AdFL: In-Browser Federated Learning for Online Advertisement
Ahmad Alemari, Pritam Sen, Cristian Borcea

TL;DR
AdFL introduces an in-browser federated learning framework that enables personalized ad targeting while preserving user privacy, using standard browser APIs and differential privacy techniques.
Contribution
This work presents the first in-browser federated learning system for online advertising that operates without client software installation and supports privacy-preserving model updates.
Findings
AdFL can train models in milliseconds within browsers.
Achieved up to 92.59% AUC in ad viewability prediction.
Differential privacy provides privacy with minimal performance loss.
Abstract
Since most countries are coming up with online privacy regulations, such as GDPR in the EU, online publishers need to find a balance between revenue from targeted advertisement and user privacy. One way to be able to still show targeted ads, based on user personal and behavioral information, is to employ Federated Learning (FL), which performs distributed learning across users without sharing user raw data with other stakeholders in the publishing ecosystem. This paper presents AdFL, an FL framework that works in the browsers to learn user ad preferences. These preferences are aggregated in a global FL model, which is then used in the browsers to show more relevant ads to users. AdFL can work with any model that uses features available in the browser such as ad viewability, ad click-through, user dwell time on pages, and page content. The AdFL server runs at the publisher and…
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Taxonomy
TopicsPrivacy, Security, and Data Protection · Recommender Systems and Techniques · Ethics and Social Impacts of AI
