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KDD 2016 : 22nd ACM SIGKDD international conference on knowledge discovery and data mining


Conference Series : Knowledge Discovery and Data Mining
When Aug 13, 2016 - Aug 17, 2016
Where San Francisco, USA
Submission Deadline Feb 12, 2016
Notification Due May 12, 2016
Final Version Due Jun 10, 2016
Categories    data science   machine learning   data mining   knowledge discovery

Call For Papers

KDD 2016, a premier interdisciplinary conference, brings together researchers and practitioners from data science, data mining, knowledge discovery, large-scale data analytics, and big data.

We invite submission of papers describing innovative research on all aspects of knowledge discovery and data mining, ranging from theoretical foundations to novel models and algorithms for data mining problems in science, business, medicine, and engineering. Visionary papers on new and emerging topics are also welcome, as are application-oriented papers that make innovative technical contributions to research. Authors are explicitly discouraged from submitting incremental results that do not provide significant advances over existing approaches.

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