Sciweavers

SIGMOD
2005
ACM

SHIFT-SPLIT: I/O Efficient Maintenance of Wavelet-Transformed Multidimensional Data

15 years 17 days ago
SHIFT-SPLIT: I/O Efficient Maintenance of Wavelet-Transformed Multidimensional Data
The Discrete Wavelet Transform is a proven tool for a wide range of database applications. However, despite broad acceptance, some of its properties have not been fully explored and thus not exploited, particularly for two common forms of multidimensional decomposition. We introduce two novel operations for wavelet transformed data, termed SHIFT and SPLIT, based on the properties of wavelet trees, which work directly in the wavelet domain. We demonstrate their significance and usefulness by analytically proving six important results in four common data maintenance scenarios, i.e., transformation of massive datasets, appending data, approximation of data streams and partial data reconstruction, leading to significant I/O cost reduction in all cases. Furthermore, we show how these operations can be further improved in combination with the optimal coefficient-to-diskblock allocation strategy. Our exhaustive set of empirical experiments with real-world datasets verifies our claims.
Mehrdad Jahangiri, Dimitris Sacharidis, Cyrus Shah
Added 08 Dec 2009
Updated 08 Dec 2009
Type Conference
Year 2005
Where SIGMOD
Authors Mehrdad Jahangiri, Dimitris Sacharidis, Cyrus Shahabi
Comments (0)