ResearchTrend.AI
  • Papers
  • Communities
  • Events
  • Blog
  • Pricing
Papers
Communities
Social Events
Terms and Conditions
Pricing
Parameter LabParameter LabTwitterGitHubLinkedInBlueskyYoutube

© 2025 ResearchTrend.AI, All rights reserved.

  1. Home
  2. Papers
  3. 2105.12195
  4. Cited By
Bias in Machine Learning Software: Why? How? What to do?

Bias in Machine Learning Software: Why? How? What to do?

25 May 2021
Joymallya Chakraborty
Suvodeep Majumder
Tim Menzies
    FaML
ArXivPDFHTML

Papers citing "Bias in Machine Learning Software: Why? How? What to do?"

21 / 21 papers shown
Title
Intersectional Divergence: Measuring Fairness in Regression
Intersectional Divergence: Measuring Fairness in Regression
Joe Germino
Nuno Moniz
Nitesh V. Chawla
FaML
68
0
0
01 May 2025
Whence Is A Model Fair? Fixing Fairness Bugs via Propensity Score Matching
Whence Is A Model Fair? Fixing Fairness Bugs via Propensity Score Matching
Kewen Peng
Yicheng Yang
Hao Zhuo
32
0
0
23 Apr 2025
FairSense: Long-Term Fairness Analysis of ML-Enabled Systems
FairSense: Long-Term Fairness Analysis of ML-Enabled Systems
Yining She
Sumon Biswas
Christian Kastner
Eunsuk Kang
45
0
0
03 Jan 2025
Towards Robust Training Datasets for Machine Learning with Ontologies: A
  Case Study for Emergency Road Vehicle Detection
Towards Robust Training Datasets for Machine Learning with Ontologies: A Case Study for Emergency Road Vehicle Detection
Lynn Vonderhaar
Timothy Elvira
T. Procko
Omar Ochoa
39
0
0
21 Jun 2024
Generative AI Voting: Fair Collective Choice is Resilient to LLM Biases and Inconsistencies
Generative AI Voting: Fair Collective Choice is Resilient to LLM Biases and Inconsistencies
Srijoni Majumdar
Edith Elkind
Evangelos Pournaras
SyDa
55
1
0
31 May 2024
Predicting Fairness of ML Software Configurations
Predicting Fairness of ML Software Configurations
Salvador Robles Herrera
Verya Monjezi
V. Kreinovich
Ashutosh Trivedi
Saeid Tizpaz-Niari
29
1
0
29 Apr 2024
SAFER: Situation Aware Facial Emotion Recognition
SAFER: Situation Aware Facial Emotion Recognition
M. Palash
Bharat K. Bhargava
30
0
0
14 Jun 2023
Causality-Aided Trade-off Analysis for Machine Learning Fairness
Causality-Aided Trade-off Analysis for Machine Learning Fairness
Zhenlan Ji
Pingchuan Ma
Shuai Wang
Yanhui Li
FaML
34
7
0
22 May 2023
Latent Imitator: Generating Natural Individual Discriminatory Instances
  for Black-Box Fairness Testing
Latent Imitator: Generating Natural Individual Discriminatory Instances for Black-Box Fairness Testing
Yisong Xiao
Aishan Liu
Tianlin Li
Xianglong Liu
22
26
0
19 May 2023
Fairness-Aware Data Valuation for Supervised Learning
Fairness-Aware Data Valuation for Supervised Learning
José P. Pombal
Pedro Saleiro
Mário A. T. Figueiredo
P. Bizarro
TDI
43
3
0
29 Mar 2023
Preventing Discriminatory Decision-making in Evolving Data Streams
Preventing Discriminatory Decision-making in Evolving Data Streams
Zichong Wang
N. Saxena
Tongjia Yu
Sneha Karki
Tyler Zetty
...
Shanlin Zhou
Dukka B Kc
I. Stockwell
Albert Bifet
Wenbin Zhang
FaML
33
19
0
16 Feb 2023
Less, but Stronger: On the Value of Strong Heuristics in Semi-supervised
  Learning for Software Analytics
Less, but Stronger: On the Value of Strong Heuristics in Semi-supervised Learning for Software Analytics
Huy Tu
Tim Menzies
28
0
0
03 Feb 2023
What are the Machine Learning best practices reported by practitioners
  on Stack Exchange?
What are the Machine Learning best practices reported by practitioners on Stack Exchange?
Anamaria Mojica-Hanke
A. Bayona
Mario Linares-Vásquez
Steffen Herbold
Fabio A. González
HAI
27
6
0
25 Jan 2023
Don't Lie to Me: Avoiding Malicious Explanations with STEALTH
Don't Lie to Me: Avoiding Malicious Explanations with STEALTH
Lauren Alvarez
Tim Menzies
34
2
0
25 Jan 2023
Towards Understanding Fairness and its Composition in Ensemble Machine
  Learning
Towards Understanding Fairness and its Composition in Ensemble Machine Learning
Usman Gohar
Sumon Biswas
Hridesh Rajan
FaML
FedML
13
24
0
08 Dec 2022
Towards A Holistic View of Bias in Machine Learning: Bridging
  Algorithmic Fairness and Imbalanced Learning
Towards A Holistic View of Bias in Machine Learning: Bridging Algorithmic Fairness and Imbalanced Learning
Damien Dablain
Bartosz Krawczyk
Nitesh V. Chawla
FaML
26
19
0
13 Jul 2022
Fair-SSL: Building fair ML Software with less data
Fair-SSL: Building fair ML Software with less data
Joymallya Chakraborty
Suvodeep Majumder
Huy Tu
SyDa
11
5
0
03 Nov 2021
Fair Enough: Searching for Sufficient Measures of Fairness
Fair Enough: Searching for Sufficient Measures of Fairness
Suvodeep Majumder
Joymallya Chakraborty
Gina R. Bai
Kathryn T. Stolee
Tim Menzies
22
26
0
25 Oct 2021
Developing a novel fair-loan-predictor through a multi-sensitive
  debiasing pipeline: DualFair
Developing a novel fair-loan-predictor through a multi-sensitive debiasing pipeline: DualFair
Ashutosh Kumar Singh
Jashandeep Singh
Ariba Khan
Amar Gupta
FaML
21
3
0
17 Oct 2021
Productivity, Portability, Performance: Data-Centric Python
Productivity, Portability, Performance: Data-Centric Python
Yiheng Wang
Yao Zhang
Yanzhang Wang
Yan Wan
Jiao Wang
Zhongyuan Wu
Yuhao Yang
Bowen She
54
95
0
01 Jul 2021
Astraea: Grammar-based Fairness Testing
Astraea: Grammar-based Fairness Testing
E. Soremekun
Sakshi Udeshi
Sudipta Chattopadhyay
26
27
0
06 Oct 2020
1