Luis Martí


Ontology type: schema:Person     


Person Info

NAME

Luis

SURNAME

Martí

Publications in SciGraph latest 50 shown

  • 2018-06-08 Applying VorEAl for IoT Intrusion Detection in HYBRID ARTIFICIAL INTELLIGENT SYSTEMS
  • 2018 How Machine Learning Could Detect Anomalies on Thinger.io Platform? in HIGHLIGHTS OF PRACTICAL APPLICATIONS OF AGENTS, MULTI-AGENT SYSTEMS, AND COMPLEXITY: THE PAAMS COLLECTION
  • 2016-12 MONEDA: scalable multi-objective optimization with a neural network-based estimation of distribution algorithm in JOURNAL OF GLOBAL OPTIMIZATION
  • 2016 Gamification and Information Fusion for Rehabilitation: An Ambient Assisted Living Case Study in HUMAN ASPECTS OF IT FOR THE AGED POPULATION. HEALTHY AND ACTIVE AGING
  • 2016 Anomaly Detection with the Voronoi Diagram Evolutionary Algorithm in PARALLEL PROBLEM SOLVING FROM NATURE – PPSN XIV
  • 2016 A Data Fusion Model for Ambient Assisted Living in HIGHLIGHTS OF PRACTICAL APPLICATIONS OF SCALABLE MULTI-AGENT SYSTEMS. THE PAAMS COLLECTION
  • 2016 Bio-Inspired Algorithms and Preferences for Multi-objective Problems in HYBRID ARTIFICIAL INTELLIGENT SYSTEMS
  • 2016 Information Fusion for Improving Decision-Making in Big Data Applications in RESOURCE MANAGEMENT FOR BIG DATA PLATFORMS
  • 2015 Big Data Visualization for Occupational Health and Security Problem in Oil and Gas Industry in HUMAN INTERFACE AND THE MANAGEMENT OF INFORMATION. INFORMATION AND KNOWLEDGE DESIGN
  • 2014 Combining Support Vector Machines and Segmentation Algorithms for Efficient Anomaly Detection: A Petroleum Industry Application in INTERNATIONAL JOINT CONFERENCE SOCO’14-CISIS’14-ICEUTE’14
  • 2014 High-Level Information Fusion for Risk and Accidents Prevention in Pervasive Oil Industry Environments in HIGHLIGHTS OF PRACTICAL APPLICATIONS OF HETEROGENEOUS MULTI-AGENT SYSTEMS. THE PAAMS COLLECTION
  • 2014 YASA: Yet Another Time Series Segmentation Algorithm for Anomaly Detection in Big Data Problems in HYBRID ARTIFICIAL INTELLIGENCE SYSTEMS
  • 2014 Understanding the Treatment of Outliers in Multi-Objective Estimation of Distribution Algorithms in ADVANCES IN ARTIFICIAL INTELLIGENCE -- IBERAMIA 2014
  • 2014 Text Classification Techniques in Oil Industry Applications in INTERNATIONAL JOINT CONFERENCE SOCO’13-CISIS’13-ICEUTE’13
  • 2013-08 Multi-objective optimization with an adaptive resonance theory-based estimation of distribution algorithm in ANNALS OF MATHEMATICS AND ARTIFICIAL INTELLIGENCE
  • 2011 A Taxonomy of Online Stopping Criteria for Multi-Objective Evolutionary Algorithms in EVOLUTIONARY MULTI-CRITERION OPTIMIZATION
  • 2011 Multi-Objective Optimization with an Adaptive Resonance Theory-Based Estimation of Distribution Algorithm: A Comparative Study in LEARNING AND INTELLIGENT OPTIMIZATION
  • 2010 Advancing Model–Building for Many–Objective Optimization Estimation of Distribution Algorithms in APPLICATIONS OF EVOLUTIONARY COMPUTATION
  • 2009 On the Model–Building Issue of Multi–Objective Estimation of Distribution Algorithms in HYBRID ARTIFICIAL INTELLIGENCE SYSTEMS
  • 2009 On the Computational Properties of the Multi-Objective Neural Estimation of Distribution Algorithm in NATURE INSPIRED COOPERATIVE STRATEGIES FOR OPTIMIZATION (NICSO 2008)
  • 2008 Scalable Continuous Multiobjective Optimization with a Neural Network–Based Estimation of Distribution Algorithm in APPLICATIONS OF EVOLUTIONARY COMPUTING
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