Anna Kolesárová


Ontology type: schema:Person     


Person Info

NAME

Anna

SURNAME

Kolesárová

Publications in SciGraph latest 50 shown

  • 2021-08-26 Invariant Aggregation and Pre-aggregation Functions in COMPUTATIONAL INTELLIGENCE AND MATHEMATICS FOR TACKLING COMPLEX PROBLEMS 3
  • 2020-06-05 A Note on Aggregation of Intuitionistic Values in INFORMATION PROCESSING AND MANAGEMENT OF UNCERTAINTY IN KNOWLEDGE-BASED SYSTEMS
  • 2019-07-24 Set-Based Extended Functions in MODELING DECISIONS FOR ARTIFICIAL INTELLIGENCE
  • 2019-06-18 The key role of convexity in some copula constructions in EUROPEAN JOURNAL OF MATHEMATICS
  • 2019-05-17 Construction of Fuzzy Implication Functions Based on F-chains in NEW TRENDS IN AGGREGATION THEORY
  • 2019-04-02 Normed Utility Functions: Some Recent Advances in NEW PERSPECTIVES IN MULTIPLE CRITERIA DECISION MAKING
  • 2018-09-16 On k--additive Aggregation Functions in MODELING DECISIONS FOR ARTIFICIAL INTELLIGENCE
  • 2018-05-18 Generalized Farlie-Gumbel-Morgenstern Copulas in INFORMATION PROCESSING AND MANAGEMENT OF UNCERTAINTY IN KNOWLEDGE-BASED SYSTEMS. THEORY AND FOUNDATIONS
  • 2017-10-14 Copula constructions using ultramodularity in COPULAS AND DEPENDENCE MODELS WITH APPLICATIONS
  • 2017-09-02 A New Extension of Monotonicity: Ordered Directional Monotonicity in ADVANCES IN FUZZY LOGIC AND TECHNOLOGY 2017
  • 2017-06-01 On Some Recent Construction Methods for Bivariate Copulas in INFORMATION TECHNOLOGY AND COMPUTATIONAL PHYSICS
  • 2017-05-19 k-maxitivity of Order-Preserving Homomorphisms of Lattices in AGGREGATION FUNCTIONS IN THEORY AND IN PRACTICE
  • 2017-01-14 Construction of Capacities from Overlap Indexes in FUZZY SETS, ROUGH SETS, MULTISETS AND CLUSTERING
  • 2016-09-08 On k–additive Aggregation Functions in MODELING DECISIONS FOR ARTIFICIAL INTELLIGENCE
  • 2016-01-12 Extensions of Capacities in ON LOGICAL, ALGEBRAIC, AND PROBABILISTIC ASPECTS OF FUZZY SET THEORY
  • 2015-09-01 The Notion of Pre-aggregation Function in MODELING DECISIONS FOR ARTIFICIAL INTELLIGENCE
  • 2015 Aggregation Functions on [0,1] in SPRINGER HANDBOOK OF COMPUTATIONAL INTELLIGENCE
  • 2014 Fusion Functions and Directional Monotonicity in INFORMATION PROCESSING AND MANAGEMENT OF UNCERTAINTY IN KNOWLEDGE-BASED SYSTEMS
  • 2013 On Quadratic Constructions of Copulas in AGGREGATION FUNCTIONS IN THEORY AND IN PRACTISE
  • 2012 Pseudo-concave Benvenuti Integral in ADVANCES IN COMPUTATIONAL INTELLIGENCE
  • 2011 Multicriteria Decision Making by Means of Interval-Valued Choquet Integrals in EUROFUSE 2011
  • 2008-09 Measure-Preserving Transformations, Copulæ and Compatibility in MEDITERRANEAN JOURNAL OF MATHEMATICS
  • 2008-01-01 A Review of Aggregation Functions in FUZZY SETS AND THEIR EXTENSIONS: REPRESENTATION, AGGREGATION AND MODELS
  • 2007-09-25 Intervals of 1-Lipschitz aggregation operators, quasi-copulas, and copulas with given affine section in MONATSHEFTE FÜR MATHEMATIK
  • 2005-06-28 Quasi-copulas and copulas on a discrete scale in SOFT COMPUTING
  • 2005-01-01 1-Lipschitz Aggregation Operators, Quasi-Copulas and Copulas with Given Opposite Diagonal in COMPUTATIONAL INTELLIGENCE, THEORY AND APPLICATIONS
  • 2004 1-Lipschitz Aggregation Operators, Quasi-Copulas and Copulas with Given Diagonals in SOFT METHODOLOGY AND RANDOM INFORMATION SYSTEMS
  • 2002 Aggregation Operators: Properties, Classes and Construction Methods in AGGREGATION OPERATORS
  • 2000 Compositional Rule of Inference Based on Triangular Norms in FUZZY IF-THEN RULES IN COMPUTATIONAL INTELLIGENCE
  • 1993-10 T∞-Fuzzy observables in INTERNATIONAL JOURNAL OF THEORETICAL PHYSICS
  • 1992 On the Structure of Fuzzy Observables in FUZZY APPROACH TO REASONING AND DECISION-MAKING
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