Sergei O Kuznetsov


Ontology type: schema:Person     


Person Info

NAME

Sergei O

SURNAME

Kuznetsov

Publications in SciGraph latest 50 shown

  • 2017 On Overfitting of Classifiers Making a Lattice in FORMAL CONCEPT ANALYSIS
  • 2017 On Neural Network Architecture Based on Concept Lattices in FOUNDATIONS OF INTELLIGENT SYSTEMS
  • 2015-10 Triadic Formal Concept Analysis and triclustering: searching for optimal patterns in MACHINE LEARNING
  • 2014-02 Biclustering meets triadic concept analysis in ANNALS OF MATHEMATICS AND ARTIFICIAL INTELLIGENCE
  • 2014 Pattern Structure Projections for Learning Discourse Structures in ARTIFICIAL INTELLIGENCE: METHODOLOGY, SYSTEMS, AND APPLICATIONS
  • 2014 Finding Maximal Common Sub-parse Thickets for Multi-sentence Search in GRAPH STRUCTURES FOR KNOWLEDGE REPRESENTATION AND REASONING
  • 2014 Matchings and Decision Trees for Determining Optimal Therapy in ANALYSIS OF IMAGES, SOCIAL NETWORKS AND TEXTS
  • 2012 Human-Centered Text Mining: A New Software System in ADVANCES IN DATA MINING. APPLICATIONS AND THEORETICAL ASPECTS
  • 2012 Text Mining Scientific Papers: A Survey on FCA-Based Information Retrieval Research in ADVANCES IN DATA MINING. APPLICATIONS AND THEORETICAL ASPECTS
  • 2011 Using Generalization of Syntactic Parse Trees for Taxonomy Capture on the Web in CONCEPTUAL STRUCTURES FOR DISCOVERING KNOWLEDGE
  • 2011 Symbolic Galois Lattices with Pattern Structures in ROUGH SETS, FUZZY SETS, DATA MINING AND GRANULAR COMPUTING
  • 2011 Enumerating Minimal Hypotheses and Dualizing Monotone Boolean Functions on Lattices in FORMAL CONCEPT ANALYSIS
  • 2010-06 Erratum: Preface to special issue on concept lattice and their applications 2008 in ANNALS OF MATHEMATICS AND ARTIFICIAL INTELLIGENCE
  • 2008 Scenario Argument Structure vs Individual Claim Defeasibility: What Is More Important for Validity Assessment? in CONCEPTUAL STRUCTURES: KNOWLEDGE VISUALIZATION AND REASONING
  • 2008 Scale Coarsening as Feature Selection in FORMAL CONCEPT ANALYSIS
  • 2005 Analyzing Conflicts with Concept-Based Learning in CONCEPTUAL STRUCTURES: COMMON SEMANTICS FOR SHARING KNOWLEDGE
  • 2005 Learning Closed Sets of Labeled Graphs for Chemical Applications in INDUCTIVE LOGIC PROGRAMMING
  • 2004 Concept-Based Data Mining with Scaled Labeled Graphs in CONCEPTUAL STRUCTURES AT WORK
  • 2003 Hypotheses and Version Spaces in CONCEPTUAL STRUCTURES FOR KNOWLEDGE CREATION AND COMMUNICATION
  • 2001-10 Machine Learning on the Basis of Formal Concept Analysis in AUTOMATION AND REMOTE CONTROL
  • 1999 Learning of Simple Conceptual Graphs from Positive and Negative Examples in PRINCIPLES OF DATA MINING AND KNOWLEDGE DISCOVERY
  • 1998 Stepwise construction of the Dedekind-MacNeille completion in CONCEPTUAL STRUCTURES: THEORY, TOOLS AND APPLICATIONS
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