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Opérateurs maximaux monotones et semi-groupes de contractions dans les espaces de Hilbert
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In this article, Operateurs Maximaux Monotones: Et Semi-Groupes De Contractions Dans Les Espaces De Hllbert are described and discussed. But the focus is not on the performance of the operators.Abstract:
Front Cover; Operateurs Maximaux Monotones: Et Semi-Groupes De Contractions Dans Les Espaces De Hllbert; Copyright Page; Table des Matieres; Introduction; CHAPTER I. QUELQUES RESULTATS PRELIMINAIRES; CHAPTER II. OPERATEURS MAXIMAUX MONOTONES; CHAPTER III. EQUATIONS D'EVOLUTION ASSOCIEES AUX OPERATEURS MONOTONES; CHAPTER IV. PROPRIETES DES SEMI-GROUPES DE CONTRACTIONS NON LINEAIRES; APPENDICE : FONCTIONS VECTGRIELLES D ' U N E VARIASLE REELLE -; REFERENCES BIBLIOGRAPHIQUES COMPLEMENTS ET PROBLEMES OUVERTS; BIBLIOGRAPHIE.read more
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