Distributed Online Learning in Social Recommender Systems

IF 13.7 1区 工程技术 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Journal of Selected Topics in Signal Processing Pub Date : 2014-01-10 DOI:10.1109/JSTSP.2014.2299517
Cem Tekin;Simpson Zhang;Mihaela van der Schaar
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引用次数: 60

Abstract

In this paper, we consider decentralized sequential decision making in distributed online recommender systems, where items are recommended to users based on their search query as well as their specific background including history of bought items, gender and age, all of which comprise the context information of the user. In contrast to centralized recommender systems, in which there is a single centralized seller who has access to the complete inventory of items as well as the complete record of sales and user information, in decentralized recommender systems each seller/learner only has access to the inventory of items and user information for its own products and not the products and user information of other sellers, but can get commission if it sells an item of another seller. Therefore, the sellers must distributedly find out for an incoming user which items to recommend (from the set of own items or items of another seller), in order to maximize the revenue from own sales and commissions. We formulate this problem as a cooperative contextual bandit problem, analytically bound the performance of the sellers compared to the best recommendation strategy given the complete realization of user arrivals and the inventory of items, as well as the context-dependent purchase probabilities of each item, and verify our results via numerical examples on a distributed data set adapted based on Amazon data. We evaluate the dependence of the performance of a seller on the inventory of items the seller has, the number of connections it has with the other sellers, and the commissions which the seller gets by selling items of other sellers to its users.
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社交推荐系统中的分布式在线学习
在本文中,我们考虑了分布式在线推荐系统中的分散顺序决策,在该系统中,根据用户的搜索查询以及他们的特定背景(包括购买物品的历史、性别和年龄)向用户推荐物品,所有这些都包括用户的上下文信息。与其中存在能够访问物品的完整库存以及销售和用户信息的完整记录的单个集中式卖家的集中式推荐系统相比,在去中心化推荐系统中,每个卖家/学习者只能访问自己产品的物品清单和用户信息,而不能访问其他卖家的产品和用户信息。但是,如果出售了另一个卖家的物品,则可以获得佣金。因此,卖家必须为进入的用户分布式地找出要推荐的商品(从自己的商品集或另一个卖家的商品集中),以最大限度地提高自己的销售和佣金收入。我们将这个问题表述为一个合作的上下文土匪问题,在完全实现用户到达和物品库存以及每个物品的上下文相关购买概率的情况下,分析绑定了卖家与最佳推荐策略相比的表现,并通过基于亚马逊数据改编的分布式数据集的数值例子验证了我们的结果。我们评估了卖家的业绩对卖家的商品库存、与其他卖家的联系数量以及卖家通过向用户出售其他卖家的商品而获得的佣金的依赖性。
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来源期刊
IEEE Journal of Selected Topics in Signal Processing
IEEE Journal of Selected Topics in Signal Processing 工程技术-工程:电子与电气
CiteScore
19.00
自引率
1.30%
发文量
135
审稿时长
3 months
期刊介绍: The IEEE Journal of Selected Topics in Signal Processing (JSTSP) focuses on the Field of Interest of the IEEE Signal Processing Society, which encompasses the theory and application of various signal processing techniques. These techniques include filtering, coding, transmitting, estimating, detecting, analyzing, recognizing, synthesizing, recording, and reproducing signals using digital or analog devices. The term "signal" covers a wide range of data types, including audio, video, speech, image, communication, geophysical, sonar, radar, medical, musical, and others. The journal format allows for in-depth exploration of signal processing topics, enabling the Society to cover both established and emerging areas. This includes interdisciplinary fields such as biomedical engineering and language processing, as well as areas not traditionally associated with engineering.
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