JACA

Multi-view analyzer

An R package that provides a statistical framework for analyzing multi-view data

R package to implements a joint framework that performs association and classification analysis for multi-view data

GitHub

3 stars
3 watching
2 forks
Language: R
last commit: over 3 years ago
Linked from 1 awesome list


Backlinks from these awesome lists:

Related projects:

Repository Description Stars
mitre/multiscanner Automated file analysis framework with modular design and distributed workflow 617
conesalab/multipower Tools for statistical power analysis in multi-omics experiments 30
ericpante/marmap A tool for analyzing and visualizing bathymetric and topographic data using R. 32
juliastats/multivariatestats.jl A comprehensive Julia package for multivariate statistical analysis and data reduction techniques. 379
schochastics/levelnet An R package to analyze two-mode networks and extract their binary backbone. 9
matteorr/coco-analyze An analysis tool for evaluating multi-instance pose estimation models. 233
pimentel/scca-bc Analyzes data to identify linear relationships and groups them into clusters 2
thomdata/r_theme A software framework for exploring and predicting relationships in multiblock datasets using a combination of statistical modeling and machine learning techniques. 1
jhu99/scbean Analyzes single-cell multi-omics data from various modalities like RNA-seq and ATAC-seq 16
mbevilacqua/appcompatprocessor An application compatibility data analysis tool designed to extract value beyond traditional techniques 197
derekbeaton/plsca_framework An R package implementing techniques for analyzing multivariate data relationships 1
epurdom/cobolt Analyzes and integrates multimodal single-cell sequencing data from different modalities 18
drego85/joomlascan A Python-based tool for discovering and analyzing Joomla CMS components 215
nredell/shapflex A package for computing asymmetric Shapley values to assess causality in machine learning models 71
yeolab/anchor An algorithm to identify unimodal, bimodal, and multimodal features in data 27