Image fairness in deep learning: problems, models, and challenges

被引:0
作者
Huan Tian
Tianqing Zhu
Wei Liu
Wanlei Zhou
机构
[1] University of Technology Sydney,School of Computer Science
[2] City University of Macau,undefined
来源
Neural Computing and Applications | 2022年 / 34卷
关键词
Image fairness protection; Deep learning; Fair representations;
D O I
暂无
中图分类号
学科分类号
摘要
In recent years, it has been revealed that machine learning models can produce discriminatory predictions. Hence, fairness protection has come to play a pivotal role in machine learning. In the past, most studies on fairness protection have used traditional machine learning methods to enforce fairness. However, these studies focus on low dimensional inputs, such as numerical inputs, whereas more recent deep learning technologies have encouraged fairness protection with image inputs through deep model methods. These approaches involve various object functions and structural designs that break the spurious correlations between targets and sensitive features. With these connections broken, we are left with fairer predictions. To better understand the proposed methods and encourage further development in the field, this paper summarizes fairness protection methods in terms of three aspects: the problem settings, the models, and the challenges. Through this survey, we hope to reveal research trends in the field, discover the fundamentals of enforcing fairness, and summarize the main challenges to producing fairer models.
引用
收藏
页码:12875 / 12893
页数:18
相关论文
共 105 条
  • [1] Guion R(2008)Employment tests and discriminatory hiring Ind Relat A J Econ Soc 5 20-37
  • [2] Bellamy RKE(2019)Think your artificial intelligence software is fair? Think again IEEE Softw 36 76-80
  • [3] Dey K(2015)Risk assessment in social lending via random forests Expert Syst Appl 42 4621-4631
  • [4] Hind M(2018)Discretion in hiring Q J Econ 133 765-800
  • [5] Hoffman SC(2014)Machine learning for targeted display advertising: transfer learning in action Mach Learn 95 103-127
  • [6] Houde S(2015)Machine learning applications in cancer prognosis and prediction Comput Struct Biotechnol J 13 8-17
  • [7] Kannan K(1996)Bias in computer systems ACM Trans Inf Syst (TOIS) 14 330-347
  • [8] Lohia PK(2019)Social data: biases, methodological pitfalls, and ethical boundaries Front Big Data 2 13-34
  • [9] Mehta S(2021)Fairness in deep learning: a computational perspective IEEE Intell Syst 36 25-33
  • [10] Mojsilovic A(2012)Data preprocessing techniques for classification without discrimination Knowl Inf Syst 33 1-678