There is a newer version of the record available.

Published April 6, 2018 | Version April 2018 (v.1)
Dataset Open

Dividing the Ontology Alignment Task

  • 1. City, University of London
  • 2. Medical University of Vienna
  • 3. University of Oxford
  • 4. Miami University

Description

Large ontologies still pose serious challenges to state of the art ontology alignment systems. In the paper we present an approach that combines a lexical index, a neural embedding model and locality modules to effectively segment an input ontology matching task into smaller and more tractable (sub)matching tasks. We have conducted a comprehensive evaluation using the datasets of the Ontology Alignment Evaluation Initiative. The results are encouraging and suggest that the proposed methods are adequate in practice and can be integrated within the workflow of state of the art systems.

Notes

Material to support a paper submission.

Files

inverted_files_Lexl.zip

Files (568.9 MB)

Name Size Download all
md5:74f25966a9f94d2698022dac19535ca3
3.6 MB Preview Download
md5:0a03afb3800b2d2d68deb861d493f58b
5.1 MB Preview Download
md5:c7b7ad3119ba9dec47d65d586d11814b
3.3 kB Preview Download
md5:ceb7774e36645c3236d771e21d899256
212.6 MB Preview Download
md5:e3aa28ca728ac8d6db909331eebafee7
997.3 kB Preview Download
md5:791a351bb4e3234bd02d429c03c781ee
79.1 kB Download
md5:f091942404aa197a78358fcaee928872
78.4 kB Download
md5:59a27336906a174537c5bf1361992028
18.8 MB Preview Download
md5:39d35e7f5c36471773cc4fd77971d5ab
29.5 MB Preview Download
md5:3183a8b2f27384cf54c86d64062d74f7
165.3 MB Preview Download
md5:e7727018431de4b5728d2b958e239248
9.7 MB Preview Download
md5:ae0f655ebf892d77308c2fd6925297e9
117.0 MB Preview Download
md5:d0c5410b47caa8bc129716e90e154a65
6.1 MB Preview Download