Skip to main content

Site navigation

  • University of Technology Sydney home
  • Home

    Home
  • For students

  • For industry

  • Research

Explore

  • Courses
  • Events
  • News
  • Stories
  • People

For you

  • Libraryarrow_right_alt
  • Staffarrow_right_alt
  • Alumniarrow_right_alt
  • Current studentsarrow_right_alt
  • Study at UTS

    • arrow_right_alt Find a course
    • arrow_right_alt Course areas
    • arrow_right_alt Undergraduate students
    • arrow_right_alt Postgraduate students
    • arrow_right_alt Research Masters and PhD
    • arrow_right_alt Online study and short courses
  • Student information

    • arrow_right_alt Current students
    • arrow_right_alt New UTS students
    • arrow_right_alt Graduates (Alumni)
    • arrow_right_alt High school students
    • arrow_right_alt Indigenous students
    • arrow_right_alt International students
  • Admissions

    • arrow_right_alt How to apply
    • arrow_right_alt Entry pathways
    • arrow_right_alt Eligibility
arrow_right_altVisit our hub for students

For you

  • Libraryarrow_right_alt
  • Staffarrow_right_alt
  • Alumniarrow_right_alt
  • Current studentsarrow_right_alt

POPULAR LINKS

  • Apply for a coursearrow_right_alt
  • Current studentsarrow_right_alt
  • Scholarshipsarrow_right_alt
  • Featured industries

    • arrow_right_alt Agriculture and food
    • arrow_right_alt Defence and space
    • arrow_right_alt Energy and transport
    • arrow_right_alt Government and policy
    • arrow_right_alt Health and medical
    • arrow_right_alt Corporate training
  • Explore

    • arrow_right_alt Tech Central
    • arrow_right_alt Case studies
    • arrow_right_alt Research
arrow_right_altVisit our hub for industry

For you

  • Libraryarrow_right_alt
  • Staffarrow_right_alt
  • Alumniarrow_right_alt
  • Current studentsarrow_right_alt

POPULAR LINKS

  • Find a UTS expertarrow_right_alt
  • Partner with usarrow_right_alt
  • Explore

    • arrow_right_alt Explore our research
    • arrow_right_alt Research centres and institutes
    • arrow_right_alt Graduate research
    • arrow_right_alt Research partnerships
arrow_right_altVisit our hub for research

For you

  • Libraryarrow_right_alt
  • Staffarrow_right_alt
  • Alumniarrow_right_alt
  • Current studentsarrow_right_alt

POPULAR LINKS

  • Find a UTS expertarrow_right_alt
  • Research centres and institutesarrow_right_alt
  • University of Technology Sydney home
Explore the University of Technology Sydney
Category Filters:
University of Technology Sydney home University of Technology Sydney home
  1. home
  2. arrow_forward_ios ... Newsroom
  3. arrow_forward_ios ... 2024
  4. arrow_forward_ios 10
  5. arrow_forward_ios Predicting and detecting hate speech online

Predicting and detecting hate speech online

24 October 2024

A new multi-task learning (MTL) model can accurately and consistently detect hate speech on social media platforms.

Stock picture: close up on the hands of a group of people holding smartphones

Picture: Camilo Jimenez, Unsplash

Associate Professor Marian-Andrei Rizoiu is leading the way in combatting online misinformation and hate speech. As Head of the Behavioural Data Science Lab at the University of Technology Sydney (UTS), Associate Professor Rizoiu is combining both computer and social science to better predict hateful speech. 

Co-authored with UTS PhD candidate Lanqin Yuan, Associate Professor Rizoiu’s research outlines a new automatic detection model in the paper, Generalising Hate Speech Detection Using Multi-Task Learning: A Case Study of Political Public Figures.

A multi-task learning model can perform multiple tasks simultaneously and share information across datasets. In this research, the model was trained on eight hate speech datasets from various platforms including X (formerly Twitter), Reddit, Gab and the neo-Nazi platform Stormfront.

“Designing effective automatic detection of hate speech is a significant challenge. Current models are not effective in identifying all the different types of hate speech, including racism, sexism, harassment, incitement to violence and extremism.” 

Associate Professor Rizoiu’s model, however, was able separate abusive language from hate, identifying topics including Islam, women, ethnicity and immigrants. When tested on a dataset of tweets from 15 American public figures, the multi-task learning model was able to identify that out of 5299 abusive posts, 5093 were created by right-leaning figures. 

As social media becomes a significant part of our daily lives, automatic identification of hateful and abusive content is vital in combating the spread of harmful content. 

Associate Professor Marian-Andrei Rizoiu.

Read the original article in Computer Speech and Language. 

Share
Share this on Facebook Share this on Twitter Share this on LinkedIn
Back to News in UTS Engineering and Information Technology

Related News

  • Man reading online news on website with mobile
    Real or fake? How to spot misinformation
  • Stock picture: a collage of portrait profile photos, women and men
    What can we do about Facebook scraping public data?
  • countering disinformation
    UTS researcher wins top defence industry award

Acknowledgement of Country

UTS acknowledges the Gadigal People of the Eora Nation and the Boorooberongal People of the Dharug Nation upon whose ancestral lands our campuses now stand. We would also like to pay respect to the Elders both past and present, acknowledging them as the traditional custodians of knowledge for these lands. 

University of Technology Sydney

City Campus

15 Broadway, Ultimo, NSW 2007

Get in touch with UTS

Follow us

  • Instagram
  • LinkedIn
  • YouTube
  • Facebook

A member of

  • Australian Technology Network
Use arrow keys to navigate within each column of links. Press Tab to move between columns.

Study

  • Find a course
  • Undergraduate
  • Postgraduate
  • How to apply
  • Scholarships and prizes
  • International students
  • Campus maps
  • Accommodation

Engage

  • Find an expert
  • Industry
  • News
  • Events
  • Experience UTS
  • Research
  • Stories
  • Alumni

About

  • Who we are
  • Faculties
  • Learning and teaching
  • Sustainability
  • Initiatives
  • Equity, diversity and inclusion
  • Campus and locations
  • Awards and rankings
  • UTS governance

Staff and students

  • Current students
  • Help and support
  • Library
  • Policies
  • StaffConnect
  • Working at UTS
  • UTS Handbook
  • Contact us
  • Copyright © 2025
  • ABN: 77 257 686 961
  • CRICOS provider number: 00099F
  • TEQSA provider number: PRV12060
  • TEQSA category: Australian University
  • Privacy
  • Copyright
  • Disclaimer
  • Accessibility