Minkowski Engine is an auto-diff neural network library for high-dimensional sparse tensors
-
Updated
Mar 5, 2024 - Python
Minkowski Engine is an auto-diff neural network library for high-dimensional sparse tensors
A Python toolbox for gaining geometric insights into high-dimensional data
Vald. A Highly Scalable Distributed Vector Search Engine
Fast Best-Subset Selection Library
A collection of small-sample, high-dimensional microarray data sets to assess machine-learning algorithms and models.
A Framework for Dimensionality Reduction in R
High-dimensional medians (medoid, geometric median, etc.). Fast implementations in Python.
Poisson pseudo-likelihood regression with multiple levels of fixed effects
A Toolkit for Interactive Statistical Data Visualization
Deep distance-based outlier detection published in KDD18: Learning representations specifically for distance-based outlier detection. Few-shot outlier detection
Implementation of NEWMA: a new method for scalable model-free online change-point detection
A Python package for hubness analysis and high-dimensional data mining
🔮 Benchmarking and visualization toolkit for penalized Cox models
Statistical quality evaluation of dimensionality reduction algorithms
The DPA package is the scikit-learn compatible implementation of the Density Peaks Advanced clustering algorithm. The algorithm provides robust and visual information about the clusters, their statistical reliability and their hierarchical organization.
An interactive 3D web viewer of up to million points on one screen that represent data. Provides interaction for viewing high-dimensional data that has been previously embedded in 3D or 2D. Based on graphosaurus.js and three.js. For a Linux release of a complete embedding+visualization pipeline please visit https://github.com/sonjageorgievska/Em…
A general purpose Snakemake workflow and MrBiomics module to perform unsupervised analyses (dimensionality reduction & cluster analysis) and visualizations of high-dimensional data.
CorBinian: A toolbox for modelling and simulating high-dimensional binary and count-data with correlations
python library to perform Locality-Sensitive Hashing for faster nearest neighbors search in high dimensional data
Add a description, image, and links to the high-dimensional-data topic page so that developers can more easily learn about it.
To associate your repository with the high-dimensional-data topic, visit your repo's landing page and select "manage topics."