ARC-LH: A New Adaptive Resampling Algorithm for Improving ANN Classifiers
نویسندگان
چکیده
We introduce arc-Ih, a new algorithm for improvement of ANN classifier performance, which measures the importance of patterns by aggregated network output errors. On several artificial benchmark problems, this algorithm compares favorably with other resample and combine techniques.
منابع مشابه
Arc-lh: a New Adaptive Resampling Algorithm for Improving Ann Classiiers
We introduce arc-lh, a new algorithm for improvement of ANN clas-siier performance, which measures the importance of patterns by aggregated network output errors. On several artiicial benchmark problems, this algorithm compares favorably with other resample and combine techniques.
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