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Relational Data Mining with Inductive Logic Programming for Link Discovery (2004)
Raymond J. Mooney
, P. Melville, L. R. Tang, J. Shavlik, I. Dutra and D. Page
Link discovery
(LD) is an important task in data mining for counter-terrorism and is the focus of DARPA's Evidence Extraction and Link Discovery (EELD) research program. Link discovery concerns the identification of complex relational patterns that indicate potentially threatening activities in large amounts of relational data. Most data-mining methods assume data is in the form of a feature-vector (a single relational table) and cannot handle multi-relational data.
Inductive logic programming
is a form of relational data mining that discovers rules in first-order logic from multi-relational data. This paper discusses the application of ILP to learning patterns for link discovery.
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Citation:
Kargupta, H., Joshi, A., Sivakumar K., and Yesha, Y., editors,
Data Mining: Next Generation Challenges and Future Directions
:239--254, Menlo Park, CA, 2004. AAAI Press.
Bibtex:
@article{ld-bkchapter-04, title={Relational Data Mining with Inductive Logic Programming for Link Discovery}, author={Raymond J. Mooney and P. Melville and L. R. Tang and J. Shavlik and I. Dutra and D. Page}, journal={Data Mining: Next Generation Challenges and Future Directions}, editor={Kargupta, H., Joshi, A., Sivakumar K., and Yesha, Y.}, address={Menlo Park, CA}, publisher={AAAI Press}, pages={239--254}, url="http://nn.cs.utexas.edu/?ld-bkchapter-04", year={2004} }
People
Prem Melville
pmelvi [at] us ibm com
Raymond J. Mooney
mooney [at] cs utexas edu
Lappoon R. Tang
Undergraduate Alumni
ltang [at] utb edu
Areas of Interest
Inductive Logic Programming
Machine Learning