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Proceedings ArticleDOI

LORE: exploiting sequential influence for location recommendations

TLDR
A new approach called LORE is proposed to exploit sequential influence on location recommendations and achieves significantly superior location recommendations compared to other state-of-the-art recommendation techniques.
Abstract
Providing location recommendations becomes an important feature for location-based social networks (LBSNs), since it helps users explore new places and makes LBSNs more prevalent to users. In LBSNs, geographical influence and social influence have been intensively used in location recommendations based on the facts that geographical proximity of locations significantly affects users' check-in behaviors and social friends often have common interests. Although human movement exhibits sequential patterns, most current studies on location recommendations do not consider any sequential influence of locations on users' check-in behaviors. In this paper, we propose a new approach called LORE to exploit sequential influence on location recommendations. First, LORE incrementally mines sequential patterns from location sequences and represents the sequential patterns as a dynamic Location-Location Transition Graph (L2TG). LORE then predicts the probability of a user visiting a location by Additive Markov Chain (AMC) with L2TG. Finally, LORE fuses sequential influence with geographical influence and social influence into a unified recommendation framework; in particular the geographical influence is modeled as two-dimensional check-in probability distributions rather than one-dimensional distance probability distributions in existing works. We conduct a comprehensive performance evaluation for LORE using two large-scale real data sets collected from Foursquare and Gowalla. Experimental results show that LORE achieves significantly superior location recommendations compared to other state-of-the-art recommendation techniques.

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Citations
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Proceedings Article

Personalized ranking metric embedding for next new POI recommendation

TL;DR: This paper proposes a personalized ranking metric embedding method (PRME) to model personalized check-in sequences and develops a PRME-G model, which integrates sequential information, individual preference, and geographical influence, to improve the recommendation performance.
Proceedings ArticleDOI

Learning Graph-based POI Embedding for Location-based Recommendation

TL;DR: A generic graph-based embedding model is proposed that jointly captures the sequential effect, geographical influence, temporal cyclic effect and semantic effect in a unified way by embedding the four corresponding relational graphs into a shared low dimensional space and develops a novel time-decay method to dynamically compute the user's latest preferences.
Proceedings ArticleDOI

Bridging Collaborative Filtering and Semi-Supervised Learning: A Neural Approach for POI Recommendation

TL;DR: This work proposes to devise a general and principled SSL (semi-supervised learning) framework, to alleviate data scarcity via smoothing among neighboring users and POIs, and treat various context by regularizing user preference based on context graphs.
Journal ArticleDOI

Sequence-Aware Recommender Systems

TL;DR: In this article, the authors present a review of existing works that consider information from such sequentially ordered user-item interaction logs in the recommendation process and propose a categorization of the corresponding recommendation tasks and goals, summarize existing algorithmic solutions, discuss methodological approaches when benchmarking what they call sequence-aware recommender systems, and outline open challenges in the area.
Proceedings ArticleDOI

GeoSoCa: Exploiting Geographical, Social and Categorical Correlations for Point-of-Interest Recommendations

TL;DR: A new POI recommendation approach called GeoSoCa is proposed through exploiting geographical correlations, social correlations and categorical correlations among users and POIs to achieve significantly superior recommendation quality compared to other state-of-the-artPOI recommendation techniques.
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Proceedings ArticleDOI

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