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Artificial intelligence: getting ML classification models right
文献摘要:
Classification is about categorizing data sets into classes. A simple example is an email spam filter, which classifies incoming messages as spam and not spam. The classifier needs examples of "spam" and "not spam" emails to learn how to perform the task by recognizing patterns. The spam filter will almost certainly make mistakes, which can only be ironed out by regularly evaluating its performance.
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引用格式:
[1]-.Artificial intelligence: getting ML classification models right)[J].中国标准化(英文版),2022(06):53
A类:
spam,emails,ironed
B类:
Artificial,intelligence,getting,ML,classification,models,right,Classification,about,categorizing,data,sets,into,classes,simple,filter,which,classifies,incoming,messages,not, The,classifier,needs,examples,learn,how,task,by,recognizing,patterns,will,almost,certainly,make,mistakes,can,only,be,regularly,evaluating,its,performance
AB值:
0.60033
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