Bias in Machine Learning: A Literature Review

被引:4
作者
Mavrogiorgos, Konstantinos [1 ]
Kiourtis, Athanasios [1 ]
Mavrogiorgou, Argyro [1 ]
Menychtas, Andreas [1 ]
Kyriazis, Dimosthenis [1 ]
机构
[1] Univ Piraeus, Dept Digital Syst, Piraeus 18534, Greece
来源
APPLIED SCIENCES-BASEL | 2024年 / 14卷 / 19期
关键词
bias; algorithms; machine learning; artificial intelligence; literature review; NEURAL-NETWORKS; REGULARIZATION; PERFORMANCE; SELECTION; DROPOUT; MODEL; REGRESSION; FEATURES; LASSO; RIDGE;
D O I
10.3390/app14198860
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Bias could be defined as the tendency to be in favor or against a person or a group, thus promoting unfairness. In computer science, bias is called algorithmic or artificial intelligence (i.e., AI) and can be described as the tendency to showcase recurrent errors in a computer system, which result in "unfair" outcomes. Bias in the "outside world" and algorithmic bias are interconnected since many types of algorithmic bias originate from external factors. The enormous variety of different types of AI biases that have been identified in diverse domains highlights the need for classifying the said types of AI bias and providing a detailed overview of ways to identify and mitigate them. The different types of algorithmic bias that exist could be divided into categories based on the origin of the bias, since bias can occur during the different stages of the Machine Learning (i.e., ML) lifecycle. This manuscript is a literature study that provides a detailed survey regarding the different categories of bias and the corresponding approaches that have been proposed to identify and mitigate them. This study not only provides ready-to-use algorithms for identifying and mitigating bias, but also enhances the empirical knowledge of ML engineers to identify bias based on the similarity that their use cases have to other approaches that are presented in this manuscript. Based on the findings of this study, it is observed that some types of AI bias are better covered in the literature, both in terms of identification and mitigation, whilst others need to be studied more. The overall contribution of this research work is to provide a useful guideline for the identification and mitigation of bias that can be utilized by ML engineers and everyone who is interested in developing, evaluating and/or utilizing ML models.
引用
收藏
页数:40
相关论文
共 231 条
  • [21] AI Fairness 360: An extensible toolkit for detecting and mitigating algorithmic bias
    Bellamy, R. K. E.
    Dey, K.
    Hind, M.
    Hoffman, S. C.
    Houde, S.
    Kannan, K.
    Lohia, P.
    Martino, J.
    Mehta, S.
    Mojsilovie, A.
    Nagar, S.
    Ramamurthy, K. Natesan
    Richards, J.
    Saha, D.
    Sattigeri, P.
    Singh, M.
    Varshney, K. R.
    Zhang, Y.
    [J]. IBM JOURNAL OF RESEARCH AND DEVELOPMENT, 2019, 63 (4-5)
  • [22] Detection of Face Features using Adapted Triplet Loss with Biased data
    Bibi, Sidra
    Shin, Jitae
    [J]. 2022 IEEE INTERNATIONAL CONFERENCE ON IMAGING SYSTEMS AND TECHNIQUES (IST 2022), 2022,
  • [23] Biderman S., 2020, Pitfalls in machine learning research: Reexamining the development cycle
  • [24] Prediction of topsoil organic carbon content with Sentinel-2 imagery and spectroscopic measurements under different conditions using an ensemble model approach with multiple pre-treatment combinations
    Biney, James Kobina Mensah
    Vasat, Radim
    Mackenzie Bell, Stephen
    Kebonye, Ndiye Michael
    Klement, Ales
    John, Kingsley
    Boruvka, Lubos
    [J]. SOIL & TILLAGE RESEARCH, 2022, 220
  • [25] PolicyCLOUD: A prototype of a cloud serverless ecosystem for policy analytics
    Biran, Ofer
    Feder, Oshrit
    Moatti, Yosef
    Kiourtis, Athanasios
    Kyriazis, Dimosthenis
    Manias, George
    Mavrogiorgou, Argyro
    Sgouros, Nikitas M.
    Barata, Martim T.
    Oldani, Isabella
    Sanguino, Maria A.
    Kranas, Pavlos
    Baroni, Samuele
    [J]. DATA & POLICY, 2022, 4
  • [26] Bird S., 2020, Technical Report MSR-TR-2020-32
  • [27] Birhane A., 2022, P IEEE CVF WINT C AP, P4051
  • [28] Blawatt K.R., 2016, Marconomics, P325, DOI DOI 10.1108/978-1-78635-566-920161032
  • [29] Brim A, 2020, 2020 10TH ANNUAL COMPUTING AND COMMUNICATION WORKSHOP AND CONFERENCE (CCWC), P222, DOI [10.1109/ccwc47524.2020.9031159, 10.1109/CCWC47524.2020.9031159]
  • [30] Bias Reduction in Variational Regularization
    Brinkmann, Eva-Maria
    Burger, Martin
    Rasch, Julian
    Sutour, Camille
    [J]. JOURNAL OF MATHEMATICAL IMAGING AND VISION, 2017, 59 (03) : 534 - 566