Learning(Python)
    • Chapter3 (Neural Network)
    • Chapter4
    • Chapter5
    • Chapter6
    • Chapter7
  • GAN
  • Keras
  • CNN with Keras

Industrial-Organization

  • Industrial Organization(Python, R, Matlab)
    • Codes which are used in Grad Empirical IO class (2019, S1S2)

oyamasemi

  • wald_friedman
  • uncertainty_traps
  • repeated game

endo_net

  • My master's thesis
    • Supermodularity and Equilibrium in Games with Peer Effects and Endogenous Network Formation

Others

  • Notes on Julia
    • Basics(Studying_Julia.ipynb)
    • Matrix(Julia_matrix.ipynb)
  • Text mining(aozora.py, abe_network.py)
  • Network Simulation(nx_ba_1.py)
  • Algorithm for "Coordination on Networks" (network_algorithm.ipynb)
  • Algorithm for "Financial Networks and Contagion" (Financial_Network.ipynb)
  • Note on LMSR(CostFunction.ipynb)

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published