2021
DOI: 10.1613/jair.1.12789
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Conceptual Modeling of Explainable Recommender Systems: An Ontological Formalization to Guide Their Design and Development

Abstract: With the increasing importance of e-commerce and the immense variety of products, users need help to decide which ones are the most interesting to them. This is one of the main goals of recommender systems. However, users’ trust may be compromised if they do not understand how or why the recommendation was achieved. Here, explanations are essential to improve user confidence in recommender systems and to make the recommendation useful. Providing explanation capabilities into recommender systems is not an… Show more

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Cited by 18 publications
(3 citation statements)
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“…Given that all of these impacts that explanations might have on users can support them in meeting their needs, it's important to identify which type of user the explanations are targeted at. As a result, in work, 14 we identified the following user classification: (i) target user—the users who receive the system's recommendations, (ii) stakeholders—people who have an interest in the recommender system's success, such as product owners, investors, or entrepreneurs; (iii) developers—these users need to understand how the recommender system works in order to perform various tasks, such as debugging, maintenance, or extension; and (iv) regulatory body—users who represent legislative and government organizations that need to understand how recommender systems work in order to regulate their transparency and proper use.…”
Section: Literature and Related Surveysmentioning
confidence: 95%
See 1 more Smart Citation
“…Given that all of these impacts that explanations might have on users can support them in meeting their needs, it's important to identify which type of user the explanations are targeted at. As a result, in work, 14 we identified the following user classification: (i) target user—the users who receive the system's recommendations, (ii) stakeholders—people who have an interest in the recommender system's success, such as product owners, investors, or entrepreneurs; (iii) developers—these users need to understand how the recommender system works in order to perform various tasks, such as debugging, maintenance, or extension; and (iv) regulatory body—users who represent legislative and government organizations that need to understand how recommender systems work in order to regulate their transparency and proper use.…”
Section: Literature and Related Surveysmentioning
confidence: 95%
“…Caro‐Martinez et al 14 developed a model for developing effective explanations for recommender systems. Their approach provided four important factors to consider when developing explanations for recommendation systems: the user's motivation and goals, the knowledge necessary for its development, the recommendation process itself, and the user's presentation.…”
Section: Literature and Related Surveysmentioning
confidence: 99%
“…The following three techniques are the most often employed in recommender systems: social-aware recommender systems (Asabere, et al, 2017;Ojagh, Malek & Saeedi, 2020;Xiao, et al, 2017) that take advantage of users' social connections, robust recommender systems (Burke, O'Mahony & Hurley, 2015;Tang, et al, 2019) that filter false information such as spam and fake news, and explainable recommender systems (Zhang & Chen, 2020;Caro-Martínez, Jiménez-Díaz & Recio-García, 2021;Tsai & Brusilovsky, 2021) that offer justifications for recommended products.…”
Section: Introductionmentioning
confidence: 99%