[Apologies for Cross-Posting]

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CALL FOR PAPERS
18th ACM SIGKDD Conference on Knowledge Discovery and Data Mining (KDD-2012)
August 12-16, 2012
Beijing, China

http://www.kdd.org/kdd2012/

Key Dates:
Papers due: February 10, 2012
Acceptance notification: May 4, 2012

Paper submission and reviewing will be handled electronically. Authors should 
consult the conference Web site for full details regarding paper preparation 
and submission guidelines.

Papers submitted to KDD 2012 should be original work and substantively 
different from papers that have been previously published or are under review 
in a journal or another conference/workshop.
As per KDD tradition, reviews are not double-blind, and author names and 
affiliations should be listed.
Due to the large number of submissions, papers submitted to the research track 
will not be considered for publication in the industry/government track and 
vice-versa. Authors are encouraged to carefully read the conference CFP and 
choose an appropriate track for their submissions. In case of doubts, authors 
are encouraged to get in touch with the chairs of the corresponding track at 
least a week before the submission deadline.


RESEARCH TRACK

We invite submission of papers describing innovative research on all aspects of 
knowledge discovery and data mining. Examples of topic of interest include (but 
are not limited to): association analysis, classification and regression 
methods, semi-supervised learning, clustering, factorization, transfer and 
multi-task learning, feature selection, social networks, mining of graph data, 
temporal and spatial data analysis, scalability, privacy, security, 
visualization, text analysis, Web mining, mining mobile data, recommender 
systems, bioinformatics, e-commerce, online advertising, anomaly detection, and 
knowledge discovery from big data, including the data on the cloud. Papers 
emphasizing theoretical foundations, novel modeling and algorithmic approaches 
to specific data mining problems in scientific, business, medical, and 
engineering applications are particularly encouraged. We welcome submissions by 
authors who are new to the KDD conference, as well as visionary papers on new 
and emerging topics. Authors are explicitly discouraged from submitting papers 
that contain only incremental results and that do not provide significant 
advances over existing approaches.  Application oriented papers that make 
innovative technical contributions to research are welcome.

Submitted papers will be assessed based on their novelty, technical quality, 
potential impact, and clarity of writing. For papers that rely heavily on 
empirical evaluations, the experimental methods and results should be clear, 
well executed, and repeatable. Authors are strongly encouraged to make data and 
code publicly available whenever possible.

INDUSTRY & GOVERNMENT TRACK

The Industrial/Government Applications Track solicits papers describing 
implementations of KDD solutions relevant to industrial or government settings. 
The primary emphasis is on papers that advance the understanding of practical, 
applied, or pragmatic issues related to the use of KDD technologies in industry 
and government and highlight new research challenges arising from attempts to 
create such real KDD applications. Applications can be in any field including, 
but not limited to: e-commerce, medical and pharmaceutical, defense, public 
policy, finance, engineering, environment, manufacturing, telecommunications, 
and government.

The Industrial/Government Applications Track will consist of 
competitively-selected contributed papers. Submitters must clearly identify in 
which of the following three sub-areas their paper should be evaluated as 
distinct review criteria will be used to evaluate each category of submission.

*       Deployed KDD systems that are providing real value to industry, 
Government, or other organizations or professions. These deployed systems could 
support ongoing knowledge discovery or could be applications that employ 
discovered knowledge, or some combination of the two.

*       Discoveries of knowledge with demonstrable value to Industry, 
Government, or other users (e.g., scientific or medical professions). This 
knowledge must be "externally validated" as interesting and useful; it can not 
simply be a model that has better performance on some traditional KDD metric 
such as accuracy or area under the curve.

*       Emerging applications and technology that provide insight relevant to 
the above value propositions. These emerging applications must have clear user 
interest and support to distinguish them from KDD research papers, or they must 
provide insight into issues and factors that affect the successful use of KDD 
technology and methods. Papers that describe infrastructure that enables the 
large-scale deployment of KDD techniques also are in this area.



ON BEHALF OF THE KDD-2012 ORGANIZERS

Research Program Co-chairs:
*       Deepak Agarwal, Yahoo! Research
*       Jian Pei, Simon Fraser University

Industry and Government Program Co-chairs:
*       Michael Zeller, Zementis
*       Hui Xiong, Rutgers University

General Chair:
*       Qiang Yang, HKUST

Associate General Chair
*       Dou Shen, CityGrid Media

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