While the current Web provides access to an enormous amount of information, it is currently only human-readable. In response to this problem, the Semantic Web allows for explicit representation of the Semantics of data so that it is machine interpretable. <em>Semantic Web for Knowledge and Data Mana
Taxonomy Matching Using Background Knowledge: Linked Data, Semantic Web and Heterogeneous Repositories
โ Scribed by Heiko Angermann,Naeem Ramzan (auth.)
- Publisher
- Springer International Publishing
- Year
- 2017
- Tongue
- English
- Leaves
- 108
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
This important text/reference presents a comprehensive review of techniques for taxonomy matching, discussing matching algorithms, analyzing matching systems, and comparing matching evaluation approaches. Different methods are investigated in accordance with the criteria of the Ontology Alignment Evaluation Initiative (OAEI). The text also highlights promising developments and innovative guidelines, to further motivate researchers and practitioners in the field.
Topics and features: discusses the fundamentals and the latest developments in taxonomy matching, including the related fields of ontology matching and schema matching; reviews next-generation matching strategies, matching algorithms, matching systems, and OAEI campaigns, as well as alternative evaluations; examines how the latest techniques make use of different sources of background knowledge to enable precise matching between repositories; describes the theoretical background, state-of-the-art research, and practical real-world applications; covers the fields of dynamic taxonomies, personalized directories, catalog segmentation, and recommender systems.This stimulating book is an essential reference for practitioners engaged in data science and business intelligence, and for researchers specializing in taxonomy matching and semantic similarity assessment. The work is also suitable as a supplementary text for advanced undergraduate and postgraduate courses on information and metadata management.
โฆ Table of Contents
Front Matter ....Pages i-xiv
Front Matter ....Pages 1-1
Background Taxonomy Matching (Heiko Angermann, Naeem Ramzan)....Pages 3-13
Background of Taxonomic Heterogeneity (Heiko Angermann, Naeem Ramzan)....Pages 15-24
Front Matter ....Pages 25-25
Matching Techniques, Algorithms, and Systems (Heiko Angermann, Naeem Ramzan)....Pages 27-50
Matching Evaluations and Datasets (Heiko Angermann, Naeem Ramzan)....Pages 51-68
Front Matter ....Pages 69-69
Related Areas (Heiko Angermann, Naeem Ramzan)....Pages 71-83
Front Matter ....Pages 85-85
Conclusions (Heiko Angermann, Naeem Ramzan)....Pages 87-90
Back Matter ....Pages 91-103
โฆ Subjects
Pattern Recognition
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