Mathematical Framework for Online Social Media Auditing
Wasim Huleihel, Yehonathan Refael

TL;DR
This paper develops a mathematical framework and statistical auditing method to monitor and regulate algorithmic filtering on social media platforms, aiming to prevent undue influence on user beliefs.
Contribution
It introduces a novel formal model and data-driven auditing procedure for controlling algorithmic filtering effects on social media, with theoretical guarantees.
Findings
Provides a formal mathematical model for AF auditing
Develops a data-driven statistical auditing algorithm
Offers sample complexity guarantees for regulation
Abstract
Social media platforms (SMPs) leverage algorithmic filtering (AF) as a means of selecting the content that constitutes a user's feed with the aim of maximizing their rewards. Selectively choosing the contents to be shown on the user's feed may yield a certain extent of influence, either minor or major, on the user's decision-making, compared to what it would have been under a natural/fair content selection. As we have witnessed over the past decade, algorithmic filtering can cause detrimental side effects, ranging from biasing individual decisions to shaping those of society as a whole, for example, diverting users' attention from whether to get the COVID-19 vaccine or inducing the public to choose a presidential candidate. The government's constant attempts to regulate the adverse effects of AF are often complicated, due to bureaucracy, legal affairs, and financial considerations. On…
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Taxonomy
TopicsHate Speech and Cyberbullying Detection · Privacy, Security, and Data Protection · Spam and Phishing Detection
