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  • Home > Linux > Adaptive Technologies

    Bayesian Noise Reduction Library 2.0.3

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    Nuclear Elephant | More programs
    GPL / FREE
    April 19th, 2005, 20:45 GMT
    ROOT / Adaptive Technologies

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    Bayesian Noise Reduction Library description

    An implementation of the Bayesian Noise Reduction algorithm.

    Bayesian Noise Reduction Library (libbnr) is an implementation of the Bayesian Noise Reduction (BNR) algorithm. All samples of text contain some degree of noise (data which is either intentionally or unintentionally irrelevant to accurate statistical analysis of the sample where removal of the data would result in a cleaner analysis).

    The Bayesian noise reduction algorithm provides a means of cleaner machine learning by providing more useful data, which ultimately leads to better sample analysis. With the noisy data removed from the sample, what is left is only data relevant to the classification. libbnr can be linked in with your classifier and called using the standard C interface.

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    TAGS:

    noise reduction library | noise reduction algorithm | libbnr | library | algorithm

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