Jean François Boulicaut


Ontology type: schema:Person     


Person Info

NAME

Jean François

SURNAME

Boulicaut

Publications in SciGraph latest 50 shown

  • 2018-05 Anytime discovery of a diverse set of patterns with Monte Carlo tree search in DATA MINING AND KNOWLEDGE DISCOVERY
  • 2017 A Proposition for Sequence Mining Using Pattern Structures in FORMAL CONCEPT ANALYSIS
  • 2016 Local Pattern Detection in Attributed Graphs in SOLVING LARGE SCALE LEARNING TASKS. CHALLENGES AND ALGORITHMS
  • 2016 Local Subgroup Discovery for Eliciting and Understanding New Structure-Odor Relationships in DISCOVERY SCIENCE
  • 2016 h(odor): Interactive Discovery of Hypotheses on the Structure-Odor Relationship in Neuroscience in MACHINE LEARNING AND KNOWLEDGE DISCOVERY IN DATABASES
  • 2015-12 Interpreting communities based on the evolution of a dynamic attributed network in SOCIAL NETWORK ANALYSIS AND MINING
  • 2014 Granularity of Co-evolution Patterns in Dynamic Attributed Graphs in ADVANCES IN INTELLIGENT DATA ANALYSIS XIII
  • 2013-05 Closed and noise-tolerant patterns in n-ary relations in DATA MINING AND KNOWLEDGE DISCOVERY
  • 2013 Trend Mining in Dynamic Attributed Graphs in ADVANCED INFORMATION SYSTEMS ENGINEERING
  • 2012 Cohesive Co-evolution Patterns in Dynamic Attributed Graphs in DISCOVERY SCIENCE
  • 2012-01 Application-independent feature construction based on almost-closedness properties in KNOWLEDGE AND INFORMATION SYSTEMS
  • 2010-11-18 Generalizing Itemset Mining in a Constraint Programming Setting in INDUCTIVE DATABASES AND CONSTRAINT-BASED DATA MINING
  • 2010-11-18 Mining Constrained Cross-Graph Cliques in Dynamic Networks in INDUCTIVE DATABASES AND CONSTRAINT-BASED DATA MINING
  • 2010-07-07 Data Mining Query Languages in DATA MINING AND KNOWLEDGE DISCOVERY HANDBOOK
  • 2010-07-07 Constraint-based Data Mining in DATA MINING AND KNOWLEDGE DISCOVERY HANDBOOK
  • 2010 Comparing Intended and Real Usage in Web Portal: Temporal Logic and Data Mining in BUSINESS INFORMATION SYSTEMS
  • 2010 Using a Solver Over the String Pattern Domain to Analyze Gene Promoter Sequences in INDUCTIVE DATABASES AND CONSTRAINT-BASED DATA MINING
  • 2009 Discovering Relevant Cross-Graph Cliques in Dynamic Networks in FOUNDATIONS OF INTELLIGENT SYSTEMS
  • 2009 Application-Independent Feature Construction from Noisy Samples in ADVANCES IN KNOWLEDGE DISCOVERY AND DATA MINING
  • 2008-12 SQUAT: A web tool to mine human, murine and avian SAGE data in BMC BIOINFORMATICS
  • 2008 Feature Construction Based on Closedness Properties Is Not That Simple in ADVANCES IN KNOWLEDGE DISCOVERY AND DATA MINING
  • 2008 Actionability and Formal Concepts: A Data Mining Perspective in FORMAL CONCEPT ANALYSIS
  • 2008 A Parameter-Free Associative Classification Method in DATA WAREHOUSING AND KNOWLEDGE DISCOVERY
  • 2007 Mining Bi-sets in Numerical Data in KNOWLEDGE DISCOVERY IN INDUCTIVE DATABASES
  • 2006 A Survey on Condensed Representations for Frequent Sets in CONSTRAINT-BASED MINING AND INDUCTIVE DATABASES
