The fashion industry is a significant contributor to global carbon emissions, water consumption, and waste generation. My Ph.D. project explores two approaches to promote sustainability in fashion recommender systems. First, I aim to develop algorithms and user interfaces that nudge users towards more sustainable and ethical fashion choices by incorporating relevant data into the recommendation process and item presentation. This involves balancing user preferences with sustainability considerations and exploring effective ways to present this complex information to users. Second, I seek to make the recommendation algorithms themselves more environmentally sustainable by reducing their computational cost without compromising recommendation quality. To achieve these goals, I plan to leverage multimodal item representations, multi-criteria recommendation techniques, and novel algorithmic approaches. I expect to complete my Ph.D. in October, 2025.

Promoting Green Fashion Consumption in Recommender Systems

Geninatti Cossatin A.
2024-01-01

Abstract

The fashion industry is a significant contributor to global carbon emissions, water consumption, and waste generation. My Ph.D. project explores two approaches to promote sustainability in fashion recommender systems. First, I aim to develop algorithms and user interfaces that nudge users towards more sustainable and ethical fashion choices by incorporating relevant data into the recommendation process and item presentation. This involves balancing user preferences with sustainability considerations and exploring effective ways to present this complex information to users. Second, I seek to make the recommendation algorithms themselves more environmentally sustainable by reducing their computational cost without compromising recommendation quality. To achieve these goals, I plan to leverage multimodal item representations, multi-criteria recommendation techniques, and novel algorithmic approaches. I expect to complete my Ph.D. in October, 2025.
2024
32nd ACM Conference on User Modeling, Adaptation and Personalization, UMAP 2024
Cagliari
2024
UMAP 2024 - Adjunct Proceedings of the 32nd ACM Conference on User Modeling, Adaptation and Personalization
Association for Computing Machinery, Inc
50
54
Digital nudging; late fusion; multi-criteria recommender systems; multimodal recommender systems; recommender systems; sustainable fashion consumption
Geninatti Cossatin A.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/2077275
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