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Journal ArticleDOI

Incorporating Spatial, Temporal, and Social Context in Recommendations for Location-Based Social Networks

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TLDR
A novel approach to incorporate spatial, temporal, and social context into a traditional collaborative filtering algorithm is introduced, and it is demonstrated that this approach is at the least competitive with existing state-of-the-art location recommenders.
Abstract
Location-based social networks (LBSNs) such as Foursquare, Brightkite, and Gowalla are a growing area where recommendation algorithms find a practical application. With an ever-increasing variety of venues to choose from deciding on a destination can be overwhelming. Recommenders aid their users in the decision-making process by providing a list of locations likely to be relevant to the user’s needs and interests. Traditional collaborative filtering algorithms consider relationships between users and locations, finding users to be similar only if their location histories overlap. However, the availability of spatial, temporal, and social information in an LBSN offers an opportunity to improve the quality of a recommendation engine. Social network data allows us to connect users who can directly influence each other’s decisions. Temporal data allows us to account for the drifting preferences of users, giving more weight to recent location visits over historical selections, and taking advantages of repetitive behaviors. Spatial information allows us to focus recommendations on locations close to the user, keeping our recommendations relevant as a user travels. We introduce a novel approach to incorporate spatial, temporal, and social context into a traditional collaborative filtering algorithm. We evaluate our method on data sets collected from three LBSNs, and demonstrate that our approach is at the least competitive with existing state-of-the-art location recommenders.

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Citations
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Patent

Inferring user preferences from an internet based social interactive construct

TL;DR: In this paper, the authors described improved capabilities for a computer program product embodied in a computer readable medium that, when executing on one or more computers, helps determine an unknown user's preferences through the use of internet based social interactive graphical representations on a computer facility by performing the steps of ascertaining preferences of a plurality of users who are part of an internet-based social interactive construct.
Journal ArticleDOI

Decentralized Autonomous Organizations: Concept, Model, and Applications

TL;DR: This article strives to present a systematic introduction of DAO, including its concept and characteristics, research framework, typical implementations, challenges, and future trends, including a novel reference model for DAO which employs a five-layer architecture.
Book ChapterDOI

Social Aware Cognitive Radio Networks: Effectiveness of Social Networks as a Strategic Tool for Organizational Business Management

TL;DR: This chapter delves into the cognitive radio (CR) and its social relations and makes sufficient exploits in establishing a scheme that will be based on social-based cooperative sensing scheme (SBC).
Book ChapterDOI

LGLMF: Local Geographical Based Logistic Matrix Factorization Model for POI Recommendation

TL;DR: An effective geographical model is proposed by considering the user's main region of activity and the relevance of each location within that region and is fused into the Logistic Matrix Factorization to improve the accuracy of POI recommendation.
Journal ArticleDOI

Effective Knowledge Based Recommender System for Tailored Multiple Point of Interest Recommendation

TL;DR: A new travel RS employed on the mobile device to generate personalized travel planning comprising of multiple Point of Interests (POIs) is presented and the obtained results are found to be proficient by means of improved diversity and accuracy of generated recommendations.
References
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Book ChapterDOI

Content-based recommendation systems

TL;DR: This chapter discusses content-based recommendation systems, i.e., systems that recommend an item to a user based upon a description of the item and a profile of the user's interests, which are used in a variety of domains ranging from recommending web pages, news articles, restaurants, television programs, and items for sale.
Proceedings ArticleDOI

Analysis of recommendation algorithms for e-commerce

TL;DR: This paper investigates several te hniques for analyzing large-s ale pur hase and preferen e data for the purpose of producing useful re ommendations to ustomers and devise and apply their ombinations on the authors' data sets to ompare for re Ommendation quality and performan e.
Book ChapterDOI

Collaborative filtering recommender systems

TL;DR: This chapter introduces the core concepts of collaborative filtering, its primary uses for users of the adaptive web, the theory and practice of CF algorithms, and design decisions regarding rating systems and acquisition of ratings.
Proceedings ArticleDOI

Collaborative filtering with temporal dynamics

TL;DR: Two leading collaborative filtering recommendation approaches are revamp and a more sensitive approach is required, which can make better distinctions between transient effects and long term patterns.
Proceedings ArticleDOI

Methods and metrics for cold-start recommendations

TL;DR: A method for recommending items that combines content and collaborative data under a single probabilistic framework is developed, and it is demonstrated empirically that the various components of the testing strategy combine to obtain deeper understanding of the performance characteristics of recommender systems.
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