• Home
  • News
  • Startups
  • Innovation
  • Industry
  • Business
  • Green Innovations
  • Venture Capital
  • Market Data
    • Economic Calendar
    • Stocks
    • Commodities
    • Crypto
    • Forex
Facebook Twitter Instagram
[gtranslate]
Facebook Twitter Instagram YouTube
Innovation & Industry
Banner
  • Home
  • News
  • Startups
  • Innovation
  • Industry
  • Business
  • Green Innovations
  • Venture Capital
  • Market Data
    • Economic Calendar
    • Stocks
    • Commodities
    • Crypto
    • Forex
Login
Innovation & Industry
Business

Meta’s success in suppressing misinformation on Facebook is patchy at best, finds study

News RoomNews RoomMarch 22, 2024No Comments2 Mins Read
Credit: Unsplash/CC0 Public Domain

The content moderation policy adopted by Meta at the time of the COVID-19 pandemic to rein in misinformation on Facebook has proved no great obstacle to users capable to finding work arounds according to a new study by digital and social media researchers from the University of Technology Sydney and the University of Sydney.

Published recently in the journal Media International Australia, the study looked at the effectiveness of strategies such as content labeling and shadowbanning during 2020 and 2021, shadowbanning involving the algorithmic reduction of problematic content in users’ newsfeed, search and recommendations.

Lead author UTS Associate Professor Amelia Johns said the analysis found that far-right and anti-vaccination accounts in some cases enjoyed increased engagement and followers after Meta’s content policy announcements.

“This calls in question just how serious Meta has been about removing harmful content,” Associate Professor Johns said.

“The company has invested in content moderation policies that err on the side of free expression, preferring content labeling and algorithm-driven suppression over removal.

“The company points to internal modeling which shows that users will try to find work arounds to content that is removed, which is why, it asserts, removal is not effective.

“However our research shows that shadowbans and content labeling are only partially effective and likewise incentivize work arounds by users dedicated to overcoming platform interventions and spreading misinformation.

“It was clear far-right and anti-vaccination communities were not deterred by Meta’s policies to suppress rather than remove dangerous misinformation during the pandemic, employing tactics that disproved Meta’s internal modeling.

“In essence users came together as a community to game the algorithm rather than allowing the algorithm to determine what content they were able to access, and how.

“This demonstrates that the success of Meta’s policy to suppress rather than remove misinformation is piecemeal, inconsistent and seemingly unconcerned about susceptible communities and users encountering misinformation.”

More information:
Amelia Johns et al, Labelling, shadow bans and community resistance: did meta’s strategy to suppress rather than remove COVID misinformation and conspiracy theory on Facebook slow the spread?, Media International Australia (2024). DOI: 10.1177/1329878X241236984

Provided by
University of Technology, Sydney



Read the full article here

Related Articles

Trump media group plans TV streaming platform

Business April 16, 2024

MGM Resorts sues FTC, agency chair over cyberattack investigation

Business April 16, 2024

Women in tech, AI in focus as Web Summit opens in Rio

Business April 16, 2024

Google Workers Protest Cloud Contract With Israel’s Government

Business April 16, 2024

AI model could optimize e-commerce sites for users who are color blind

Business April 16, 2024

Atrium Health shared patient data with Facebook, class-action lawsuit alleges

Business April 16, 2024
Add A Comment

Leave A Reply Cancel Reply

Copyright © 2025. Innovation & Industry. All Rights Reserved.
  • Privacy Policy
  • Terms of use
  • Press Release
  • Advertise
  • Contact

Type above and press Enter to search. Press Esc to cancel.

Sign In or Register

Welcome Back!

Login to your account below.

Lost password?