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Main Authors: Díez, Jorge, Pérez-Núñez, Pablo, Luaces, Oscar, Remeseiro, Beatriz, Bahamonde, Antonio
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.21455
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author Díez, Jorge
Pérez-Núñez, Pablo
Luaces, Oscar
Remeseiro, Beatriz
Bahamonde, Antonio
author_facet Díez, Jorge
Pérez-Núñez, Pablo
Luaces, Oscar
Remeseiro, Beatriz
Bahamonde, Antonio
contents Explaining the output of a complex system, such as a Recommender System (RS), is becoming of utmost importance for both users and companies. In this paper we explore the idea that personalized explanations can be learned as recommendation themselves. There are plenty of online services where users can upload some photos, in addition to rating items. We assume that users take these photos to reinforce or justify their opinions about the items. For this reason we try to predict what photo a user would take of an item, because that image is the argument that can best convince her of the qualities of the item. In this sense, an RS can explain its results and, therefore, increase its reliability. Furthermore, once we have a model to predict attractive images for users, we can estimate their distribution. Thus, the companies acquire a vivid knowledge about the aspects that the clients highlight of their products. The paper includes a formal framework that estimates the authorship probability for a given pair (user, photo). To illustrate the proposal, we use data gathered from TripAdvisor containing the reviews (with photos) of restaurants in six cities of different sizes.
format Preprint
id arxiv_https___arxiv_org_abs_2510_21455
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Towards Explainable Personalized Recommendations by Learning from Users' Photos
Díez, Jorge
Pérez-Núñez, Pablo
Luaces, Oscar
Remeseiro, Beatriz
Bahamonde, Antonio
Machine Learning
Explaining the output of a complex system, such as a Recommender System (RS), is becoming of utmost importance for both users and companies. In this paper we explore the idea that personalized explanations can be learned as recommendation themselves. There are plenty of online services where users can upload some photos, in addition to rating items. We assume that users take these photos to reinforce or justify their opinions about the items. For this reason we try to predict what photo a user would take of an item, because that image is the argument that can best convince her of the qualities of the item. In this sense, an RS can explain its results and, therefore, increase its reliability. Furthermore, once we have a model to predict attractive images for users, we can estimate their distribution. Thus, the companies acquire a vivid knowledge about the aspects that the clients highlight of their products. The paper includes a formal framework that estimates the authorship probability for a given pair (user, photo). To illustrate the proposal, we use data gathered from TripAdvisor containing the reviews (with photos) of restaurants in six cities of different sizes.
title Towards Explainable Personalized Recommendations by Learning from Users' Photos
topic Machine Learning
url https://arxiv.org/abs/2510.21455