Automatic complex schema matching across web query interfaces: A correlation mining approach (2003)
| Venue: | ACM Transactions on Database Systems |
| Citations: | 18 - 3 self |
BibTeX
@ARTICLE{He03automaticcomplex,
author = {Bin He and Kevin Chen-chuan Chang},
title = {Automatic complex schema matching across web query interfaces: A correlation mining approach},
journal = {ACM Transactions on Database Systems},
year = {2003},
volume = {31},
pages = {346--395}
}
Years of Citing Articles
OpenURL
Abstract
To enable information integration, schema matching is a critical step for discovering semantic correspondences of attributes across heterogeneous sources. While complex matchings are common, because of their far more complex search space, most existing techniques focus on simple 1:1 matchings. To tackle this challenge, this article takes a conceptually novel approach by viewing schema matching as correlation mining, for our task of matching Web query interfaces to integrate the myriad databases on the Internet. On this “deep Web, ” query interfaces generally form complex matchings between attribute groups (e.g., {author} corresponds to {first name, last name} in the Books domain). We observe that the co-occurrences patterns across query interfaces often reveal such complex semantic relationships: grouping attributes (e.g., {first name, last name}) tend to be co-present in query interfaces and thus positively correlated. In contrast, synonym attributes are negatively correlated because they rarely co-occur. This insight enables us to discover complex matchings by a correlation mining approach. In particular, we develop the DCM framework, which consists of data preprocessing, dual mining of positive and negative correlations, and finally matching construction. We evaluate the DCM framework on manually extracted interfaces and the results show good accuracy for discovering complex matchings. Further, to automate the







