Bias does not equal bias: a socio-technical typology of bias in data-based algorithmic systems

被引:13
|
作者
Lopez, Paola [1 ]
机构
[1] Univ Vienna, Vienna, Austria
来源
INTERNET POLICY REVIEW | 2021年 / 10卷 / 04期
关键词
Artificial intelligence; Machine learning; Bias;
D O I
10.14763/2021.4.1598
中图分类号
G2 [信息与知识传播];
学科分类号
05 ; 0503 ;
摘要
This paper introduces a socio-technical typology of bias in data-driven machine learning and artificial intelligence systems. The typology is linked to the conceptualisations of legal anti-discrimination regulations, so that the concept of structural inequality-and, therefore, of undesirable bias-is defined accordingly. By analysing the controversial Austrian "AMS algorithm" as a case study as well as examples in the contexts of face detection, risk assessment and health care management, this paper defines the following three types of bias: firstly, purely technical bias as a systematic deviation of the datafied version of a phenomenon from reality; secondly, socio-technical bias as a systematic deviation due to structural inequalities, which must be strictly distinguished from, thirdly, societal bias, which depicts-correctly-the structural inequalities that prevail in society. This paper argues that a clear distinction must be made between different concepts of bias in such systems in order to analytically assess these systems and, subsequently, inform political action.
引用
收藏
页数:29
相关论文
共 50 条
  • [31] Beyond Algorithmic Bias: A Socio-Computational Interrogation of the Google Search by Image Algorithm
    Papakyriakopoulos, Orestis
    Mboya, Arwa M.
    SOCIAL SCIENCE COMPUTER REVIEW, 2023, 41 (04) : 1100 - 1125
  • [32] Putting algorithmic bias on top of the agenda in the discussions on autonomous weapons systems
    Ishmael Bhila
    Digital War, 2024, 5 (3): : 201 - 212
  • [33] Does blending of chlorophyll data bias temporal trend?
    Mackas, David L.
    NATURE, 2011, 472 (7342) : E4 - E5
  • [34] Does blending of chlorophyll data bias temporal trend?
    David L. Mackas
    Nature, 2011, 472 : E4 - E5
  • [35] Biasogram: Visualization of Confounding Technical Bias in Gene Expression Data
    Krzystanek, Marcin
    Szallasi, Zoltan
    Eklund, Aron C.
    PLOS ONE, 2013, 8 (04):
  • [36] Comparison of bias adjustment in meta-analysis using data-based and opinion-based methods
    Stone, Jennifer C.
    Furuya-Kanamori, Luis
    Aromataris, Edoardo
    Barker, Timothy H.
    Doi, Suhail A. R.
    JBI EVIDENCE SYNTHESIS, 2024, 22 (03) : 434 - 440
  • [37] Practice Variation, Bias, and Experiential Learning in Cesarean Delivery: A Data-Based System Dynamics Approach
    Ghaffarzadegan, Navid
    Epstein, Andrew J.
    Martin, Erika G.
    HEALTH SERVICES RESEARCH, 2013, 48 (02) : 713 - 734
  • [38] Does Positive Equal Negative? A Test of the Attentional Bias in High Trait Anxiety
    Gallant, Jennifer
    North, Brigitte
    Chamberland, Justin A.
    LaForge, Christian
    Ferguson, Ryan
    Graham, Michelle
    Newton, Carl
    Dickinson, Joel
    CANADIAN JOURNAL OF EXPERIMENTAL PSYCHOLOGY-REVUE CANADIENNE DE PSYCHOLOGIE EXPERIMENTALE, 2016, 70 (04): : 372 - 372
  • [39] Hidden bias to responsible bias: an approach to information systems based on Haraway's situated knowledges
    Feinberg, Melanie
    INFORMATION RESEARCH-AN INTERNATIONAL ELECTRONIC JOURNAL, 2007, 12 (04):
  • [40] Algorithmic Bias: From Discrimination Discovery to Fairness-aware Data Mining
    Hajian, Sara
    Bonchi, Francesco
    Castillo, Carlos
    KDD'16: PROCEEDINGS OF THE 22ND ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY AND DATA MINING, 2016, : 2125 - 2126