Pixelizing Data Cubes: A Block-Based Approach

作者: Yeow Wei Choong , Anne Laurent , Dominique Laurent

DOI: 10.1007/978-3-540-71027-1_7

关键词:

摘要: Multidimensional databases are commonly used for decision making in the context of data warehouses. Considering multidimensional model, presented as hypercubes organized according to several dimensions. However, general, have more than three dimensions and contain a huge amount data, so cannot be easily visualized. In this paper, we show that cubes can visualized images by building blocks mostly same value. Blocks built up using an APriori-like algorithm each block is considered set pixels which colors depend on corresponding The key point our approach how display given its value while taking into account may overlap. address issue based Pixelization paradigm.

参考文章(27)
W. H. Inmon, Building the data warehouse (2nd ed.) John Wiley & Sons, Inc.. ,(1996)
Ben Shneiderman, Stuart K Card, Jock Mackinlay, B Shneiderman, Readings in Information Visualization: Using Vision to Think ,(1999)
Luca Cabibbo, Riccardo Torlone, A Logical Approach to Multidimensional Databases extending database technology. pp. 183- 197 ,(1998) , 10.1007/BFB0100985
Laks V. S. Lakshmanan, Marc Gyssens, A Foundation for Multi-dimensional Databases very large data bases. pp. 106- 115 ,(1997)
Christopher Graham Healey, James T. Enns, Kellog S. Booth, Effective visualization of large multidimensional datasets The University of British Columbia (Canada). ,(1996) , 10.14288/1.0051277
Panos Vassiliadis, Timos Sellis, A survey of logical models for OLAP databases international conference on management of data. ,vol. 28, pp. 64- 69 ,(1999) , 10.1145/344816.344869
Chris Stolte, Diane Tang, Pat Hanrahan, Query, analysis, and visualization of hierarchically structured data using Polaris Proceedings of the eighth ACM SIGKDD international conference on Knowledge discovery and data mining - KDD '02. pp. 112- 122 ,(2002) , 10.1145/775047.775064
Surajit Chaudhuri, Umeshwar Dayal, An overview of data warehousing and OLAP technology international conference on management of data. ,vol. 26, pp. 65- 74 ,(1997) , 10.1145/248603.248616