📊 Computation and processing of models' parameters
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Updated
Nov 12, 2024 - R
📊 Computation and processing of models' parameters
Code that might be useful to others for learning/demonstration purposes, specifically along the lines of modeling and various algorithms. **Superseded by the models-by-example repo**.
Starter code of Prof. Andrew Ng's machine learning MOOC in R statistical language
Brings bulk and pseudobulk transcriptomics to the tidyverse
Seurat meets tidyverse. The best of both worlds.
Fast truncated singular value decompositions
Randomized Matrix Decompositions using R
By-hand code for models and algorithms. An update to the 'Miscellaneous-R-Code' repo.
Sparse Principal Component Analysis (SPCA) using Variable Projection
A collection of Poisson lognormal models for multivariate count data analysis
Animated Visualizations of Popular Machine Learning Algorithms
Covariance Matrix Estimation via Factor Models
R package for High dimensional data analysis and integration with O2PLS!
A tidyverse suite for (pre-) machine-learning: cluster, PCA, permute, impute, rotate, redundancy, triangular, smart-subset, abundant and variable features.
Workshop on tidytranscriptomics: Performing tidy transcriptomics analyses with tidybulk, tidyverse and tidyheatmap
Version 2.1.0 released
R Package: Regularized Principal Component Analysis for Spatial Data
Statistical Inference for Unsupervised Learning
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