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Kernel Adaptive Filtering Toolbox

a Matlab benchmarking toolbox for kernel adaptive filtering

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Description

[Note: This project has moved. Visit https://github.com/steven2358/kafbox/ for the latest version.]

A Matlab benchmarking toolbox for kernel adaptive filtering.

Kernel adaptive filtering algorithms are online and adaptive regression algorithms based on kernels. They are suitable for nonlinear filtering, prediction, tracking and nonlinear regression in general. This toolbox includes algorithms, demos, and tools to compare their performance.

See the included README file for a list of included algorithms and more details.

Kernel Adaptive Filtering Toolbox Web Site

Categories

Machine Learning

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User Reviews

  • 1 of 5 2 of 5 3 of 5 4 of 5 5 of 5

    Very good Software.

    Posted 05/15/2013
  • 1 of 5 2 of 5 3 of 5 4 of 5 5 of 5

    Works and fast.

    Posted 12/25/2012
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Additional Project Details

Languages

English

Programming Language

MATLAB

Registered

2012-09-06

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