Mitigating filter bubbles: Diverse and explainable recommender systems

Author:

Tahir Kidwai Umar1,Akhtar Nadeem1,Nadeem Mohammad2,Alroobaea Roobaea Salim3

Affiliation:

1. Department of Computer Engineering and Interdisciplinary Centre for Artificial Intelligence, Aligarh Muslim University, Aligarh, India

2. Department of Computer Science, Aligarh Muslim University, Aligarh, India

3. Department of Computer Science, College of Computers and Information Technology, Taif University, Taif, Saudi Arabia

Abstract

In recent years, the surge in online content has necessitated the development of intelligent recommender systems capable of offering personalized suggestions to users. However, these systems often encapsulate users within a “filter bubble”, limiting their exposure to a narrow range of content. This study introduces a novel approach to address this issue by integrating a novel diversity module into a knowledge graph-based explainable recommender system. Utilizing the Movie Lens 1M dataset, this research pioneers in fostering a more nuanced and transparent user experience, thereby enhancing user trust and broadening the spectrum of recommendations. Looking ahead, we aim to further refine this system by incorporating an explicit feedback loop and leveraging Natural Language Processing (NLP) techniques to provide users with insightful explanations of recommendations, including a comprehensive analysis of filter bubbles. This initiative marks a significant stride towards creating a more inclusive and informed recommendation landscape, promising users not only a wider array of content but also a deeper understanding of the recommendation mechanisms at play.

Publisher

IOS Press

Reference14 articles.

1. Steffen Rendle , Factorization Machines with LibFM, ACM Transactions on Intelligent Systems and Technology 3(3) (2012), https://doi.org/10.1145/2168752.2168771

2. Research-paper recommender systems: A literature survey;Beel Joeran;International Journal on Digital Libraries,2018

3. Aya Sayed , Yassine Himeur , Abdullah Alsalemi , Faycal Bensaali , Abbes Amira , Intelligent Edge Based Recommender System for Internet of Energy Applications, IEEE Systems Journal 16(3) (2022), https://doi.org/10.1109/JSYST.2021.3124793

4. Aidan Hogan , Eva Blomqvist , Michael Cochez , Claudia d’Amato , Gerard de Melo , Claudio Gutierrez , José Emilio Labra Gayo , Sabrina Kirrane , Sebastian Neumaier , Axel Polleres , Roberto Navigli , Axel-Cyrille Ngonga Ngomo , Sabbir Rashid M. , Anisa Rula , Lukas Schmelzeisen , Juan Sequeda , Steffen Staab , Antoine Zimmermann , Knowledge Graphs. ArXiv 2003.02320 2020 (2020).

5. Do Social Explanations Work?: Studying and Modeling the Effects of Social Explanations in Recommender Systems;Sharma;In WWW,2013

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