Repository for the Brainhack School 2020 team working with fMRI and ABIDE data to train machine learning models.
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Updated
Oct 10, 2024 - Jupyter Notebook
Repository for the Brainhack School 2020 team working with fMRI and ABIDE data to train machine learning models.
This toolbox offers 8 machine learning methods including KNN, SVM, DA, DT, and etc., which are simpler and easy to implement.
This project predicts tuition rates for U.S. public and private universities using linear regression with leave-one-out cross-validation. Helping to assess if a college market price, maximizing ROI and minimizing student loan debt.
This toolbox offers 6 machine learning methods including KNN, SVM, LDA, DT, and etc., which are simpler and easy to implement.
This project provides a tutorial on performing leave-one-out cross-validation (LOO-CV) using the Pareto-smoothed importance sampling (PSIS) approximation. The tutorial leverages the arviz package and applies these techniques to a synthetic dataset from Welbanks et al. 2023, focusing on exoplanet atmospheric analysis.
This toolbox offers 7 machine learning methods for regression problems.
In this project I have extarcted 30 time and frequancy features from EEG signals (of left hand and right hand moving) in an espicific time window. Then using PCA i have decreased the features dimension to 10. Then I have quarried different methdos of ML: KNN(1,3,5,6), SVM(Linear kernel, Gaussian kernel), LDA, Naive bayes on different time windows.
The dataset contains information regarding residential properties which were collected by the US Census Service, the period 2006 to 2010.
1. train_test_split 2.K_fold 3.LeaveoneOut 4.Cross Validation Score 5.Logistic Regression
Model-Validation-Methods
This project aims to understand and implement all the cross validation techniques used in Machine Learning.
Comprehensive Machine Learning Techniques: Metrics, Classifiers, and Evaluation
Learning Machine Learning Through Data
Methodology used to classify breast cancer histopathological images as part of a datachallenge organised at Telecom Paris
The purpose of this project is to analyze some winning factors for a NBA team and predict their win rate using multiple linear regression. Different cross-validation methods were used to evaluate the model's prediction ability.
Churn prediction means detecting which customers are likely to leave a service or to cancel a subscription to a service.
Applied Regularisation techniques(Ridge+Lasso) and observed improvement in regression algorithm.It also contain two promising cross validation technique.
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