Affiliation:
1. Northeastern University, Boston, MA, USA
2. Technion—Israel Institute of Technology, Technion City, Haifa, Israel
Abstract
Schema matching is a core task of any data integration process. Being investigated in the fields of databases, AI, Semantic Web, and data mining for many years, the main challenge remains the ability to generate quality matches among data concepts (e.g., database attributes). In this work, we examine a novel angle on the behavior of humans as matchers, studying match creation as a process. We analyze the dynamics of common evaluation measures (precision, recall, and f-measure), with respect to this angle and highlight the need for unbiased matching to support this analysis. Unbiased matching, a newly defined concept that describes the common assumption that human decisions represent reliable assessments of schemata correspondences, is, however, not an inherent property of human matchers. In what follows, we design
PoWareMatch
that makes use of a deep learning mechanism to calibrate and filter human matching decisions adhering to the quality of a match, which are then combined with algorithmic matching to generate better match results. We provide an empirical evidence, established based on an experiment with more than 200 human matchers over common benchmarks, that
PoWareMatch
predicts well the benefit of extending the match with an additional correspondence and generates high-quality matches. In addition,
PoWareMatch
outperforms state-of-the-art matching algorithms.
Publisher
Association for Computing Machinery (ACM)
Subject
Information Systems and Management,Information Systems
Reference63 articles.
1. 2021. Data. Retrieved April 19 2022 from https://github.com/shraga89/PoWareMatch/tree/master/DataFiles. (2021).
2. 2021. Graphs. Retrieved on April 19 2022 from https://github.com/shraga89/PoWareMatch/tree/master/Eval_graphs. (2021).
3. 2021. OAEI benchmark. Retrieved on April 19 2022 from http://oaei.ontologymatching.org/2011/benchmarks. (2021).
4. 2021. Ontobuilder research environment. Retrieved on April 19 2022 from https://github.com/shraga89/Ontobuilder-Research-Environment. (2021).
5. 2021. PoWareMatch Configuration. Retrieved on April 19 2022 from https://github.com/shraga89/PoWareMatch/blob/master/RunFiles/config.py. (2021).
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