Accord.NET Framework 3.3.0

The Accord.NET Framework is a C# framework extending the excellent AForge.NET Framework external with new tools and libraries. Accord.NET provides many algorithms for many topics in mathematics, statistics, machine learning, artificial intelligence and computer vision. It includes several methods for statistical analysis, such as Principal Component Analysis, Linear Discriminant Analysis, Partial Least Squares. ...

Author Cesar Roberto de Souza
License Open Source
Price FREE
Released 2016-09-17
Downloads 483
Filesize 483.00 MB
Requirements
Installation Instal And Uninstall
Keywords .NET Framework, C# Framework, AForge.NET Framework, Framework, AForge.NET, .NET
Users' rating
(7 rating)
Accord.NET FrameworkComponents & LibrariesWindows XP, Windows Vista, Windows Vista x64, Windows 7, Windows 7 x64, Windows 8, Windows 8 x64, Windows 10, Windows 10 x64
Accord.NET Framework neural network - Download Notice

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Accord.NET Framework neural network - The Latest User Reviews

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Accord.NET Framework

3.3.0 download

... as (Kernel) Support Vector Machines, Bayesian regularization for Neural Network training, RANSAC, K-Means, Gaussian Mixture Models and Discrete ... RANSAC, Cross-validation and Grid-Search for machine-learning applications. Accord.Neuro Neural learning algorithms such as Levenberg-Marquardt, Parallel Resilient Backpropagation, ...