Feature Selection Method Using Preferences Aggregation
نویسندگان
چکیده
The feature selection allows to choose P features among M (P<M) and thus to reduce the representation space of data. This process is increasingly useful because of the databases size increase. Therefore we propose a method based on preferences aggregation. It is an hybrid method between filter and wrapper approaches.
منابع مشابه
Feature selection and preferences aggregation
The feature selection allows to choose P features among M (P < M) and thus to reduce the representation space. This process gets more and more useful because of the databases size increases. Therefore we propose a method based on preferences aggregation. It is an hybrid method that lies filter and wrapper approaches.
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