AI Learning Hub for Machine Learning, Deep Learning, Computer Vision and Statistics
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Updated
Oct 6, 2022 - HTML
AI Learning Hub for Machine Learning, Deep Learning, Computer Vision and Statistics
High Dimensional Discriminant Analysis in R ✨
Regularized discriminant analysis in Julia.
Function preserving projection (FPP), a linear projection technique for capturing interpretable patterns of high-dimensional functions
This module allows users to analyze k-means & hierarchical clustering, and visualize results of Principal Component, Correspondence Analysis, Discriminant analysis, Decision tree, Multidimensional scaling, Multiple Factor Analysis, Machine learning, and Prophet analysis.
Machine Learning and Data Mining cheatsheet and example operations prepared in MATLAB
Multi-distributional Discriminant Analysis using Generalised Linear Latent Variable Modelling in R ⭐
The code for Roweis Discriminant Analysis (RDA) and Kernel RDA methods
R package DiscriMiner
Breast cancer classification and evaluation of classifiers
Проведение бинарной и многоклассовой классификаций эмоций людей на фотографиях
This is a scanner designed to recognise DNA motifs within a long stretch of DNA. It uses two models for discrimination, one model representing the target and the second model representing the background.
Code for the paper E. Raninen and E. Ollila, “Coupled regularized sample covariance matrix estimator for multiple classes,” in IEEE Transactions on Signal Processing, vol. 69, pp. 5681–5692, 2021, doi: 10.1109/TSP.2021.3118546.
knn, Regression (LASSO, Ridge), Logistic, Principal component Analysis (PCA), Discriminant Analysis (LDA, QDA), Trees, Random Forest, Boosting
The software package SiteGA for de novo motif search in ChIP-seq data
FEMDA: Robust classification with Flexible Discriminant Analysis in heterogeneous data. Flexible EM-Inspired Discriminant Analysis is a robust supervised classification algorithm that performs well in noisy and contaminated datasets.
Performed statistical-EDA and normalization analysis on digitized mass images with 10 nuclei features (radius, texture) Predicted malignant - benign cancer using Logistic, LDA-QDA, KNN, Lasso-Ridge classifiers with 0.89, 0.88, 0.92, 0.96 and 0.97 accuracies respectively along with decision boundaries and ROC curves
[Built during technical internship at SAS Institute, May 2016 - Aug 2016] Created automated skin cancer detection software using image analysis, feature extraction, and statistical modeling that analyzes images of skin lesions to detect possibly cancerous growths. Presented research and algorithms at the international JMP Discovery Summit (also …
This repository contains the lab work of the course Machine Learning (IE 406).
Simple machine learning model using scikit-learn
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