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Quantifying and Reducing Stereotypes in Word Embeddings

Quantifying and Reducing Stereotypes in Word Embeddings

20 June 2016
Tolga Bolukbasi
Kai-Wei Chang
James Zou
Venkatesh Saligrama
Adam Kalai
ArXiv (abs)PDFHTML

Papers citing "Quantifying and Reducing Stereotypes in Word Embeddings"

17 / 17 papers shown
Title
Dissecting Bias in LLMs: A Mechanistic Interpretability Perspective
Bhavik Chandna
Zubair Bashir
Procheta Sen
80
0
0
05 Jun 2025
Identifying Gender Stereotypes and Biases in Automated Translation from English to Italian using Similarity Networks
Identifying Gender Stereotypes and Biases in Automated Translation from English to Italian using Similarity Networks
Fatemeh Mohammadi
Marta Annamaria Tamborini
Paolo Ceravolo
Costanza Nardocci
S. Maghool
107
0
0
17 Feb 2025
LLMs as mirrors of societal moral standards: reflection of cultural
  divergence and agreement across ethical topics
LLMs as mirrors of societal moral standards: reflection of cultural divergence and agreement across ethical topics
Mijntje Meijer
Hadi Mohammadi
Ayoub Bagheri
91
2
0
01 Dec 2024
Revisiting The Classics: A Study on Identifying and Rectifying Gender
  Stereotypes in Rhymes and Poems
Revisiting The Classics: A Study on Identifying and Rectifying Gender Stereotypes in Rhymes and Poems
Aditya Narayan Sankaran
Vigneshwaran Shankaran
Sampath Lonka
Rajesh Sharma
60
0
0
18 Mar 2024
Fairness Evaluation for Uplift Modeling in the Absence of Ground Truth
Fairness Evaluation for Uplift Modeling in the Absence of Ground Truth
Serdar Kadioğlu
Filip Michalsky
34
2
0
12 Feb 2024
Are fairness metric scores enough to assess discrimination biases in
  machine learning?
Are fairness metric scores enough to assess discrimination biases in machine learning?
Fanny Jourdan
Laurent Risser
Jean-Michel Loubes
Nicholas M. Asher
FaML
46
5
0
08 Jun 2023
Dialectograms: Machine Learning Differences between Discursive
  Communities
Dialectograms: Machine Learning Differences between Discursive Communities
Thyge R Enggaard
August Lohse
M. Pedersen
Sune Lehmann
44
2
0
11 Feb 2023
Theories of "Gender" in NLP Bias Research
Theories of "Gender" in NLP Bias Research
Hannah Devinney
Jenny Björklund
H. Björklund
AI4CE
104
76
0
05 May 2022
Towards an Enhanced Understanding of Bias in Pre-trained Neural Language
  Models: A Survey with Special Emphasis on Affective Bias
Towards an Enhanced Understanding of Bias in Pre-trained Neural Language Models: A Survey with Special Emphasis on Affective Bias
Anoop Kadan
Manjary P.Gangan
Deepak P
L. LajishV.
AI4CE
86
10
0
21 Apr 2022
Counterfactual Multi-Token Fairness in Text Classification
Counterfactual Multi-Token Fairness in Text Classification
P. Lohia
46
3
0
08 Feb 2022
Towards Neural Programming Interfaces
Towards Neural Programming Interfaces
Zachary Brown
Nathaniel R. Robinson
David Wingate
Nancy Fulda
AI4CE
116
5
0
10 Dec 2020
Cultural Cartography with Word Embeddings
Cultural Cartography with Word Embeddings
Dustin S. Stoltz
Marshall A. Taylor
46
39
0
09 Jul 2020
Language (Technology) is Power: A Critical Survey of "Bias" in NLP
Language (Technology) is Power: A Critical Survey of "Bias" in NLP
Su Lin Blodgett
Solon Barocas
Hal Daumé
Hanna M. Wallach
159
1,257
0
28 May 2020
Machine learning as a model for cultural learning: Teaching an algorithm
  what it means to be fat
Machine learning as a model for cultural learning: Teaching an algorithm what it means to be fat
Alina Arseniev-Koehler
J. Foster
74
49
0
24 Mar 2020
Assessing Social and Intersectional Biases in Contextualized Word
  Representations
Assessing Social and Intersectional Biases in Contextualized Word Representations
Y. Tan
Elisa Celis
FaML
107
229
0
04 Nov 2019
Using Word Embeddings to Examine Gender Bias in Dutch Newspapers,
  1950-1990
Using Word Embeddings to Examine Gender Bias in Dutch Newspapers, 1950-1990
M. Wevers
101
33
0
21 Jul 2019
TFW, DamnGina, Juvie, and Hotsie-Totsie: On the Linguistic and Social
  Aspects of Internet Slang
TFW, DamnGina, Juvie, and Hotsie-Totsie: On the Linguistic and Social Aspects of Internet Slang
Vivek Kulkarni
William Yang Wang
31
2
0
22 Dec 2017
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