Tomoharu Nakashima


Ontology type: schema:Person     


Person Info

NAME

Tomoharu

SURNAME

Nakashima

Publications in SciGraph latest 50 shown

  • 2019-03 Route planning for multiple surveillance autonomous drones using a discrete firefly algorithm and a Bayesian optimization method in ARTIFICIAL LIFE AND ROBOTICS
  • 2018-09-07 Online Opponent Formation Identification Based on Position Information in ROBOCUP 2017: ROBOT WORLD CUP XXI
  • 2017-09 Optimizing player’s formations for corner-kick situations in RoboCup soccer 2D simulation in ARTIFICIAL LIFE AND ROBOTICS
  • 2017 Selecting the Best Player Formation for Corner-Kick Situations Based on Bayes’ Estimation in ROBOCUP 2016: ROBOT WORLD CUP XX
  • 2017 Map Uncertainty Reduction for a Team of Autonomous Drones Using Simulated Annealing and Bayesian Optimization in HUMAN INTERFACE AND THE MANAGEMENT OF INFORMATION: SUPPORTING LEARNING, DECISION-MAKING AND COLLABORATION
  • 2016 The Effect of the Arrangement of Fuzzy If-Then Rules on the Performance of On-Line Fuzzy Classification in HUMAN INTERFACE AND THE MANAGEMENT OF INFORMATION: INFORMATION, DESIGN AND INTERACTION
  • 2015 Kick Extraction for Reducing Uncertainty in RoboCup Logs in HUMAN INTERFACE AND THE MANAGEMENT OF INFORMATION. INFORMATION AND KNOWLEDGE IN CONTEXT
  • 2014 Improving Particle Swarm Optimization Algorithm and Its Application to Physical Travelling Salesman Problems with a Dynamic Search Space in APPLIED COMPUTING AND INFORMATION TECHNOLOGY
  • 2014 HELIOS Base: An Open Source Package for the RoboCup Soccer 2D Simulation in APPLIED CRYPTOGRAPHY AND NETWORK SECURITY
  • 2013 HELIOS2012: RoboCup 2012 Soccer Simulation 2D League Champion in APPLIED CRYPTOGRAPHY AND NETWORK SECURITY
  • 2012 Some Consideration of SIRMs Connected Fuzzy Inference Model with Functional Weights in INTELLIGENT DECISION TECHNOLOGIES
  • 2012 Incremental Update of Fuzzy Rule-Based Classifiers for Dynamic Problems in COMPUTER AND INFORMATION SCIENCE 2012
  • 2012 Performance Evaluation of SIRMs Models for Classification Problems in INTELLIGENT DECISION TECHNOLOGIES
  • 2012 GPGPU Implementation of Fuzzy Rule-Based Classifiers in INTELLIGENT DECISION TECHNOLOGIES
  • 2011-12 On the use of human instruction for improving the behavior of RoboCup soccer agents in ARTIFICIAL LIFE AND ROBOTICS
  • 2011-09 A visual debugger for developing RoboCup soccer 3D agents in ARTIFICIAL LIFE AND ROBOTICS
  • 2011-09 Parallelizing fuzzy rule generation using GPGPU in ARTIFICIAL LIFE AND ROBOTICS
  • 2010-03 Designing high-level decision making systems based on fuzzy if–then rules for a point-to-point car racing game in SOFT COMPUTING
  • 2010 Michigan Style Fuzzy Classification for Gene Expression Analysis in SOFT COMPUTING IN INDUSTRIAL APPLICATIONS
  • 2009 Gene Expression Analysis by Fuzzy and Hybrid Fuzzy Classification in FUZZY SYSTEMS IN BIOINFORMATICS AND COMPUTATIONAL BIOLOGY
  • 2008-03 A cost-based fuzzy system for pattern classification with class importance in ARTIFICIAL LIFE AND ROBOTICS
  • 2008 Analysis of Breast Thermograms Based on Statistical Image Features and Hybrid Fuzzy Classification in ADVANCES IN VISUAL COMPUTING
  • 2008 Fuzzy Classification for Gene Expression Data Analysis in COMPUTATIONAL INTELLIGENCE IN BIOINFORMATICS
  • 2007-07 A genetic approach to the design of autonomous agents for futures trading in ARTIFICIAL LIFE AND ROBOTICS
