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An approximate search engine for structural databases
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Source International Conference on Management of Data archive
Proceedings of the 2000 ACM SIGMOD international conference on Management of data table of contents
Dallas, Texas, United States
Page: 584  
Year of Publication: 2000
ISBN:1-58113-217-4
Also published in ...
Authors
Jason T. L. Wang  Dept. of CIS, NJIT, NJ
Xiong Wang
Dennis Shasha  Courant Institute of Mathematical Sciences, New York, University, New York, NY
Bruce A. Shapiro  Experimental and Computational Biology Lab, National, Cancer Institute, Frederick, MD
Kaizhong Zhang  Dept. of Computer Science, University of Western Ontario, London, Ontario, N6A 5B7, Canada
Qicheng Ma  Dept. of CIS, NJIT, NJ
Zasha Weinberg  Dept. of Computer Science & Engineering, University of, Washington, Seattle, WA
Sponsor
SIGMOD: ACM Special Interest Group on Management of Data
Publisher
ACM  New York, NY, USA
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ABSTRACT

When a person interested in a topic enters a keyword into a Web search engine, the response is nearly instantaneous (and sometimes overwhelming). The impressive speed is due to clever inverted index structures, caching, and a domain-independent knowledge of strings. Our project seeks to construct algorithms, data structures, and software that approach the speed of keyword-based search engines for queries on structural databases.A structural database is one whose data objects include trees, graphs, or a set of interrelated labeled points in two, three, or higher dimensional space. Examples include databases holding (i) protein secondary and tertiary structure, (ii) phylogenetic trees, (iii) neuroanatomical networks, (iv) parse trees, (v) molecular diagrams, and (vi) XML documents. Comparison queries on such databases require solving variants of the graph isomorphism or subisomorphism problems (for which all known algorithms are exponential), so we have explored a large heuristic space.



Collaborative Colleagues:
Jason T. L. Wang: colleagues
Xiong Wang: colleagues
Dennis Shasha: colleagues
Bruce A. Shapiro: colleagues
Kaizhong Zhang: colleagues
Qicheng Ma: colleagues
Zasha Weinberg: colleagues

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