The problem of the relevance and the usefulness of extracted association rules is of primary importance because, in the majority
of cases, real-life databases lead to several thousands association rules with high confidence and among which are many redundancies.
Using the closure of the Galois connection, we define two new bases for association rules which union is a generating set
for all valid association rules with support and confidence. These bases are characterized using frequent closed itemsets
and their generators; they consist of the non-redundant exact and approximate association rules having minimal antecedents
and maximal consequents, i.e. the most relevant association rules. Algorithms for extracting these bases are presented and
results of experiments carried out on real-life databases show that the proposed bases are useful, and that their generation
is not time consuming.