Personalised Visual Art Recommendation by Learning Latent Semantic Representations

July 24, 2020 Β· Declared Dead Β· πŸ› 2020 15th International Workshop on Semantic and Social Media Adaptation and Personalization (SMA

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Authors Bereket Abera Yilma, Najib Aghenda, Marcelo Romero, Yannick Naudet, Herve Panetto arXiv ID 2008.02687 Category cs.IR: Information Retrieval Cross-listed cs.CL Citations 11 Venue 2020 15th International Workshop on Semantic and Social Media Adaptation and Personalization (SMA Last Checked 4 months ago
Abstract
In Recommender systems, data representation techniques play a great role as they have the power to entangle, hide and reveal explanatory factors embedded within datasets. Hence, they influence the quality of recommendations. Specifically, in Visual Art (VA) recommendations the complexity of the concepts embodied within paintings, makes the task of capturing semantics by machines far from trivial. In VA recommendation, prominent works commonly use manually curated metadata to drive recommendations. Recent works in this domain aim at leveraging visual features extracted using Deep Neural Networks (DNN). However, such data representation approaches are resource demanding and do not have a direct interpretation, hindering user acceptance. To address these limitations, we introduce an approach for Personalised Recommendation of Visual arts based on learning latent semantic representation of paintings. Specifically, we trained a Latent Dirichlet Allocation (LDA) model on textual descriptions of paintings. Our LDA model manages to successfully uncover non-obvious semantic relationships between paintings whilst being able to offer explainable recommendations. Experimental evaluations demonstrate that our method tends to perform better than exploiting visual features extracted using pre-trained Deep Neural Networks.
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