  • 2006-07 An approach to fuzzy default reasoning for function approximation in SOFT COMPUTING
  • 2006 Performance Evaluation of an Evolutionary Method for RoboCup Soccer Strategies in ROBOCUP 2005: ROBOT SOCCER WORLD CUP IX
  • 2006 Developing a Goal Keeper for Simulated RoboCup Soccer and its Performance Evaluation in PROCEEDINGS OF THE 3RD INTERNATIONAL SYMPOSIUM ON AUTONOMOUS MINIROBOTS FOR RESEARCH AND EDUTAINMENT (AMIRE 2005)
  • 2006 An Action Rule Discovery Technique from Simulated RoboCup Soccer Logs in PROCEEDINGS OF THE 3RD INTERNATIONAL SYMPOSIUM ON AUTONOMOUS MINIROBOTS FOR RESEARCH AND EDUTAINMENT (AMIRE 2005)
  • 2005 A Fuzzy Rule-Based Trading Agent: Analysis and Knowledge Extraction in COMPUTATIONAL INTELLIGENCE FOR MODELLING AND PREDICTION
  • 2005 Linguistic Rule Extraction from Neural Networks in CLASSIFICATION AND MODELING WITH LINGUISTIC INFORMATION GRANULES
  • 2005 Learning of Linguistic Rules in CLASSIFICATION AND MODELING WITH LINGUISTIC INFORMATION GRANULES
  • 2005 Comparison of Linguistic Discretization with Interval Discretization in CLASSIFICATION AND MODELING WITH LINGUISTIC INFORMATION GRANULES
  • 2005 Multi-Objective Design of Linguistic Models in CLASSIFICATION AND MODELING WITH LINGUISTIC INFORMATION GRANULES
  • 2005 Using Boosting Techniques to Improve the Performance of Fuzzy Classification Systems in CLASSIFICATION AND CLUSTERING FOR KNOWLEDGE DISCOVERY
  • 2005 Linguistic Information Granules in CLASSIFICATION AND MODELING WITH LINGUISTIC INFORMATION GRANULES
  • 2005 Learning of Neural Networks from Linguistic Rules in CLASSIFICATION AND MODELING WITH LINGUISTIC INFORMATION GRANULES
  • 2005 Linguistic Rules with Consequent Real Numbers in CLASSIFICATION AND MODELING WITH LINGUISTIC INFORMATION GRANULES
  • 2005 Design of Compact Linguistic Models in CLASSIFICATION AND MODELING WITH LINGUISTIC INFORMATION GRANULES
  • 2005 Modeling of Fuzzy Input—Output Relations in CLASSIFICATION AND MODELING WITH LINGUISTIC INFORMATION GRANULES
  • 2005 Genetics-Based Machine Learning in CLASSIFICATION AND MODELING WITH LINGUISTIC INFORMATION GRANULES
  • 2005 Input Selection and Rule Selection in CLASSIFICATION AND MODELING WITH LINGUISTIC INFORMATION GRANULES
  • 2005 Pattern Classification with Linguistic Rules in CLASSIFICATION AND MODELING WITH LINGUISTIC INFORMATION GRANULES
  • 2005 Modeling with Linguistic Rules in CLASSIFICATION AND MODELING WITH LINGUISTIC INFORMATION GRANULES
  • 2005 Handling of Linguistic Rules in Neural Networks in CLASSIFICATION AND MODELING WITH LINGUISTIC INFORMATION GRANULES
  • 2004 A Study on Weighting Training Patterns for Fuzzy Rule-Based Classification Systems in MODELING DECISIONS FOR ARTIFICIAL INTELLIGENCE
  • 2004 A Fuzzy Reinforcement Learning for a Ball Interception Problem in ROBOCUP 2005: ROBOT SOCCER WORLD CUP IX
  • 2003 Ensembling Classification Systems by a Fuzzy Rule-Based System in INFORMATION FUSION IN DATA MINING
  • 2001-07-06 Multiobjective Optimization in Linguistic Rule Extraction from Numerical Data in EVOLUTIONARY MULTI-CRITERION OPTIMIZATION
  • 2001 Genetic-Algorithm-Based Instance and Feature Selection in INSTANCE SELECTION AND CONSTRUCTION FOR DATA MINING
  • 2000 Fuzzy If-Then Rules for Pattern Classification in FUZZY IF-THEN RULES IN COMPUTATIONAL INTELLIGENCE
  • Affiliations

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