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Stereotype and Skew: Quantifying Gender Bias in Pre-trained and
  Fine-tuned Language Models

Stereotype and Skew: Quantifying Gender Bias in Pre-trained and Fine-tuned Language Models

24 January 2021
Daniel de Vassimon Manela
D. Errington
Thomas Fisher
B. V. Breugel
Pasquale Minervini
ArXivPDFHTML

Papers citing "Stereotype and Skew: Quantifying Gender Bias in Pre-trained and Fine-tuned Language Models"

16 / 16 papers shown
Title
Mitigating Group-Level Fairness Disparities in Federated Visual Language Models
Mitigating Group-Level Fairness Disparities in Federated Visual Language Models
Chaomeng Chen
Zitong Yu
Jin Song Dong
Sen Su
L. Shen
Shutao Xia
Xiaochun Cao
FedML
VLM
166
0
0
03 May 2025
MASS: Overcoming Language Bias in Image-Text Matching
MASS: Overcoming Language Bias in Image-Text Matching
Jiwan Chung
Seungwon Lim
Sangkyu Lee
Youngjae Yu
VLM
32
0
0
20 Jan 2025
Interpreting Arithmetic Mechanism in Large Language Models through
  Comparative Neuron Analysis
Interpreting Arithmetic Mechanism in Large Language Models through Comparative Neuron Analysis
Zeping Yu
Sophia Ananiadou
LRM
MILM
27
7
0
21 Sep 2024
Benchmark Data Contamination of Large Language Models: A Survey
Benchmark Data Contamination of Large Language Models: A Survey
Cheng Xu
Shuhao Guan
Derek Greene
Mohand-Tahar Kechadi
ELM
ALM
38
39
0
06 Jun 2024
Synthcity: facilitating innovative use cases of synthetic data in
  different data modalities
Synthcity: facilitating innovative use cases of synthetic data in different data modalities
Zhaozhi Qian
B. Cebere
M. Schaar
SyDa
38
57
0
18 Jan 2023
Counteracts: Testing Stereotypical Representation in Pre-trained
  Language Models
Counteracts: Testing Stereotypical Representation in Pre-trained Language Models
Damin Zhang
Julia Taylor Rayz
Romila Pradhan
36
2
0
11 Jan 2023
Choose Your Lenses: Flaws in Gender Bias Evaluation
Choose Your Lenses: Flaws in Gender Bias Evaluation
Hadas Orgad
Yonatan Belinkov
27
35
0
20 Oct 2022
Fewer Errors, but More Stereotypes? The Effect of Model Size on Gender
  Bias
Fewer Errors, but More Stereotypes? The Effect of Model Size on Gender Bias
Yarden Tal
Inbal Magar
Roy Schwartz
19
33
0
20 Jun 2022
Conditional Supervised Contrastive Learning for Fair Text Classification
Conditional Supervised Contrastive Learning for Fair Text Classification
Jianfeng Chi
Will Shand
Yaodong Yu
Kai-Wei Chang
Han Zhao
Yuan Tian
FaML
46
14
0
23 May 2022
What Do Compressed Multilingual Machine Translation Models Forget?
What Do Compressed Multilingual Machine Translation Models Forget?
Alireza Mohammadshahi
Vassilina Nikoulina
Alexandre Berard
Caroline Brun
James Henderson
Laurent Besacier
AI4CE
42
9
0
22 May 2022
Probing Pre-Trained Language Models for Cross-Cultural Differences in
  Values
Probing Pre-Trained Language Models for Cross-Cultural Differences in Values
Arnav Arora
Lucie-Aimée Kaffee
Isabelle Augenstein
VLM
31
123
0
25 Mar 2022
Training language models to follow instructions with human feedback
Training language models to follow instructions with human feedback
Long Ouyang
Jeff Wu
Xu Jiang
Diogo Almeida
Carroll L. Wainwright
...
Amanda Askell
Peter Welinder
Paul Christiano
Jan Leike
Ryan J. Lowe
OSLM
ALM
339
12,003
0
04 Mar 2022
A Survey on Gender Bias in Natural Language Processing
A Survey on Gender Bias in Natural Language Processing
Karolina Stañczak
Isabelle Augenstein
30
110
0
28 Dec 2021
Efficient Large Scale Language Modeling with Mixtures of Experts
Efficient Large Scale Language Modeling with Mixtures of Experts
Mikel Artetxe
Shruti Bhosale
Naman Goyal
Todor Mihaylov
Myle Ott
...
Jeff Wang
Luke Zettlemoyer
Mona T. Diab
Zornitsa Kozareva
Ves Stoyanov
MoE
61
188
0
20 Dec 2021
DECAF: Generating Fair Synthetic Data Using Causally-Aware Generative
  Networks
DECAF: Generating Fair Synthetic Data Using Causally-Aware Generative Networks
A. Saha
Trent Kyono
J. Linmans
M. Schaar
CML
35
105
0
25 Oct 2021
Megatron-LM: Training Multi-Billion Parameter Language Models Using
  Model Parallelism
Megatron-LM: Training Multi-Billion Parameter Language Models Using Model Parallelism
M. Shoeybi
M. Patwary
Raul Puri
P. LeGresley
Jared Casper
Bryan Catanzaro
MoE
245
1,826
0
17 Sep 2019
1