Piero P Bonissone


Ontology type: schema:Person     


Person Info

NAME

Piero P

SURNAME

Bonissone

Publications in SciGraph latest 50 shown

  • 2018-05 A fuzzy K-nearest neighbor classifier to deal with imperfect data in SOFT COMPUTING
  • 2016 Gene Priorization for Tumor Classification Using an Embedded Method in COMPUTATIONAL INTELLIGENCE
  • 2015 Machine Learning Applications in SPRINGER HANDBOOK OF COMPUTATIONAL INTELLIGENCE
  • 2013 A Directed Inference Approach towards Multi-class Multi-model Fusion in MULTIPLE CLASSIFIER SYSTEMS
  • 2012-05 Extending information processing in a Fuzzy Random Forest ensemble in SOFT COMPUTING
  • 2012-04 OFP_CLASS: a hybrid method to generate optimized fuzzy partitions for classification in SOFT COMPUTING
  • 2012 Lazy Meta-Learning: Creating Customized Model Ensembles on Demand in ADVANCES IN COMPUTATIONAL INTELLIGENCE
  • 2012 Soft Computing as a Tool, Six Years Later in COMBINING EXPERIMENTATION AND THEORY
  • 2010-09 A classification and regression technique to handle heterogeneous and imperfect information in SOFT COMPUTING
  • 2010 Fundamentals for Design and Construction of a Fuzzy Random Forest in FOUNDATIONS OF REASONING UNDER UNCERTAINTY
  • 2008-04 An Instance-Based Method for Remaining Useful Life Estimation for Aircraft Engines in JOURNAL OF FAILURE ANALYSIS AND PREVENTION
  • 2007 Soft Computing Applications to Prognostics and Health Management (PHM): Leveraging Field Data and Domain Knowledge in COMPUTATIONAL AND AMBIENT INTELLIGENCE
  • 2005 Using an Ensemble of Classifiers to Audit a Production Classifier in MULTIPLE CLASSIFIER SYSTEMS
  • 2005 Selecting the Best Units in a Fleet: Performance Prediction from Equipment Peers in CASE-BASED REASONING RESEARCH AND DEVELOPMENT
  • 2004 Development and Maintenance of Fuzzy Models in Financial Applications in SOFT METHODOLOGY AND RANDOM INFORMATION SYSTEMS
  • 2004 Classifier Fusion Using Triangular Norms in MULTIPLE CLASSIFIER SYSTEMS
  • 2003-06-18 SOFT-CBR: A Self-Optimizing Fuzzy Tool for Case-Based Reasoning in CASE-BASED REASONING RESEARCH AND DEVELOPMENT
  • 2003 Benefits of Decision Support Using Soft Computing in APPLIED DECISION SUPPORT WITH SOFT COMPUTING
  • 2002 Hybrid Soft Computing for Classification and Prediction Applications in SOFT-WARE 2002: COMPUTING IN AN IMPERFECT WORLD
  • 2001-07 Conceptual Modeling for Design Formulation in ENGINEERING WITH COMPUTERS
  • 1997-04 Soft computing: the convergence of emerging reasoning technologies in SOFT COMPUTING
  • 1997 Approximate Reasoning Systems: Handling Uncertainty and Imprecision in Information Systems in UNCERTAINTY MANAGEMENT IN INFORMATION SYSTEMS
  • 1993 Similarity measures for case-based reasoning systems in IPMU '92—ADVANCED METHODS IN ARTIFICIAL INTELLIGENCE
  • 1990-09 MARS: A mergers and acquisitions reasoning system in COMPUTER SCIENCE IN ECONOMICS AND MANAGEMENT
  • 1990-05 Time-constrained reasoning under uncertainty in REAL-TIME SYSTEMS
  • 1989 RUM (Reasoning with Uncertainty Module) and RUMrunner (RUM’s Run Time System) in EXPERT SYSTEMS IN STRUCTURAL SAFETY ASSESSMENT
  • 1989 A Rule Backward Chainer for Knowledge Based Systems (Expert Systems) in EXPERT SYSTEMS IN STRUCTURAL SAFETY ASSESSMENT
  • 1989 Evidence and Belief in Expert Systems (Dempster-Shafer: A Simplified View) in EXPERT SYSTEMS IN STRUCTURAL SAFETY ASSESSMENT
  • 1989 Uncertainty in Kbs (Expert Systems) in EXPERT SYSTEMS IN STRUCTURAL SAFETY ASSESSMENT
  • 1989 An Industrial First Generation Kbs (Expert System): Delta/Cats in EXPERT SYSTEMS IN STRUCTURAL SAFETY ASSESSMENT
  • 1989 Knowledge Representation and Inference in Knowledge Based Systems (Expert Systems) in EXPERT SYSTEMS IN STRUCTURAL SAFETY ASSESSMENT
  • Affiliations

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