DocumentCode
1689545
Title
A strategy selection framework for adaptive prefetching in data visualization
Author
Rosario, G.E. ; Rundensteiner, E.A.
fYear
2003
Firstpage
107
Lastpage
116
Abstract
Accessing data stored in persistent memory represents a bottleneck for current visual exploration applications. Semantic caching of frequent queries at the client-side along with prefetching can improve performance of such systems. However, a prefetching setup that only uses one prefetching strategy may be insufficient because (1) different users have different exploration patterns, and (2) a user´s pattern may be changing within the same session. To solve this, existing research focuses on refining a single prefetching strategy. We, on the other hand, now propose a framework wherein prefetching strategies are adaptively selected over time across and within one user session. This work is the first to study adaptive prefetching in the context of visual data exploration. Specifically, we have implemented our proposed approach within XmdvTool, a freeware visualization system for multivariate data, and evaluated it using real user traces. Our results confirm that our approach improves system performance by dynamically selecting the most appropriate combination of prefetching strategies that adapts to the user´s changing patterns.
Keywords
artificial intelligence; data mining; data visualisation; query formulation; XmdvTool; adaptive prefetching; data access; data storage; data visualization; exploration pattern; multivariate data; persistent memory; semantic caching; strategy selection; user pattern; visual data exploration; visual exploration; Application software; Computer science; Data visualization; Displays; Humans; Marketing and sales; Navigation; Prefetching; Stock markets; System performance;
fLanguage
English
Publisher
ieee
Conference_Titel
Scientific and Statistical Database Management, 2003. 15th International Conference on
ISSN
1099-3371
Print_ISBN
0-7695-1964-4
Type
conf
DOI
10.1109/SSDM.2003.1214972
Filename
1214972
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