Affiliation:
1. Tsinghua University, China
2. The Hong Kong University of Science and Technology, China
3. The Chinese University of Hong Kong, China
Abstract
Matching keys, specifying
what attributes to compare
and
how to compare them
for identifying the same real-world entities, are found to be useful in applications like record matching, blocking and windowing [7]. Owing to the complex redundant semantics among matching keys, capturing a proper set of matching keys is highly non-trivial. Analogous to minimal/candidate keys w.r.t. functional dependencies, relative candidate keys (RCKs [7], with a minimal number of compared attributes, see a more formal definition in Section 2) can clear up redundant semantics w.r.t. "what attributes to compare". However, we note that redundancy issues may still exist among rcks on the same attributes about "how to compare them". In this paper, we propose to find a concise set of matching keys, which has
less redundancy
and can still meet the requirements on coverage and validity. Specifically, we study approximation algorithms to efficiently discover a near optimal set. To ensure the quality of matching keys, the returned results are guaranteed to be RCKs (minimal on compared attributes), and most importantly, minimal w.r.t. distance restrictions (i.e., redundancy free w.r.t. "how to compare the attributes"). The experimental evaluation demonstrates that our concise RCK set is more effective than the existing rck choosing method. Moreover, the proposed pruning methods show up to 2 orders of magnitude improvement w.r.t. time costs on concise RCK set discovery.
Subject
General Earth and Planetary Sciences,Water Science and Technology,Geography, Planning and Development
Cited by
7 articles.
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