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TMLAI 2016 : Transactions on Machine Learning and Artificial Intelligence

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Link: http://tmlai.scholarpublishing.org
 
When N/A
Where N/A
Submission Deadline Jun 15, 2016
Notification Due Jul 25, 2016
Final Version Due Jul 5, 2016
Categories    artificial intelligence   evolutionary computation   human computer interaction   pattern recognition
 

Call For Papers

 

Transactions on Machine Learning and Artificial Intelligence


Society for Science and Education, United Kingdom


Call for Papers; Volume 4, Issue 3, June 2016


Transactions on Machine Learning and Artificial Intelligence (TMLAI) is a peer-reviewed open access bi-monthly, on-line 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. TMLAI is published by the Society for Science and Education, United Kingdom which is an on-line publishing organization that supports the Bethesda Statement on Open Access Publishing.

The journal publishes state-of-the-art research reports and critical evaluations of applications, techniques and algorithms in machine learning, artificial intelligence, numan computer interaction, cognitive science, software engineering, database systems, data mining, big data, soft computing, optimization and modelling and all of their related application areas.


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 Your Benefits



  • Rapid publication: Through on-line submission system and competitive peer-review times

  • Online First : Accepted manuscripts published on-line within 5 days of acceptance, with DOIs for immediate citation

  • High Visibility: Will be indexed/listed in CrossRefDOIScopusUlrichswebDBLParXivCiteSeer,  Google scholar and other major indexing databases.

  • Persistent Archival: Will be archived in CLOCKSS to ensure long-term preservation of digital journal content

  • Copyright: All the articles in SSE journals remain copyrighted with the authors (Author Rights).

  • Low Cost: Ample discount for the researchers from developing countries (Article Publishing Fee).

  • Established titles with state-of-the-art electronic publishing using on-line reading tools.




Your Contributions


Authors can contribute with articles that illustrate

  • Research Results

  • Projects / Applications

  • Methodologies / Algorithms

  • Surveys / Scholarly Reviews

  • Case Studies

  • Industrial experiences

  • Book Reviews.





Such an all-inclusive Journal allows researchers across the disciplines to better appreciate these advances without the need to search more specialist Journals.

Important dates ( For Volume 4, No 3, June 2016 )


  • Submission Deadline : 15 June 2016

  • Authors Notification : 25 June 2016

  • Publication Date : 05 July 2016




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