Transactions on Machine Learning and Artificial Intelligence

Transactions on Machine Learning and Artificial Intelligence is peer-reviewed open access online journal that provides a medium of the rapid publication of original research papers, review articles, book reviews and short communications covering all areas of machine learning and artificial Intelligence. The journal publishes state-of-the-art research reports and critical evaluations of applications, techniques and algorithms in machine learning, artificial intelligence, cognitive science, software engineering, database systems, soft computing, optimization and modelling and related application areas.

The subject areas may include, but are not limited to the following domains:

  • Knowledge-based and expert systems
  • Computational Intelligence and soft computing
  • Knowledge discovery and data mining
  • Pattern recognition and computer vision
  • Natural language processing
  • AI-based clinical decision making
  • Medical knowledge engineering
  • Knowledge-based and agent-based systems
  • Applications areas of Computational intelligence.
  • Optimization techniques
  • Genetic Algorithms
  • Biometric Recognition Systems
  • Vehicle Routing and Path Planning
  • Person Pursuing
  • Unmanned Vehicles
  • Assistant Robot for Handicapped
  • Document Processing and Recognition
  • Fuzzy and Hybrid Techniques in Pattern Recognition
  • Signal and Image Processing and Analysis
  • Kernel MachinesData Mining
  • Brain Computer Interface
  • Databases, Knowledge Bases and Linguistic Tools for Pattern Recognition


Vol 5, No 3 (2017): Transactions on Machine Learning and Artificial Intelligence

Transactions on Machine Learning and Artificial Intelligence

Volume 5, No 3, June 2017

Table of Contents

Articles

Oluwafunbi Emmanuel Simolowo, Akinyemi T O
PDF
01
Deepak Agnihotri, Kesari Verma, Priyanka Tripathi
PDF
13
Charles Wong
PDF
28
Georges Edouard Kouamou, Thierry Nenkam, Bernard Talla Fotsing
PDF
43
Wei Bai, Emmanuel Tadjouddine, Terry Payne, Gangmin Li
PDF
51