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Recommender systems for sustainability: overview and research issues

Alexander Felfernig, Manfred Wundara, Thi Ngoc Trang Tran, Seda Polat-Erdeniz, Sebastian Lubos, Merfat El Mansi, Damian Garber, Viet-Man Le

2023Frontiers in Big Data52 citationsDOIOpen Access PDF

Abstract

Sustainability development goals (SDGs) are regarded as a universal call to action with the overall objectives of planet protection, ending of poverty, and ensuring peace and prosperity for all people. In order to achieve these objectives, different AI technologies play a major role. Specifically, recommender systems can provide support for organizations and individuals to achieve the defined goals. Recommender systems integrate AI technologies such as machine learning, explainable AI (XAI), case-based reasoning, and constraint solving in order to find and explain user-relevant alternatives from a potentially large set of options. In this article, we summarize the state of the art in applying recommender systems to support the achievement of sustainability development goals. In this context, we discuss open issues for future research.

Topics & Concepts

SustainabilityComputer scienceRecommender systemProsperityContext (archaeology)Order (exchange)Constraint (computer-aided design)Set (abstract data type)Action (physics)Management scienceKnowledge managementData scienceWorld Wide WebBusinessPolitical scienceEngineeringEcologyMechanical engineeringPaleontologyBiologyPhysicsLawFinanceQuantum mechanicsProgramming languageRecommender Systems and TechniquesEnvironmental Education and SustainabilityAdvanced Graph Neural Networks
Recommender systems for sustainability: overview and research issues | Litcius