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On a functional equation connected to the distributivity of fuzzy implications over triangular norms and conorms

Michał BaczyńskiTomasz SzostokWanda Niemyska — 2014

Kybernetika

Distributivity of fuzzy implications over different fuzzy logic connectives have a very important role to play in efficient inferencing in approximate reasoning, especially in fuzzy control systems (see [9, 15] and [4]). Recently in some considerations connected with these distributivity laws, the following functional equation appeared (see [5]) f ( min ( x + y , a ) ) = min ( f ( x ) + f ( y ) , b ) , where a , b > 0 and f : [ 0 , a ] [ 0 , b ] is an unknown function. In this paper we consider in detail a generalized version of this equation, namely the equation f ( m 1 ( x + y ) ) = m 2 ( f ( x ) + f ( y ) ) , where m 1 , m 2 are functions...

On two functional equations connected with distributivity of fuzzy implications

Roman GerMarcin Emil KuczmaWanda Niemyska — 2015

Commentationes Mathematicae

The distributivity law for a fuzzy implication I : [ 0 , 1 ] 2 [ 0 , 1 ] with respect to a fuzzy disjunction S : [ 0 , 1 ] 2 [ 0 , 1 ] states that the functional equation I ( x , S ( y , z ) ) = S ( I ( x , y ) , I ( x , z ) ) is satisfied for all pairs ( x , y ) from the unit square. To compare some results obtained while solving this equation in various classes of fuzzy implications, Wanda Niemyska has reduced the problem to the study of the following two functional equations: h ( min ( x g ( y ) , 1 ) ) = min ( h ( x ) + h ( x y ) , 1 ) , x ( 0 , 1 ) , y ( 0 , 1 ] , and h ( x g ( y ) ) = h ( x ) + h ( x y ) , x , y ( 0 , ) , in the class of increasing bijections h : [ 0 , 1 ] [ 0 , 1 ] with an increasing function g : ( 0 , 1 ] [ 1 , ) and in the class of monotonic bijections...

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