New approach for flexible query using the knowledge discovered in large database

In this paper, we propose our contribution to support flexible query in large database. Our approach proposes to use the generated knowledge result of an algorithm for knowledge discovery in database (KDD). Unfortunately, these algorithms generate big number of rules that are not easily assimilated by the human brain and do not help the user to give semantics of data and to optimise the information research. In this paper, we discuss these problems and we propose a pragmatic solution 1 by proposing a new approach for KDD through the fusion of conceptual clustering, fuzzy logic and formal concept analysis 2 by defining a new method to support database flexible querying using the generated knowledge in the first step. This approach cannot be required to modify the SQL language. Also, we prove that this approach is optimum sight that the evaluation of the query is not done on the set of starting data which are enormous but rather by using the set of knowledge on these data.