Elsevier

Engineering

Volume 2, Issue 2, June 2016, Pages 212-224
Engineering

Research
iCity & Big Data—Article
Non-IID Recommender Systems: A Review and Framework of Recommendation Paradigm Shifting

https://doi.org/10.1016/J.ENG.2016.02.013Get rights and content
Under a Creative Commons license
open access

ABSTRACT

While recommendation plays an increasingly critical role in our living, study, work, and entertainment, the recommendations we receive are often for irrelevant, duplicate, or uninteresting products and services. A critical reason for such bad recommendations lies in the intrinsic assumption that recommended users and items are independent and identically distributed (IID) in existing theories and systems. Another phenomenon is that, while tremendous efforts have been made to model specific aspects of users or items, the overall user and item characteristics and their non-IIDness have been overlooked. In this paper, the non-IID nature and characteristics of recommendation are discussed, followed by the non-IID theoretical framework in order to build a deep and comprehensive understanding of the intrinsic nature of recommendation problems, from the perspective of both couplings and heterogeneity. This non-IID recommendation research triggers the paradigm shift from IID to non-IID recommendation research and can hopefully deliver informed, relevant, personalized, and actionable recommendations. It creates exciting new directions and fundamental solutions to address various complexities including cold-start, sparse data-based, cross-domain, group-based, and shilling attack-related issues.

Keywords

Independent and identically distributed (IID)
Non-IID
Heterogeneity
Coupling relationship
Coupling learning
Relational learning
IIDness learning
Non-IIDness learning
Recommender system
Recommendation
Non-IID recommendation

Cited by (0)

Available online 30 June 2016