Enabling Hyper-Personalisation: Automated Ad Creative Generation and Ranking for Fashion e-Commerce
Sreekanth Vempati, Korah T Malayil, Sruthi V, Sandeep R

TL;DR
This paper introduces an automated system for generating and ranking diverse fashion e-commerce banners to enhance personalization and reduce manual effort, leveraging deep learning and genetic algorithms.
Contribution
It presents a scalable method combining deep learning, genetic algorithms, and ranking models for automatic banner creation and selection in fashion e-commerce.
Findings
Generated diverse banners improve personalization.
Deep learning detectors accurately annotate image objects.
Ranking models effectively select optimal banners.
Abstract
Homepage is the first touch point in the customer's journey and is one of the prominent channels of revenue for many e-commerce companies. A user's attention is mostly captured by homepage banner images (also called Ads/Creatives). The set of banners shown and their design, influence the customer's interest and plays a key role in optimizing the click through rates of the banners. Presently, massive and repetitive effort is put in, to manually create aesthetically pleasing banner images. Due to the large amount of time and effort involved in this process, only a small set of banners are made live at any point. This reduces the number of banners created as well as the degree of personalization that can be achieved. This paper thus presents a method to generate creatives automatically on a large scale in a short duration. The availability of diverse banners generated helps in improving…
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Taxonomy
TopicsDigital Media and Visual Art · Image Retrieval and Classification Techniques · Image Enhancement Techniques
