*Result*: Topic profiling benchmarks in the linked open data cloud: Issues and lessons learned.

Title:
Topic profiling benchmarks in the linked open data cloud: Issues and lessons learned.
Source:
Semantic Web (1570-0844); 2019, Vol. 10 Issue 2, p329-348, 20p
Database:
Complementary Index

*Further Information*

*Topical profiling of the datasets contained in the Linking Open Data (LOD) cloud has been of interest since such kind of data became available within the Web. Different automatic classification approaches have been proposed in the past, in order to overcome the manual task of assigning topics for each and every individual (new) dataset. Although the quality of those automated approaches is comparably sufficient, it has been shown, that in most cases a single topical label per dataset does not capture the topics described by the content of the dataset. Therefore, within the following study, we introduce a machine-learning based approach in order to assign a single topic, as well as multiple topics for one LOD dataset and evaluate the results. As part of this work, we present the first multi-topic classification benchmark for LOD cloud datasets, which is freely accessible. In addition, the article discusses the challenges and obstacles, which need to be addressed when building such a benchmark. [ABSTRACT FROM AUTHOR]

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