  • 2006 Mining a New Fault-Tolerant Pattern Type as an Alternative to Formal Concept Discovery in CONCEPTUAL STRUCTURES: INSPIRATION AND APPLICATION
  • 2006 Towards Constrained Co-clustering in Ordered 0/1 Data Sets in FOUNDATIONS OF INTELLIGENT SYSTEMS
  • 2006 Contribution to Gene Expression Data Analysis by Means of Set Pattern Mining in CONSTRAINT-BASED MINING AND INDUCTIVE DATABASES
  • 2006 Iterative Bayesian Network Implementation by Using Annotated Association Rules in MANAGING KNOWLEDGE IN A WORLD OF NETWORKS
  • 2006 Feature Construction and δ-Free Sets in 0/1 Samples in DISCOVERY SCIENCE
  • 2006 Constraint-Based Mining of Fault-Tolerant Patterns from Boolean Data in KNOWLEDGE DISCOVERY IN INDUCTIVE DATABASES
  • 2005 Towards Fault-Tolerant Formal Concept Analysis in AI*IA 2005: ADVANCES IN ARTIFICIAL INTELLIGENCE
  • 2005 A Bi-clustering Framework for Categorical Data in KNOWLEDGE DISCOVERY IN DATABASES: PKDD 2005
  • 2005 Constraint-Based Data Mining in DATA MINING AND KNOWLEDGE DISCOVERY HANDBOOK
  • 2005 Boolean Property Encoding for Local Set Pattern Discovery: An Application to Gene Expression Data Analysis in LOCAL PATTERN DETECTION
  • 2005 From Local Pattern Mining to Relevant Bi-cluster Characterization in ADVANCES IN INTELLIGENT DATA ANALYSIS VI
  • 2005 Data Mining Query Languages in DATA MINING AND KNOWLEDGE DISCOVERY HANDBOOK
  • 2005 Mining Formal Concepts with a Bounded Number of Exceptions from Transactional Data in KNOWLEDGE DISCOVERY IN INDUCTIVE DATABASES
  • 2004 Constraint-Based Mining of Formal Concepts in Transactional Data in ADVANCES IN KNOWLEDGE DISCOVERY AND DATA MINING
  • 2004 Inductive Databases and Multiple Uses of Frequent Itemsets: The cInQ Approach in DATABASE SUPPORT FOR DATA MINING APPLICATIONS
  • 2004 Query Languages Supporting Descriptive Rule Mining: A Comparative Study in DATABASE SUPPORT FOR DATA MINING APPLICATIONS
  • 2004 A Methodology for Biologically Relevant Pattern Discovery from Gene Expression Data in DISCOVERY SCIENCE
  • 2003-06-24 GO-SPADE: Mining Sequential Patterns over Datasets with Consecutive Repetitions in MACHINE LEARNING AND DATA MINING IN PATTERN RECOGNITION
  • 2003-01 Free-Sets: A Condensed Representation of Boolean Data for the Approximation of Frequency Queries in DATA MINING AND KNOWLEDGE DISCOVERY
  • 2003 Simplest Rules Characterizing Classes Generated by δ-Free Sets in RESEARCH AND DEVELOPMENT IN INTELLIGENT SYSTEMS XIX
  • 2003 Constraint-Based Mining of Sequential Patterns over Datasets with Consecutive Repetitions in KNOWLEDGE DISCOVERY IN DATABASES: PKDD 2003
  • 2003 Comprehensive Log Compression with Frequent Patterns in DATA WAREHOUSING AND KNOWLEDGE DISCOVERY
  • 2002-12 Strong-association-rule mining for large-scale gene-expression data analysis: a case study on human SAGE data in GENOME BIOLOGY
  • 2002-09-18 Using Condensed Representations for Interactive Association Rule Mining in PRINCIPLES OF DATA MINING AND KNOWLEDGE DISCOVERY
  • 2002-07-18 Approximation of Frequency Queries by Means of Free-Sets in PRINCIPLES OF DATA MINING AND KNOWLEDGE DISCOVERY
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