Lai Kenneth, Oliveira Helder C R, Hou Ming, Yanushkevich Svetlana N, Shmerko Vlad P
Biometric Technologies LaboratoryDepartment of Electrical and Computer EngineeringUniversity of Calgary Calgary AB T2N 1N4 Canada.
Defence Research and Development Canada (DRDC) Ottawa ON K1N 1J8 Canada.
IEEE Access. 2020 Aug 11;8:148779-148792. doi: 10.1109/ACCESS.2020.3015855. eCollection 2020.
Biometrics and biometric-enabled decision support systems (DSS) have become a mandatory part of complex dynamic systems such as security checkpoints, personal health monitoring systems, autonomous robots, and epidemiological surveillance. Risk, trust, and bias (R-T-B) are emerging measures of performance of such systems. The existing studies on the R-T-B impact on system performance mostly ignore the complementary nature of R-T-B and their causal relationships, for instance, risk of trust, risk of bias, and risk of trust over biases. This paper offers a complete taxonomy of the R-T-B causal performance regulators for the biometric-enabled DSS. The proposed novel taxonomy links the R-T-B assessment to the causal inference mechanism for reasoning in decision making. of the R-T-B assessment in the DSS are demonstrated using the experiments of assessing the trust in synthetic biometric and the risk of bias in face biometrics. The paper also outlines the of the proposed approach beyond biometrics, including decision support for epidemiological surveillance such as for COVID-19 pandemics.
生物识别技术和基于生物识别的决策支持系统(DSS)已成为复杂动态系统(如安全检查站、个人健康监测系统、自主机器人和流行病学监测)的一个必要组成部分。风险、信任和偏差(R-T-B)是此类系统新兴的性能衡量指标。现有的关于R-T-B对系统性能影响的研究大多忽略了R-T-B的互补性质及其因果关系,例如,信任风险、偏差风险以及信任超过偏差的风险。本文为基于生物识别的DSS提供了一个完整的R-T-B因果性能调节器分类法。所提出的新颖分类法将R-T-B评估与决策推理中的因果推理机制联系起来。通过评估对合成生物识别的信任以及面部生物识别中的偏差风险的实验,展示了DSS中R-T-B评估的应用。本文还概述了所提出方法在生物识别之外的应用,包括对诸如COVID-19大流行等流行病学监测的决策支持。