Directive Explanations for Actionable Explainability in Machine Learning Applications

被引:0
|
作者
Singh, Ronal [1 ]
Miller, Tim [1 ]
Lyons, Henrietta [1 ]
Sonenberg, Liz [1 ]
Velloso, Eduardo [1 ]
Vetere, Frank [1 ]
Howe, Piers [2 ]
Dourish, Paul [3 ]
机构
[1] Univ Melbourne, Sch Comp & Informat Syst, Melbourne, Vic 3010, Australia
[2] Univ Melbourne, Melbourne Sch Psychol Sci, Melbourne, Vic 3010, Australia
[3] Univ Calif Irvine, Donald Bren Sch Informat & Comp Sci, Irvine, CA 92697 USA
基金
澳大利亚研究理事会;
关键词
Explainable AI; directive explanations; counterfactual explanations; BLACK-BOX;
D O I
10.1145/3579363
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
In this article, we show that explanations of decisions made by machine learning systems can be improved by not only explaining why a decision was made but also explaining how an individual could obtain their desired outcome. We formally define the concept of directive explanations (those that offer specific actions an individual could take to achieve their desired outcome), introduce two forms of directive explanations (directive-specific and directive-generic), and describe how these can be generated computationally. We investigate people's preference for and perception toward directive explanations through two online studies, one quantitative and the other qualitative, each covering two domains (the credit scoring domain and the employee satisfaction domain). We find a significant preference for both forms of directive explanations compared to non-directive counterfactual explanations. However, we also find that preferences are affected by many aspects, including individual preferences and social factors. We conclude that deciding what type of explanation to provide requires information about the recipients and other contextual information. This reinforces the need for a human-centered and context-specific approach to explainable AI.
引用
收藏
页数:26
相关论文
共 50 条
  • [41] SurvSHAP(t): Time-dependent explanations of machine learning survival models
    Krzyzinski, Mateusz
    Spytek, Mikolaj
    Baniecki, Hubert
    Biecek, Przemyslaw
    KNOWLEDGE-BASED SYSTEMS, 2023, 262
  • [42] Optimizing Cardiac Surgery Risk Prediction: An Machine Learning Approach with Counterfactual Explanations
    Qin, Dengkang
    Liu, Mengxue
    Chen, Zheng
    Lei, Qian
    ADVANCED INTELLIGENT COMPUTING TECHNOLOGY AND APPLICATIONS, ICIC 2023, PT III, 2023, 14088 : 221 - 232
  • [43] Further Insights: Balancing Privacy, Explainability, and Utility in Machine Learning-based Tabular Data Analysis
    Abbasi, Wisam
    Mori, Paolo
    Saracino, Andrea
    19TH INTERNATIONAL CONFERENCE ON AVAILABILITY, RELIABILITY, AND SECURITY, ARES 2024, 2024,
  • [44] How does the model make predictions? A systematic literature review on the explainability power of machine learning in healthcare
    Allgaier, Johannes
    Mulansky, Lena
    Draelos, Rachel Lea
    Pryss, Ruediger
    ARTIFICIAL INTELLIGENCE IN MEDICINE, 2023, 143
  • [45] Debiased-CAM to mitigate image perturbations with faithful visual explanations of machine learning
    Zhang, Wencan
    Dimiccoli, Mariella
    Lim, Brian Y.
    PROCEEDINGS OF THE 2022 CHI CONFERENCE ON HUMAN FACTORS IN COMPUTING SYSTEMS (CHI' 22), 2022,
  • [46] Human performance consequences of normative and contrastive explanations: An experiment in machine learning for reliability maintenance
    Gentile, Davide
    Donmez, Birsen
    Jamieson, Greg A.
    ARTIFICIAL INTELLIGENCE, 2023, 321
  • [47] A Survey of Counterfactual Explanations: Definition, Evaluation, Algorithms, and Applications
    Zhang, Xuezhong
    Dai, Libin
    Peng, Qingming
    Tang, Ruizhi
    Li, Xinwei
    ADVANCES IN NATURAL COMPUTATION, FUZZY SYSTEMS AND KNOWLEDGE DISCOVERY, ICNC-FSKD 2022, 2023, 153 : 905 - 912
  • [48] Counterfactual explanations for misclassified images: How human and machine explanations differ
    Delaney, Eoin
    Pakrashi, Arjun
    Greene, Derek
    Keane, Mark T.
    ARTIFICIAL INTELLIGENCE, 2023, 324
  • [49] Explainable AI and machine learning: performance evaluation and explainability of classifiers on educational data mining inspired career counseling
    Pratiyush Guleria
    Manu Sood
    Education and Information Technologies, 2023, 28 : 1081 - 1116
  • [50] Explainable AI and machine learning: performance evaluation and explainability of classifiers on educational data mining inspired career counseling
    Guleria, Pratiyush
    Sood, Manu
    EDUCATION AND INFORMATION TECHNOLOGIES, 2023, 28 (01) : 1081 - 1116