Interaction-enhanced and time-aware graph convolutional network for successive point-of-interest recommendation in traveling enterprises
Liu, Yuwen; Wu, Huiping; Rezaee, Khosro; Khosravi, Mohammad R.; Khalaf, Osamah Ibrahim; Khan, Arif Ali; Ramesh, Dharavath; Qi, Lianyong (2022-08-19)
Y. Liu et al., "Interaction-Enhanced and Time-Aware Graph Convolutional Network for Successive Point-of-Interest Recommendation in Traveling Enterprises," in IEEE Transactions on Industrial Informatics, vol. 19, no. 1, pp. 635-643, Jan. 2023, doi: 10.1109/TII.2022.3200067
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https://urn.fi/URN:NBN:fi-fe2023030229228
Tiivistelmä
Abstract
Extensive user check-in data incorporating user preferences for location is collected through Internet of Things (IoT) devices, including cell phones and other sensing devices in location-based social network. It can help traveling enterprises intelligently predict users’ interests and preferences, provide them with scientific tourism paths, and increase the enterprises income. Thus, successive point-of-interest (POI) recommendation has become a hot research topic in augmented Intelligence of Things (AIoT). Presently, various methods have been applied to successive POI recommendations. Among them, the recurrent neural network-based approaches are committed to mining the sequence relationship between POIs, but ignore the high-order relationship between users and POIs. The graph neural network-based methods can capture the high-order connectivity, but it does not take the dynamic timeliness of POIs into account. Therefore, we propose an I nteraction-enhanced and T ime-aware G raph C onvolution N etwork (ITGCN) for successive POI recommendation. Specifically, we design an improved graph convolution network for learning the dynamic representation of users and POIs. We also designed a self-attention aggregator to embed high-order connectivity into the node representation selectively. The enterprise management systems can predict the preferences of users, which is helpful for future planning and development. Finally, experimental results prove that ITGCN brings better results compared to the existing methods.
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