Difference between revisions of "KDD 2016"
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{{Event | {{Event | ||
+ | |Acronym=KDD 2016 | ||
+ | |Title=22nd ACM SIGKDD Conference on Knowledge Discovery and Data Mining | ||
+ | |Series=KDD | ||
+ | |Type=Conference | ||
|Field=Data mining | |Field=Data mining | ||
− | | | + | |Start date=2016/12/13 |
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|End date=2016/12/17 | |End date=2016/12/17 | ||
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|Homepage=www.kdd.org/kdd2016/ | |Homepage=www.kdd.org/kdd2016/ | ||
− | | | + | |City=San Francisco |
− | | | + | |State=California |
+ | |Country=USA | ||
+ | |Submission deadline=2016/02/12 | ||
+ | |Submitted papers=1115 | ||
|Accepted papers=142 | |Accepted papers=142 | ||
− | | | + | |has Twitter=#KDD2016 |
}} | }} | ||
Call for papers | Call for papers |
Revision as of 18:15, 3 November 2021
Event Rating
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List of all ratings can be found at KDD 2016/rating
KDD 2016 | |
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22nd ACM SIGKDD Conference on Knowledge Discovery and Data Mining
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Event in series | KDD |
Dates | 2016/12/13 (iCal) - 2016/12/17 |
Homepage: | www.kdd.org/kdd2016/ |
Location | |
Location: | San Francisco, California, USA |
Important dates | |
Submissions: | 2016/02/12 |
Papers: | Submitted 1115 / Accepted 142 (12.7 %) |
Table of Contents | |
Call for papers
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.
Papers submitted to the Research Track are solicited in all areas of data mining, knowledge discovery, and large-scale data analytics, including, but not limited to:
- Big Data: Distributed data mining and machine learning platforms and algorithms, systems for large-scale data analytics of textual and graph data, large-scale machine learning systems, distributed computing (cloud, map-reduce, MPI), large-scale optimization, and novel statistical techniques for big data.
- Data Science: Methods for analyzing scientific data, business data, social network analysis, recommender systems, mining sequences, time series analysis, online advertising, bioinformatics, systems biology, text/web analysis, mining temporal and spatial data, and multimedia processing.
- Foundations of Data Mining: Data mining methodology, data mining model selection, visualization, asymptotic analysis, information theory, security and privacy, graph and link mining, rule and pattern mining, web mining, dimensionality reduction and manifold learning, combinatorial optimization, relational and structured learning, matrix and tensor methods, classification and regression methods, deep learning, semi-supervised learning, and unsupervised learning and clustering.