Agapito Ledezma


Ontology type: schema:Person     


Person Info

NAME

Agapito

SURNAME

Ledezma

Publications in SciGraph latest 50 shown

  • 2019 Opponent Modeling in RoboCup Soccer Simulation in ADVANCES IN PHYSICAL AGENTS
  • 2019 Silkworm Growth Monitoring in Second Stage -Instar- Using Artificial Vision Techniques in ADVANCES IN INFORMATION AND COMMUNICATION TECHNOLOGIES FOR ADAPTING AGRICULTURE TO CLIMATE CHANGE II
  • 2018 Knowledge Inference from a Small Water Quality Dataset with Multivariate Statistics and Data-Mining in ADVANCES IN INFORMATION AND COMMUNICATION TECHNOLOGIES FOR ADAPTING AGRICULTURE TO CLIMATE CHANGE
  • 2017 Data Preprocessing to Enhance Flow Forecasting in a Tropical River Basin in ENGINEERING APPLICATIONS OF NEURAL NETWORKS
  • 2017 Lack of Data: Is It Enough Estimating the Coffee Rust with Meteorological Time Series? in COMPUTATIONAL SCIENCE AND ITS APPLICATIONS – ICCSA 2017
  • 2016 Data Processing for a Water Quality Detection System on Colombian Rio Piedras Basin in COMPUTATIONAL SCIENCE AND ITS APPLICATIONS -- ICCSA 2016
  • 2015 Input Transformation and Output Combination for Improved Handwritten Digit Recognition in ARTIFICIAL NEURAL NETWORKS
  • 2015 An Empirical Multi-classifier for Coffee Rust Detection in Colombian Crops in COMPUTATIONAL SCIENCE AND ITS APPLICATIONS -- ICCSA 2015
  • 2014-12 Evolving classification of UNIX users’ behaviors in EVOLVING SYSTEMS
  • 2014 News Mining Using Evolving Fuzzy Systems in INTELLIGENT DATA ENGINEERING AND AUTOMATED LEARNING – IDEAL 2014
  • 2014 A Practical Application of Evolving Fuzzy-Rule-Based Classifiers for the Development of Spoken Dialog Systems in PROGRESS IN PATTERN RECOGNITION, IMAGE ANALYSIS, COMPUTER VISION, AND APPLICATIONS
  • 2014 Intelligent Promotions Recommendation System for Instaprom Platform in INTELLIGENT DATA ENGINEERING AND AUTOMATED LEARNING – IDEAL 2014
  • 2013 A Machine Consciousness Approach to the Design of Human-Like Bots in BELIEVABLE BOTS
  • 2013 Handwritten Digit Recognition with Pattern Transformations and Neural Network Averaging in ARTIFICIAL NEURAL NETWORKS AND MACHINE LEARNING – ICANN 2013
  • 2013 ConsScale FPS: Cognitive Integration for Improved Believability in Computer Game Bots in BELIEVABLE BOTS
  • 2013 Characterizing and Assessing Human-Like Behavior in Cognitive Architectures in BIOLOGICALLY INSPIRED COGNITIVE ARCHITECTURES 2012
  • 2012-06 A new artificial neural network ensemble based on feature selection and class recoding in NEURAL COMPUTING AND APPLICATIONS
  • 2011 Simulating Visual Qualia in the CERA-CRANIUM Cognitive Architecture in FROM BRAINS TO SYSTEMS
  • 2011 MMRF for Proteome Annotation Applied to Human Protein Disease Prediction in INDUCTIVE LOGIC PROGRAMMING
  • 2010-10 Evolving classification of agents’ behaviors: a general approach in EVOLVING SYSTEMS
  • 2010 S.cerevisiae Complex Function Prediction with Modular Multi-Relational Framework in TRENDS IN APPLIED INTELLIGENT SYSTEMS
  • 2009 The Winning Advantage: Using Opponent Models in Robot Soccer in INTELLIGENT DATA ENGINEERING AND AUTOMATED LEARNING - IDEAL 2009
  • 2009 Creating User Profiles from a Command-Line Interface: A Statistical Approach in USER MODELING, ADAPTATION, AND PERSONALIZATION
  • 2009 Verifying Robocup Teams in MODEL CHECKING AND ARTIFICIAL INTELLIGENCE
  • 2008 Genetic Programming for Predicting Protein Networks in ADVANCES IN ARTIFICIAL INTELLIGENCE – IBERAMIA 2008
  • 2007 Sequence Classification Using Statistical Pattern Recognition in ADVANCES IN INTELLIGENT DATA ANALYSIS VII
  • 2007 Specialized Ensemble of Classifiers for Traffic Sign Recognition in COMPUTATIONAL AND AMBIENT INTELLIGENCE
  • 2006 A Comparing Method of Two Team Behaviours in the Simulation Coach Competition in MODELING DECISIONS FOR ARTIFICIAL INTELLIGENCE
  • 2005 Predicting Opponent Actions by Observation in ROBOCUP 2005: ROBOT SOCCER WORLD CUP IX
  • 2003-06-18 From Continuous Behaviour to Discrete Knowledge in ARTIFICIAL NEURAL NETS PROBLEM SOLVING METHODS
  • 2003-04-30 A Machine Learning Based Evaluation of a Negotiation between Agents Involving Fuzzy Counter-Offers in ADVANCES IN WEB INTELLIGENCE
  • 2001-06-12 Automatic Symbolic Modelling of Co-evolutionarily Learned Robot Skills in CONNECTIONIST MODELS OF NEURONS, LEARNING PROCESSES, AND ARTIFICIAL INTELLIGENCE
  • Affiliations

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