Complete Semantics to empower Touristic Service Providers
June 19, 2017 Β· Declared Dead Β· π OTM Conferences
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Authors
Zaenal Akbar, Elias KΓ€rle, Oleksandra Panasiuk, Umutcan ΕimΕek, Ioan Toma, Dieter Fensel
arXiv ID
1706.05995
Category
cs.IR: Information Retrieval
Citations
17
Venue
OTM Conferences
Last Checked
4 months ago
Abstract
The tourism industry has a significant impact on the world's economy, contributes 10.2% of the world's gross domestic product in 2016. It becomes a very competitive industry, where having a strong online presence is an essential aspect for business success. To achieve this goal, the proper usage of latest Web technologies, particularly schema.org annotations is crucial. In this paper, we present our effort to improve the online visibility of touristic service providers in the region of Tyrol, Austria, by creating and deploying a substantial amount of semantic annotations according to schema.org, a widely used vocabulary for structured data on the Web. We started our work from Tourismusverband (TVB) Mayrhofen-Hippach and all touristic service providers in the Mayrhofen-Hippach region and applied the same approach to other TVBs and regions, as well as other use cases. The rationale for doing this is straightforward. Having schema.org annotations enables search engines to understand the content better, and provide better results for end users, as well as enables various intelligent applications to utilize them. As a direct consequence, the region of Tyrol and its touristic service increase their online visibility and decrease the dependency on intermediaries, i.e. Online Travel Agency (OTA).
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