Skip to main content
Ctrl+K

QuadratiK 1.2.0 documentation

  • Getting Started
    • Installation
  • API Reference
    • KernelTest
    • select_h
    • PoissonKernelTest
    • PKBC
    • PKBD
    • UI
    • load_wireless_data
    • load_wisconsin_breast_cancer_data
    • load_wine_data
    • sample_hypersphere
    • stats
    • qq_plot
    • sphere3d
    • plot_clusters_2d
    • spherical_pca
  • User Guide
    • Datasets
    • Usage Examples for QuadratiK in Python
    • Kernel-based quadratic distance (KBQD) Goodness-of-Fit tests
    • Select the value of the kernel tuning parameter (h)
    • An Introduction to Poisson Kernel-Based Distributions
    • Random sampling from the Poisson kernel-based density
    • Poisson kernel-based quadratic distance test of Uniformity on the sphere
    • Usage Instructions for Dashboard Application
  • Development
    • Contributor Covenant Code of Conduct
    • Contributing to QuadratiK
  • Changelog
    • QuadratiK Version 1.2.0
    • QuadratiK Version 1.1.5
    • QuadratiK Version 1.1.4
    • QuadratiK Version 1.1.3
    • QuadratiK Version 1.1.2
    • QuadratiK Version 1.1.1
    • QuadratiK Version 1.1.0
    • QuadratiK Version 1.0.0
  • .rst

Development

Contents

  • Code of Conduct
  • Contributing Guide

Development#

Code of Conduct#

  • Contributor Covenant Code of Conduct
    • Our Pledge
    • Our Standards
    • Our Responsibilities
    • Scope
    • Enforcement
    • Attribution

Contributing Guide#

  • Contributing to QuadratiK
    • Code of conduct
    • How you can contribute
      • Share the love ❤️
      • Ask a question ⁉️
      • Propose an idea 💡
      • Report a bug 🐛
      • Improve the documentation 📖
        • API documentation
      • Contribute code 📝
    • Development guidelines
    • Future Developments

previous

Usage Instructions for Dashboard Application

next

Contributor Covenant Code of Conduct

Contents
  • Code of Conduct
  • Contributing Guide

By Giovanni Saraceno, Marianthi Markatou, Raktim Mukhopadhyay, Mojgan Golzy

© Copyright 2023, Giovanni Saraceno, Marianthi Markatou, Raktim Mukhopadhyay, Mojgan Golzy.