Bilenko et al., 2002 - Google Patents
Learning to combine trained distance metrics for duplicate detection in databasesBilenko et al., 2002
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- 4614869269489663119
- Author
- Bilenko M
- Mooney R
- Publication year
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The problem of identifying approximately duplicate records in databases has previously been studied as record linkage, the merge/purge problem, hardening soft databases, and field matching. Most existing approaches have focused on efficient algorithms for locating …
- 238000001514 detection method 0 title abstract description 25
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