A Reproducible Workflow for Structural and Functional Connectome Ensemble Learning
-
Updated
Feb 1, 2024 - Python
A Reproducible Workflow for Structural and Functional Connectome Ensemble Learning
hgboost is a python package for hyper-parameter optimization for xgboost, catboost or lightboost using cross-validation, and evaluating the results on an independent validation set. hgboost can be applied for classification and regression tasks.
Aims at attributing the big-five personality traits to authors of essays by analyzing their works.
Cross Validation, Grid Search and Random Search for TensorFlow 2 Datasets
A lightweight tool to manage and track your large scale machine leaning experiments
Using supervised learning on Lending Club loan data to predict default and / or bad loans
Testing several hyperparameter optimization techniques.
Self-assigned project for visual analytics class at Aarhus University, 2021
Prediction of summary source in Python.
Pattern Recognition, NYCU. Homework 4
Reducción de tiempo de ejecución de los algoritmos de Machine Learning con búsqueda de parámetros en GridSearch.
Prediction of forest cover type in Python.
Combine grid search with early stopping via cross validation
Deep Q Learning (DQN) neural net to optimize a lunar lander control policy using OpenAI Gym environment.
Breast Cancer Wisconsin Dataset Classifier with Scikit-learn and Streamlit
ML model optimization algorithms such as random search, grid search, and Bayesian optimization. are illlustrated with codes.
Applications/Files created in my internship at the Institute for Artificial Intelligence in Bremen (http://ai.uni-bremen.de/).
Backpropagation and automatic differentiation, and grid search from scratch.
A set of functions to optimize machine learning models
A simple python interface for running multiple parallel instances of a python program (e.g. gridsearch).
Add a description, image, and links to the gridsearch topic page so that developers can more easily learn about it.
To associate your repository with the gridsearch topic, visit your repo's landing page and select "manage topics."