A Review of Explainable Fashion Compatibility Modeling Methods

Author:

Selwon Karolina1ORCID,Szymański Julian2ORCID

Affiliation:

1. Gdańsk University of Technology Faculty of Electronics Telecommunications and Informatics, Gdansk, Poland

2. Gdańsk University of Technology Faculty of Electronics Telecommunications and Informatics, Gdansk Poland

Abstract

The paper reviews methods used in the fashion compatibility recommendation domain. We select methods based on reproducibility, explainability, and novelty aspects and then organize them chronologically and thematically. We presented general characteristics of publicly available datasets that are related to the fashion compatibility recommendation task. Finally, we analyzed the representation bias of datasets, fashion-based algorithms’ sustainability, and explainable model assessment. The paper describes practical problem explanations, methodologies, and published datasets that may serve as an inspiration for further research. The proposed structure of the survey organizes knowledge in the fashion recommendation domain and will be beneficial for those who want to learn the topic from scratch, expand their knowledge, or find a new field for research. Furthermore, the information included in this paper could contribute to developing an effective and ethical fashion-based recommendation system.

Publisher

Association for Computing Machinery (ACM)

Reference78 articles.

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2. Debopriyo Banerjee, Lucky Dhakad, Harsh Maheshwari, Muthusamy Chelliah, Niloy Ganguly, and Arnab Bhattacharya. 2022. Recommendation of compatible outfits conditioned on style. In European Conference on Information Retrieval. Springer, Stavanger, Norway, 35–50.

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