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Explainable AI based Interventions for Pre-season Decision Making in Fashion Retail

Authors :
Sajja, Shravan
Aggarwal, Nupur
Mukherjee, Sumanta
Manglik, Kushagra
Dwivedi, Satyam
Raykar, Vikas
Publication Year :
2020

Abstract

Future of sustainable fashion lies in adoption of AI for a better understanding of consumer shopping behaviour and using this understanding to further optimize product design, development and sourcing to finally reduce the probability of overproducing inventory. Explainability and interpretability are highly effective in increasing the adoption of AI based tools in creative domains like fashion. In a fashion house, stakeholders like buyers, merchandisers and financial planners have a more quantitative approach towards decision making with primary goals of high sales and reduced dead inventory. Whereas, designers have a more intuitive approach based on observing market trends, social media and runways shows. Our goal is to build an explainable new product forecasting tool with capabilities of interventional analysis such that all the stakeholders (with competing goals) can participate in collaborative decision making process of new product design, development and launch.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2008.07376
Document Type :
Working Paper