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ACML 2016 : 8th Asian Conference on Machine LearningConference Series : Asian Conference on Machine Learning | |||||||||||
Link: http://www.acml-conf.org/2016/ | |||||||||||
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Call For Papers | |||||||||||
*Call For Papers -- ACML 2016*
http://acml-conf.org/2016 The 8th Asian Conference on Machine Learning (ACML2016) will be held at the University of Waikato, Hamilton, New Zealand on November 16-18, 2016. The conference aim is to provide a leading international forum for researchers in machine learning and related fields to share their new ideas, progresses and achievements. Submissions from regions other than the Asia-Pacific are highly encouraged. The conference calls for high-quality, original research papers in the theory and practice of machine learning. The conference also solicits proposals focusing on frontier research, new ideas and new paradigms in machine learning. This year we are running *two publication tracks*: Authors may submit either to the *conference track*, for which the proceedings will be published as a volume of Journal of Machine Learning Research (JMLR): Workshop and Conference Proceedings series, or to the *journal track* for which accepted papers will appear in a special issue of the Springer journal Machine Learning. Please note that submission arrangements for the two tracks are different - there are different deadlines and conference track papers are submitted via CMT and journal track papers are submitted via Springer's Editorial Manager system -- submission deadlines follow below, but please see the conference website http://acml-conf.org/2016/authors/call-for-papers/ for other details. *Important Dates* Journal Track Submission Deadlines: March, 21 2016 April, 4 2016 April, 18 2016 May, 2 2016 Conference Track Submission Deadlines: Early Submission Deadline May 9, 2016 Final Submission Deadline August, 15 2016 Deadlines are all 23:59 Pacific Standard Time (PST) Topics of interest include but are not limited to: Learning problems Active learning Bayesian machine learning Deep learning, latent variable models Dimensionality reduction Feature selection Graphical models Learning for big data Learning in graphs Multiple instance learning Multi-objective learning Multi-task learning Semi-supervised learning Sparse learning Structured output learning Supervised learning Online learning Transfer learning Unsupervised learning Analysis of learning systems Computational learning theory Experimental evaluation Knowledge refinement Reproducible research Statistical learning theory Applications Bioinformatics Biomedical information Collaborative filtering Healthcare Computer vision Human activity recognition Information retrieval Natural language processing Social networks Web search Learning in knowledge-intensive systems Knowledge refinement and theory revision Multi-strategy learning Other systems We look forward to your submissions, and to welcoming you to Hamilton in November! Bob Durrant Kee-Eung Kim ACML 2016 Program Committee Chairs |
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