Thomas G Dietterich


Ontology type: schema:Person     


Person Info

NAME

Thomas G

SURNAME

Dietterich

Publications in SciGraph latest 50 shown

  • 2019-02 Robust artificial intelligence and robust human organizations in FRONTIERS OF COMPUTER SCIENCE
  • 2018-06 Optimal Spatial-Dynamic Management of Stochastic Species Invasions in ENVIRONMENTAL AND RESOURCE ECONOMICS
  • 2010 Cyber SA: Situational Awareness for Cyber Defense in CYBER SITUATIONAL AWARENESS
  • 2010 Machine Learning Methods for High Level Cyber Situation Awareness in CYBER SITUATIONAL AWARENESS
  • 2009 Machine Learning and Ecosystem Informatics: Challenges and Opportunities in ADVANCES IN MACHINE LEARNING
  • 2008-11 Learning first-order probabilistic models with combining rules in ANNALS OF MATHEMATICS AND ARTIFICIAL INTELLIGENCE
  • 2008-10 Structured machine learning: the next ten years in MACHINE LEARNING
  • 2008-03 Automated insect identification through concatenated histograms of local appearance features: feature vector generation and region detection for deformable objects in MACHINE VISION AND APPLICATIONS
  • 2008 Learning MDP Action Models Via Discrete Mixture Trees in MACHINE LEARNING AND KNOWLEDGE DISCOVERY IN DATABASES
  • 2007 Machine Learning in Ecosystem Informatics in ALGORITHMIC LEARNING THEORY
  • 2007 Machine Learning in Ecosystem Informatics in DISCOVERY SCIENCE
  • 2006-04 Map Misclassification Can Cause Large Errors in Landscape Pattern Indices: Examples from Habitat Fragmentation in ECOSYSTEMS
  • 2003 Improved Class Probability Estimates from Decision Tree Models in NONLINEAR ESTIMATION AND CLASSIFICATION
  • 2002 Machine Learning for Sequential Data: A Review in STRUCTURAL, SYNTACTIC, AND STATISTICAL PATTERN RECOGNITION
  • 2002 A Multi-agent Architecture Integrating Learning and Fuzzy Techniques for Landmark-Based Robot Navigation in TOPICS IN ARTIFICIAL INTELLIGENCE
  • 2002 Bias—Variance Analysis and Ensembles of SVM in MULTIPLE CLASSIFIER SYSTEMS
  • 2001 Constructing High-Accuracy Letter-to-Phoneme Rules with Machine Learning in DATA-DRIVEN TECHNIQUES IN SPEECH SYNTHESIS
  • 2001 Support Vectors for Reinforcement Learning in PRINCIPLES OF DATA MINING AND KNOWLEDGE DISCOVERY
  • 2001 Support Vectors for Reinforcement Learning in MACHINE LEARNING: ECML 2001
  • 2001 The Divide-and-Conquer Manifesto in ALGORITHMIC LEARNING THEORY
  • 2000-12-01 Ensemble Methods in Machine Learning in MULTIPLE CLASSIFIER SYSTEMS
  • 2000-08 An Experimental Comparison of Three Methods for Constructing Ensembles of Decision Trees: Bagging, Boosting, and Randomization in MACHINE LEARNING
  • 2000 A POMDP Approximation Algorithm That Anticipates the Need to Observe in PRICAI 2000 TOPICS IN ARTIFICIAL INTELLIGENCE
  • 2000 An Overview of MAXQ Hierarchical Reinforcement Learning in ABSTRACTION, REFORMULATION, AND APPROXIMATION
  • 1997-08 Explanation-Based Learning and Reinforcement Learning: A Unified View in MACHINE LEARNING
  • 1996 A Data Representation for Collaborative Mechanical Design in MECHANICAL DESIGN: THEORY AND METHODOLOGY
  • 1995-04 An experimental comparison of the nearest-neighbor and nearest-hyperrectangle algorithms in MACHINE LEARNING
  • 1995-04 An Experimental Comparison of the Nearest-Neighbor and Nearest-Hyperrectangle Algorithms in MACHINE LEARNING
  • 1995-01 A comparison of ID3 and backpropagation for English text-to-speech mapping in MACHINE LEARNING
  • 1995-01 A Comparison of ID3 and Backpropagation for English Text-To-Speech Mapping in MACHINE LEARNING
  • 1994-12 Compass: A shape-based machine learning tool for drug design in JOURNAL OF COMPUTER-AIDED MOLECULAR DESIGN
  • 1992-12 A data representation for collaborative mechanical design in RESEARCH IN ENGINEERING DESIGN
  • 1991 Knowledge compilation to speed up numerical optimization in TRENDS IN ARTIFICIAL INTELLIGENCE
  • 1990-03 Editorial in MACHINE LEARNING
  • 1990-03 Editorial Exploratory research in machine learning in MACHINE LEARNING
  • 1989-11 A Study of Explanation-Based Methods for Inductive Learning in MACHINE LEARNING
  • 1986-09 Learning at the knowledge level in MACHINE LEARNING
  • 1986-09 Learning at the Knowledge Level in MACHINE LEARNING
  • 1986-06 News and Notes in MACHINE LEARNING
  • 1986 Exploiting Functional Vocabularies to Learn Structural Descriptions in MACHINE LEARNING
  • 1986 The EG Project: Recent Progress in MACHINE LEARNING
  • 1984 The Role of the Critic in Learning Systems in ADAPTIVE CONTROL OF ILL-DEFINED SYSTEMS
  • 1983 A Comparative Review of Selected Methods for Learning from Examples in MACHINE LEARNING
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