Location-Aware Recommender System: A review of Application Domains and Current Developmental Processes

Khalid Haruna, A. Musa, Zayyanu Yunusa, Yakubu Ibrahim, Fa’iz Ibrahim Jibia, Nur Bala Rabiu
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引用次数: 1

Abstract

Recommender systems (RS) have been widely used to extract relevant and meaningful information from a vast body of data, to make appropriate suggestions to users with different preferences in various domains of applications. However, despite the success of the early recommendation systems, they suffer from two major challenges of cold start and data sparsity. Traditional RS consider an interaction between user and item (2D), neglecting contextual information such as location, until fairly recently. The contexts extend traditional RS to multi-dimension interaction and provides a useful information that allow recommendations to be more personalized. Surprisingly, taking these contexts such as location, into consideration eliminates the challenges of traditional RS. Location-Aware Recommender System (LARS) takes user's location into account as an additional context. The combination allows the prediction of spatial items, items closest to the users, to reduce information overload and was proved to be more effective than earlier RS. In this research, we provide a systematic literature of the existing literature in LARS from 2010 to 2021, focusing on the state-of-the-art methodologies, the domain of applications, and trends of publications in LARS. The paper proposed several models of LARS based on the traditional RS methodologies, providing future directions to researchers. Despite numerous reviews available on LARS, a review that proposed several LARS techniques were not found in the literature. The results indicated that the trend of publication in LARS is growing exponentially and that the field is getting attention rapidly with the number of publications on the rise every year.
位置感知推荐系统:应用领域和当前发展过程的回顾
推荐系统(RS)被广泛用于从海量数据中提取相关且有意义的信息,从而在不同的应用领域中向具有不同偏好的用户提供适当的建议。然而,尽管早期的推荐系统取得了成功,但它们面临冷启动和数据稀疏性两个主要挑战。直到最近,传统RS考虑的是用户和物品之间的交互(2D),而忽略了诸如位置之类的上下文信息。上下文将传统的RS扩展到多维交互,并提供有用的信息,使推荐更加个性化。令人惊讶的是,考虑到这些上下文,如位置,消除了传统RS的挑战。位置感知推荐系统(LARS)将用户的位置作为一个额外的上下文考虑。该组合允许预测空间项目,最接近用户的项目,以减少信息过载,并且被证明比早期的RS更有效。在本研究中,我们提供了从2010年到2021年的LARS现有文献的系统文献,重点关注LARS的最新方法,应用领域和出版物趋势。本文在传统遥感方法的基础上提出了几种遥感模型,为今后的研究提供了方向。尽管有许多关于LARS的评论,但在文献中没有发现提出几种LARS技术的评论。结果表明,该领域的出版物呈指数增长趋势,出版物数量每年都在增加,受到人们的迅速关注。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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