Recommendation systems (RSs) are increasing their popularity in recent years. Many big IT companies like Google, Amazon and Netflix, have a RS at the core of their business. In this paper, we propose a modular platform for enhancing a RS for the tourism domain with a crowding forecaster, which is able to produce an estimation about the current and future occupation of different Points of Interest (PoIs) by taking into consideration also contextual aspects. The main advantage of the proposed system is its modularity and the ability to be easily tailored to different application domains. Moreover, the use of standard and pluggable components allows the system to be integrated in different application scenarios.

A Context-Aware Recommendation System with a Crowding Forecaster

Anna Dalla Vecchia;Sara Migliorini;Elisa Quintarelli;Alberto Belussi
2023-01-01

Abstract

Recommendation systems (RSs) are increasing their popularity in recent years. Many big IT companies like Google, Amazon and Netflix, have a RS at the core of their business. In this paper, we propose a modular platform for enhancing a RS for the tourism domain with a crowding forecaster, which is able to produce an estimation about the current and future occupation of different Points of Interest (PoIs) by taking into consideration also contextual aspects. The main advantage of the proposed system is its modularity and the ability to be easily tailored to different application domains. Moreover, the use of standard and pluggable components allows the system to be integrated in different application scenarios.
2023
no
Inglese
ELETTRONICO
Esperti anonimi
3478
31st Symposium of Advanced Database Systems (SEBD 2023)
Galzingano Terme, Italy
July 2nd to 5th, 2023
Proceedings of the 31st Symposium of Advanced Database Systems
632
640
9
Recommendation systems
Crowding forecasting
Deep learning
open
DALLA VECCHIA, Anna; Migliorini, Sara; Quintarelli, Elisa; Belussi, Alberto
4
04 Contributo in atti di convegno::04.01 Contributo in atti di convegno
273
info:eu-repo/semantics/conferenceObject
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11562/1104926
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