Conference Proceedings
Spatial Object Recommendation with Hints: When Spatial Granularity Matters
H Luo, J Zhou, Z Bao, S Li, JS Culpepper, H Ying, H Liu, H Xiong
SIGIR 2020 Proceedings of the 43rd International ACM SIGIR Conference on Research and Development in Information Retrieval | Published : 2020
Abstract
Existing spatial object recommendation algorithms generally treat objects identically when ranking them. However, spatial objects often cover different levels of spatial granularity and thereby are heterogeneous. For example, one user may prefer to be recommended a region (say Manhattan), while another user might prefer a venue (say a restaurant). Even for the same user, preferences can change at different stages of data exploration. In this paper, we study how to support top-k spatial object recommendations at varying levels of spatial granularity, enabling spatial objects at varying granularity, such as a city, suburb, or building, as a Point of Interest (POI). To solve this problem, we pr..
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Grants
Awarded by Google
Funding Acknowledgements
This work was partially supported by NSFC 71531001 and 91646204, ARC DP180102050, DP200102611, DP190101113, and Google Faculty Research Awards.