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DaWaK 2014 : 16th International Conference on Data Warehousing and Knowledge DiscoveryConference Series : Data Warehousing and Knowledge Discovery | |||||||||||
Link: http://www.dexa.org/dawak2014 | |||||||||||
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Call For Papers | |||||||||||
Three Special Issues on the best papers from DAWAK '14 will be expanded and revised for possible inclusion in:
Knowledge and Information Systems: An International Journal, Springer. Impact Factor=2.225 Journal of Concurrency and Computation: Practice and Experience, Wiley. Impact Factor: 0.845 Transactions on Large-scale Data- and Knowledge Centered Systems - TLDKS, Springer Keynote Speaker: Professor Sanjay Madria Director of the Web and Wireless Computing Lab., Missouri University of Science and Technology, USA 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 and Big Data 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. Submissions presenting current research work on both theoretical and practical aspects of Big Data, Data Warehousing and Knowledge Discovery are encouraged. DaWaK 2014 is organized into 4 tracks as follows: Big Data and Cloud Intelligence Track: Big Data Storage Big Data Query Languages and Optimization Big Data Analytics and User Interfaces Big Indexes 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 Energy based design and deployment 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 Data Warehousing for real time queries Integration of data warehousing and machine learning Scalability Semantic Data warehouses 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: Big Data Analytics Applications 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 2014 Submission site Submissions must conform to Springer's LNCS format and should not exceed 12 pages. All accepted papers will be published in LNCS by Springer-Verlag. Authors of selected best papers from DaWaK 2014 will be invited to submit the extended paper for a special issue of LNCS Transactions on Large-Scale Data and Knowledge-Centered Systems. For further inquiries, contact the DaWaK 2014 PC chairs IMPORTANT DATES Submission of abstracts: March 17, 2014 Submission of full papers: March 31, 2014 Notification of acceptance: May 19, 2014 Camera-ready copies due: June 09, 2014 |
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