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DaWaK 2012 : 14th International Conference on Data Warehousing and Knowledge Discovery

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Conference Series : Data Warehousing and Knowledge Discovery
 
Link: http://www.dexa.org/dawak2012
 
When Sep 3, 2012 - Sep 7, 2012
Where Vienna, Austria
Abstract Registration Due Mar 19, 2012
Submission Deadline Mar 26, 2012
Notification Due May 14, 2012
Final Version Due Jun 10, 2012
Categories    data mining   databases   data warehousing   knowledge discovery
 

Call For Papers

Call for Papers - DaWaK '12
14th International Conference on Data Warehousing and Knowledge Discovery - DaWaK 2012
Vienna (Austria)
September 3 - 7, 2012


Data Warehousing and Knowledge Discovery has been widely accepted as a key technology for enterprises and organizations to improve their abilities in data analysis, decision support, and the automatic extraction of knowledge from data. With the exponentially growing amount of information to be included in the decision making process, the data to be considered becomes more and more complex in both structure and semantics. New developments such as cloud computing add to the challenges with massive scaling, a new computing infrastructure, and new types of data. Consequently, the process of retrieval and knowledge discovery from this huge amount of heterogeneous complex data builds the litmus-test for the research in the area.

During the past years, the International Conference on Data Warehousing and Knowledge Discovery (DaWaK) has become one of the most important international scientific events to bring together researchers, developers and practitioners to discuss latest research issues and experiences in developing and deploying data warehousing and knowledge discovery systems, applications, and solutions. This year’s conference (DaWaK 2012), builds on this tradition of facilitating the cross-disciplinary exchange of ideas, experience and potential research directions. DaWaK 2012 seeks to introduce innovative principles, methods, algorithms and solutions to challenging problems faced in the development of data warehousing, knowledge discovery, data mining applications, and the emerging area of "cloud intelligence".

Submissions presenting current research work on both theoretical and practical aspects of data warehousing and knowledge discovery are encouraged. Particularly, we strongly welcome submissions dealing with emerging real world applications such as real-time data warehousing, analysis of spatial and spatiotemporal data, OLAP mining, mobile OLAP, and mining science data (e.g. bioinformatics, geophysics).
Major Tracks

DaWaK 2012 is again organized into 4 tracks, each with a distinct focus. The four tracks, and their main topics are as follows:
Cloud Intelligence Track:

Massive data analytics: algorithms, techniques, and systems
Scalability and parallelization for cloud intelligence: map-reduce and beyond
Analytics for the cloud infrastructure
Analytics for unstructured, semi-structured, and structured data
Semantic web intelligence
Analytics for temporal, spatial, spatio-temporal, and mobile data
Analytics for data streams and sensor data
Analytics for multimedia data
Analytics for social networks
Real-time/right-time and event-based analytics
Privacy and security in cloud intelligence
Reliability and fault tolerance in cloud intelligence

Data Warehousing Track:

Analytical front-end tools for DW and OLAP
Data warehouse architecture
Data extraction, cleansing, transforming and loading
Data warehouse design (conceptual, logical and physical)
Multidimensional modelling and queries
Data warehousing consistency and quality
Data warehouse maintenance and evolution
Performance optimization and tuning
Implementation/compression techniques
Data warehouse metadata

Knowledge Discovery:

Data mining techniques: clustering, classification, association rules, decision trees, etc.
Data and knowledge representation
Knowledge discovery framework and process, including pre- and post-processing
Integration of data warehousing, OLAP and data mining
Integrating constraints and knowledge in the KDD process
Exploring data analysis, inference of causes, prediction
Evaluating, consolidating, and explaining discovered knowledge
Statistical techniques for generation a robust, consistent data model
Interactive data exploration/visualization and discovery
Languages and interfaces for data mining
Mining Trends, Opportunities and Risks
Mining from low-quality information sources

Industry and Applications Track:

Data warehousing tools
OLAP and analytics tools
Data mining tools
Industry experiences
Data warehousing applications: corporate, scientific, government, healthcare, bioinformatics, etc.
Data mining applications: bioinformatics, E-commerce, Web, intrusion/fraud detection, finance, healthcare, marketing, telecommunications, etc
Data mining support for designing information systems
Business Process Intelligence (BPI)

Paper Submission Details

Authors are invited to submit research and application papers representing original, previously unpublished work. Papers should be submitted in PDF or Word format.

Submission Online at: DaWaK 2012 Submission site

Submissions must conform to Springer's LNCS format and should not exceed 12 pages (including all text, figures, references and appendices). Authors who want to buy extra pages may submit a paper up to 15 pages with the indication that the authors will purchase extra pages if the paper is accepted. Submissions which do not conform to the LNCS format and/or which do exceed 12 pages (or up to 15 pages with the extra page purchase commitment) will be rejected without reviews. Submitted papers will be carefully evaluated based on originality, significance, technical soundness, and clarity of exposition. All accepted papers will be published in Lecture Notes in Computer Science (LNCS) by Springer-Verlag.

Duplicate submissions are not allowed. A submission is considered to be a duplicate submission if it is submitted to other conferences/workshops/journals or it has been already accepted to be published in other conferences/workshops/journals. Duplicate submissions thus will be automatically rejected without reviews. Submissions require explicit consent from all listed authors.

Authors of best papers selected from DaWaK 2012 conference will be invited to submit an extension for a special issue of LNCS Transactions on Large-Scale Data- and Knowledge-Centered Systems, edited by Springer-Verlag. Authors are requested to send the abstract of their paper to be received by March 19, 2012, due date of the full paper electronic submission is March 26, 2012.

For further inquiries, contact the DaWaK 2012 PC Co-Chairpersons: Alfredo Cuzzocrea (cuzzocrea@si.deis.unical.it), or Umeshwar Dayal (Umeshwar.Dayal@hp.com)
IMPORTANT DATES

Submission of abstracts: March 19, 2012
Submission of full papers: March 26, 2012
Notification of acceptance: May 14, 2012
Camera-ready copies due: June 10, 2012

Program Chairs

Alfredo Cuzzocrea, ICAR-CNR and University of Calabria, Italy
Umeshwar Dayal, Hewlett-Packard Laboratories, Palo Alto, CA, USA

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