A Real-Time Whole Page Personalization Framework for E-Commerce
- URL: http://arxiv.org/abs/2012.04681v1
- Date: Tue, 8 Dec 2020 19:08:41 GMT
- Title: A Real-Time Whole Page Personalization Framework for E-Commerce
- Authors: Aditya Mantha, Anirudha Sundaresan, Shashank Kedia, Yokila Arora,
Shubham Gupta, Gaoyang Wang, Praveenkumar Kanumala, Stephen Guo, Kannan Achan
- Abstract summary: E-commerce platforms contain multiple carousels on their homepage.
Items within a carousel may change dynamically based on sequential user actions.
We present a scalable end-to-end production system to optimally rank item-carousels in real-time on the Walmart online grocery homepage.
- Score: 13.254747746069139
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: E-commerce platforms consistently aim to provide personalized recommendations
to drive user engagement, enhance overall user experience, and improve business
metrics. Most e-commerce platforms contain multiple carousels on their
homepage, each attempting to capture different facets of the shopping
experience. Given varied user preferences, optimizing the placement of these
carousels is critical for improved user satisfaction. Furthermore, items within
a carousel may change dynamically based on sequential user actions, thus
necessitating online ranking of carousels. In this work, we present a scalable
end-to-end production system to optimally rank item-carousels in real-time on
the Walmart online grocery homepage. The proposed system utilizes a novel model
that captures the user's affinity for different carousels and their likelihood
to interact with previously unseen items. Our system is flexible in design and
is easily extendable to settings where page components need to be ranked. We
provide the system architecture consisting of a model development phase and an
online inference framework. To ensure low-latency, various optimizations across
these stages are implemented. We conducted extensive online evaluations to
benchmark against the prior experience. In production, our system resulted in
an improvement in item discovery, an increase in online engagement, and a
significant lift on add-to-carts (ATCs) per visitor on the homepage.
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