FusE: Entity-Centric Data Fusion on Linked Data

Thoma S, Thalhammer A, Harth A, Studer R (2019)


Publication Language: English

Publication Type: Journal article, Original article

Publication year: 2019

Journal

Book Volume: 13

Article Number: 8

Journal Issue: 2

URI: https://dl.acm.org/citation.cfm?id=3313948πcked=prox

DOI: 10.1145/3306128

Abstract

Many current web pages include structured data which can directly be processed and used. Search engines, in particular, gather that structured data and provide question answering capabilities over the integrated data with an entity-centric presentation of the results. Due to the decentralized nature of the web, multiple structured data sources can provide similar information about an entity. But data from different sources may involve different vocabularies and modeling granularities, which makes integration difficult. We present FusE, an approach that identifies similar entity-specific data across sources, independent of the vocabulary and data modeling choices. We apply our method along the scenario of a trustable knowledge panel, conduct experiments in which we identify and process entity data from web sources, and compare the output to a competing system. The results underline the advantages of the presented entity-centric data fusion approach.

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How to cite

APA:

Thoma, S., Thalhammer, A., Harth, A., & Studer, R. (2019). FusE: Entity-Centric Data Fusion on Linked Data. Acm Transactions on the Web, 13(2). https://dx.doi.org/10.1145/3306128

MLA:

Thoma, Steffen, et al. "FusE: Entity-Centric Data Fusion on Linked Data." Acm Transactions on the Web 13.2 (2019).

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