Spatial Object Recommendation with Hints: When Spatial Granularity Matters
Hui Luo, Jingbo Zhou, Zhifeng Bao, Shuangli Li, J. Shane Culpepper,, Haochao Ying, Hao Liu, Hui Xiong

TL;DR
This paper introduces a multi-task learning model called MPR that supports top-k spatial object recommendations at various spatial granularities, leveraging a POI tree and providing explainability through hints.
Contribution
It proposes a novel multi-level POI recommendation model that captures spatial containment and user-POI interactions, supporting recommendations at different spatial granularities.
Findings
MPR outperforms state-of-the-art methods on real datasets.
The POI tree effectively models spatial containment relationships.
Hints improve interpretability of recommendations.
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 propose the use of a POI tree, which captures spatial containment relationships between POIs. We design a novel multi-task learning model called MPR (short for Multi-level POI Recommendation), where…
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