Florin Leon


Ontology type: schema:Person     


Person Info

NAME

Florin

SURNAME

Leon

Publications in SciGraph latest 50 shown

  • 2021-04-05 An Experimental Study of Machine Learning for Phishing Detection in INTELLIGENT INFORMATION AND DATABASE SYSTEMS
  • 2021-04-05 Convolutional Neural Networks for Web Documents Classification in INTELLIGENT INFORMATION AND DATABASE SYSTEMS
  • 2020-11-23 A Modified I2A Agent for Learning in a Stochastic Environment in COMPUTATIONAL COLLECTIVE INTELLIGENCE
  • 2020-03-04 Study on Digital Image Evolution of Artwork by Using Bio-Inspired Approaches in INTELLIGENT INFORMATION AND DATABASE SYSTEMS
  • 2019-09-09 An Evaluation of Various Regression Models for the Prediction of Two-Terminal Network Reliability in ARTIFICIAL NEURAL NETWORKS AND MACHINE LEARNING – ICANN 2019: THEORETICAL NEURAL COMPUTATION
  • 2019-08-09 Demand Forecasting Using Random Forest and Artificial Neural Network for Supply Chain Management in COMPUTATIONAL COLLECTIVE INTELLIGENCE
  • 2019-08-09 Active Redundancy Allocation in Complex Systems by Using Different Optimization Methods in COMPUTATIONAL COLLECTIVE INTELLIGENCE
  • 2019-05-15 A Deep Network System for Simulated Autonomous Driving Using Behavioral Cloning in ENGINEERING APPLICATIONS OF NEURAL NETWORKS
  • 2018-09-27 A Credibility-Based Analysis of Information Diffusion in Social Networks in ARTIFICIAL NEURAL NETWORKS AND MACHINE LEARNING – ICANN 2018
  • 2018-09-24 Analyzing the Effects of Alternative Decisions in a Multiagent System with Stigmergy-Based Interactions in TRANSACTIONS ON COMPUTATIONAL COLLECTIVE INTELLIGENCE XXX
  • 2018-08-08 Review on General Techniques and Packages for Data Imputation in R on a Real World Dataset in COMPUTATIONAL COLLECTIVE INTELLIGENCE
  • 2018-06-04 Freight transportation broker agent based on constraint logic programming in EVOLVING SYSTEMS
  • 2018-05-22 An Evaluation of Regression Algorithms Performance for the Chemical Process of Naphthalene Sublimation in ARTIFICIAL INTELLIGENCE APPLICATIONS AND INNOVATIONS
  • 2018-05-22 A Simulation-Based Analysis of Interdependent Populations in a Dynamic Ecological Environment in ARTIFICIAL INTELLIGENCE APPLICATIONS AND INNOVATIONS
  • 2018-02-24 Approaches to Building a Detection Model for Water Quality: A Case Study in MODERN APPROACHES FOR INTELLIGENT INFORMATION AND DATABASE SYSTEMS
  • 2018-01-03 Modeling and Optimization of Pickup and Delivery Problem Using Constraint Logic Programming in LARGE-SCALE SCIENTIFIC COMPUTING
  • 2017-09-07 Multiagent Coalition Structure Optimization by Quantum Annealing in COMPUTATIONAL COLLECTIVE INTELLIGENCE
  • 2017-08-02 Optimization of Freight Transportation Brokerage Using Agents and Constraints in ENGINEERING APPLICATIONS OF NEURAL NETWORKS
  • 2017-06-01 Using Large Margin Nearest Neighbor Regression Algorithm to Predict Student Grades Based on Social Media Traces in METHODOLOGIES AND INTELLIGENT SYSTEMS FOR TECHNOLOGY ENHANCED LEARNING
  • 2016-09-20 A Novel Interaction Protocol of a Multiagent System for the Study of Alternative Decisions in COMPUTATIONAL COLLECTIVE INTELLIGENCE
  • 2016-05-19 A Freight Brokering System Architecture Based on Web Services and Agents in EXPLORING SERVICES SCIENCE
  • 2015-10-24 Evolutionary Algorithm for Large Margin Nearest Neighbour Regression in COMPUTATIONAL COLLECTIVE INTELLIGENCE
  • 2015-03-10 Prediction of Corrosion Resistance of Some Dental Metallic Materials with an Adaptive Regression Model in JOM
  • 2013-06-15 Probabilistic Path Finding Method for Post-Disaster Risk Estimation in SEISMIC EVALUATION AND REHABILITATION OF STRUCTURES
  • 2013 A Multiagent System Generating Complex Behaviours in COMPUTATIONAL COLLECTIVE INTELLIGENCE. TECHNOLOGIES AND APPLICATIONS
  • 2011 Dual Manner of Using Neural Networks in a Multiagent System to Solve Inductive Learning Problems and to Learn from Experience in INTELLIGENT DISTRIBUTED COMPUTING V
  • 2011 Self-organization of Roles Based on Multilateral Negotiation for Task Allocation in MULTIAGENT SYSTEM TECHNOLOGIES
  • 2011 Evolving Equilibrium Policies for a Multiagent Reinforcement Learning Problem with State Attractors in COMPUTATIONAL COLLECTIVE INTELLIGENCE. TECHNOLOGIES AND APPLICATIONS
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