Recommender System: Personalizing User Experience or Scientifically Deceiving Users?

Ramachandran Trichur Narayanan
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引用次数: 1

Abstract

Recommender system is taking the lead among many things that the digital world offers today, to every customer visiting online portals for any service. Since its popularity from the time of Netflix competition, recommender system has become more visible and an important marketing and sales tool for corporates augmenting their offers online. Ongoing research initiatives in recommender systems, large datasets available for users across the globe, and corporate collaborations have led to improvised algorithms, and reduced errors in estimating predictions. Software and hardware tools that enable easy gathering of implicit and explicit data have helped recommender system to quickly adapt to the needs of the users. It is in this background the possibility of recommender system inducing the customer to pre-determined items by presenting fabricated predictions, as if it is resultant of scientific principles, need to be considered. In this paper, we give an overview of the recommender system, discuss how various components of the recommender system may be manipulated to allure innocent customers with false ratings, and also discuss the importance of engaging stakeholders to develop a robust recommender system.
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推荐系统:个性化用户体验还是科学欺骗用户?
推荐系统在当今数字世界提供的许多东西中处于领先地位,为每个访问在线门户网站的客户提供任何服务。自从与Netflix竞争以来,推荐系统已经变得更加明显,成为企业增加在线报价的重要营销和销售工具。推荐系统中正在进行的研究计划、可供全球用户使用的大型数据集以及企业合作导致了临时算法,并减少了估计预测的错误。能够轻松收集隐式和显式数据的软件和硬件工具帮助推荐系统快速适应用户的需求。正是在这种背景下,推荐系统通过提供虚构的预测来诱导客户购买预定项目的可能性,就好像它是科学原理的结果一样,需要考虑。在本文中,我们概述了推荐系统,讨论了如何操纵推荐系统的各个组成部分,以虚假评级吸引无辜的客户,并讨论了吸引利益相关者开发健壮的推荐系统的重要性。
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