Designing e-services for tourist today implies to deal with a large amount of data and metadata that developers should be able to exploit for generating user perceived values. By integrating a Recommender System on a Big Data platform, we constructed the horizontal infrastructure for managing these services in an application-neutral layer. In this chapter, we revise the design choices followed to implement this service layer, highlighting the data processing and architectural patterns we selected. More specifically, we first introduce the relevant notions related to Big Data technologies, we discussed the evolving trends in Tourism, and we introduce fundaments for designing Recommender Systems. This part provides us with a set of requirements to be fulfilled in order to integrate these different components. We then propose an architecture and a set of algorithms to support these requirements. This design process guided the implementation of an innovative e-service platform for tourist operators in Italy.

Bellandi, V., Ceravolo, P., Damiani, E., Tacchini, E., Designing a Recommender System for Touristic Activities in a Big Data as a Service Platform., in Anna Esposit, A. E., Antonietta M. Esposit, A. M. E., Lakhmi C. Jai, L. C. J. (ed.), Innovations in Big Data Mining and Embedded Knowledge. Intelligent Systems Reference Library, vol 159., Springer Nature, -- 2019: 13- 33. 10.1007/978-3-030-15939-9_2 [http://hdl.handle.net/10807/166074]

Designing a Recommender System for Touristic Activities in a Big Data as a Service Platform.

Tacchini, Eugenio
Ultimo
2019

Abstract

Designing e-services for tourist today implies to deal with a large amount of data and metadata that developers should be able to exploit for generating user perceived values. By integrating a Recommender System on a Big Data platform, we constructed the horizontal infrastructure for managing these services in an application-neutral layer. In this chapter, we revise the design choices followed to implement this service layer, highlighting the data processing and architectural patterns we selected. More specifically, we first introduce the relevant notions related to Big Data technologies, we discussed the evolving trends in Tourism, and we introduce fundaments for designing Recommender Systems. This part provides us with a set of requirements to be fulfilled in order to integrate these different components. We then propose an architecture and a set of algorithms to support these requirements. This design process guided the implementation of an innovative e-service platform for tourist operators in Italy.
2019
Inglese
Innovations in Big Data Mining and Embedded Knowledge. Intelligent Systems Reference Library, vol 159.
978-3-030-15938-2
Springer Nature
Bellandi, V., Ceravolo, P., Damiani, E., Tacchini, E., Designing a Recommender System for Touristic Activities in a Big Data as a Service Platform., in Anna Esposit, A. E., Antonietta M. Esposit, A. M. E., Lakhmi C. Jai, L. C. J. (ed.), Innovations in Big Data Mining and Embedded Knowledge. Intelligent Systems Reference Library, vol 159., Springer Nature, -- 2019: 13- 33. 10.1007/978-3-030-15939-9_2 [http://hdl.handle.net/10807/166074]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10807/166074
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