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Artificial Neural Networks made easy with the FANN library

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28 Aug 2013CPOL24 min read 193.8K   10.6K   206  
Neural networks are typically associated with specialised applications, developed only by select groups of experts. This misconception has had a highly negative effect on its popularity. Hopefully, the FANN library will help fill this gap.
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>fann_get_learning_rate&nbsp;--&nbsp;Retrieve learning rate from a network.</DIV
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>&#13;  <span
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>float </span
>fann_get_learning_rate(<span
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><span
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>struct fann * </span
><span
class="parameter"
>ann</span
></span
>);&#13;</code
><P
>Return the learning rate for a given network.</P
><P
>This function appears in FANN &#62;= 1.0.0.</P
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