Error rate estimation via cross-validation and learning curve theory
نویسندگان
چکیده
منابع مشابه
On Error-rate Estimation in Nonparametric Classification
There is a substantial literature on the estimation of error rate, or risk, for nonparametric classifiers. Error-rate estimation has at least two purposes: accurately describing the error rate, and estimating the tuning parameters that permit the error rate to be mininised. In the light of work on related problems in nonparametric statistics, it is attractive to argue that both problems admit t...
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