QAGView: Interactively Summarizing High-Valued Aggregate Query Answers

Methods for summarizing and diversifying query results have drawn significant attention recently, because they help present query results with lots of tuples to users in more informative ways. We present QAGView (Quick AGgregate View), which provides a holistic overview of high-valued aggregate quer...

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Veröffentlicht in:Proceedings - ACM-SIGMOD International Conference on Management of Data Jg. 2018; S. 1709
Hauptverfasser: Wen, Yuhao, Zhu, Xiaodan, Roy, Sudeepa, Yang, Jun
Format: Journal Article
Sprache:Englisch
Veröffentlicht: United States 01.06.2018
ISSN:0730-8078
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Zusammenfassung:Methods for summarizing and diversifying query results have drawn significant attention recently, because they help present query results with lots of tuples to users in more informative ways. We present QAGView (Quick AGgregate View), which provides a holistic overview of high-valued aggregate query answers to the user in the form of (showing high-level properties that emerge from subsets of answers) with guarantee (for a user-specified number of top-valued answers) that is both (avoiding overlapping or similar summaries) and (focusing on high-valued aggregate answers). QAGView allows users to view the high-level summaries as clusters, and to expand individual clusters for their constituent result tuples. Users can fine-tune the behavior of QAGView by specifying a number of parameters according their preference. To help users choose appropriate parameters interactively, QAGView employ a suite of optimizations that enable quick preview of how the quality of the summaries changes over wide ranges of parameter settings, as well as real-time visualization of how the summaries evolve in response to parameter updates.
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ISSN:0730-8078
DOI:10.1145/3183713.3193566