Accord.Statistics 3.6.0

Contains probability distributions, statistical models and methods such as Linear and Logistic regression, Hidden Markov Models, (Hidden) Conditional Random Fields, Principal Component Analysis, Partial Least Squares, Discriminant Analysis, Kernel methods and functions and many other related techniques. Provides methods for computing variances, standard deviations, averages, and many other statistical measures. This package is part of the Accord.NET Framework.

There is a newer version of this package available.
See the version list below for details.
Install-Package Accord.Statistics -Version 3.6.0
dotnet add package Accord.Statistics --version 3.6.0
<PackageReference Include="Accord.Statistics" Version="3.6.0" />
For projects that support PackageReference, copy this XML node into the project file to reference the package.
paket add Accord.Statistics --version 3.6.0
The NuGet Team does not provide support for this client. Please contact its maintainers for support.

NuGet packages (33)

Showing the top 5 NuGet packages that depend on Accord.Statistics:

Package Downloads
Accord.MachineLearning
Contains Support Vector Machines, Decision Trees, Naive Bayesian models, K-means, Gaussian Mixture models and general algorithms such as Ransac, Cross-validation and Grid-Search for machine-learning applications. This package is part of the Accord.NET Framework.
Accord.Imaging
Contains interest point detectors (SURF and FAST), image matching and image stitching methods. This package is part of the Accord.NET Framework.
Accord.Vision
Real-time face detection and tracking, as well as general methods for detecting, tracking and transforming objects in image streams. Contains Haar cascade definitions, Camshift and Dynamic Template Matching trackers. This package is part of the Accord.NET Framework.
Accord.Controls
Histograms, scatterplots and tabular data viewers for scientific applications. This package is part of the Accord.NET Framework.
Accord.Fuzzy
Contains Fuzzy logic tools, such as fuzzy sets, linguistic variables and inference systems. This package originated from the AForge.NET Framework and is part of the Accord.NET Framework.

GitHub repositories (7)

Showing the top 5 popular GitHub repositories that depend on Accord.Statistics:

Repository Stars
QuantConnect/Lean
Lean Algorithmic Trading Engine by QuantConnect (C#, Python, F#)
accord-net/framework
Machine learning, computer vision, statistics and general scientific computing for .NET
dukus/digiCamControl
DSLR camera remote control open source software
dajuric/accord-net-extensions
Advanced image processing and computer vision algorithms made as fluent extensions and built for portability
cesarsouza/keras-sharp
An ongoing effort to port the Keras deep learning library to C#, supporting both TensorFlow and CNTK

Version History

Version Downloads Last updated
3.8.2-alpha 90,745 11/7/2017
3.8.1-alpha 1,690 10/26/2017
3.8.0 576,718 10/19/2017
3.7.3-alpha 591 10/17/2017
3.7.2-alpha 6,343 9/22/2017
3.7.1-alpha 623 9/11/2017
3.7.0 16,114 8/20/2017
3.6.4-alpha 590 8/12/2017
3.6.3-alpha 747 7/16/2017
3.6.2-alpha 559 7/14/2017
3.6.1-alpha 583 7/9/2017
3.6.0 79,261 7/7/2017
3.5.4-alpha 3,690 6/18/2017
3.5.3-alpha 544 6/17/2017
3.5.2-alpha 743 6/11/2017
3.5.1-alpha 655 6/10/2017
3.5.0 20,325 5/21/2017
3.4.2-alpha 2,723 2/21/2017
3.4.1-alpha 1,274 1/16/2017
3.4.0 24,709 1/11/2017
3.3.2-alpha 1,653 1/6/2017
3.3.1-alpha 1,429 10/7/2016
3.3.0 23,927 9/16/2016
3.2.3-alpha 4,213 9/10/2016
3.2.2-alpha 692 9/4/2016
3.2.1-alpha 631 9/3/2016
3.2.0 11,672 8/20/2016
3.1.0-alpha 1,155 6/6/2016
3.0.2 85,447 8/16/2015
3.0.1-alpha 1,457 5/25/2015
3.0.0-alpha 737 5/24/2015
2.15.0 7,525 5/1/2015
2.14.6-alpha 745 4/27/2015
2.14.5-alpha 1,151 4/9/2015
2.14.4-alpha 804 3/15/2015
2.14.3-alpha 787 2/24/2015
2.14.2-alpha 827 2/8/2015
2.14.1-alpha 717 2/7/2015
2.14.0 9,956 12/8/2014
2.13.1 6,799 9/5/2014
2.12.0 12,873 1/5/2014
2.11.0 2,082 11/5/2013
2.10.0 1,366 9/7/2013
2.8.1 8,070 12/20/2012
2.8.0 2,549 11/6/2012
2.7.0 1,383 7/14/2012
2.6.1 1,123 5/5/2012
2.6.0.1 996 4/3/2012
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