Chinese Journal of Management Science ›› 2026, Vol. 34 ›› Issue (8): 92-103.doi: 10.16381/j.cnki.issn1003-207x.2024.1385
Previous Articles Next Articles
Zihao Wang1, Xuanhua Xu1,2(
), Zhongrun Wang1, Yangyang Qian3
Received:2024-08-13
Revised:2024-12-24
Online:2026-08-25
Published:2026-07-14
Contact:
Xuanhua Xu
E-mail:xuxh@csu.edu.cn
CLC Number:
Zihao Wang,Xuanhua Xu,Zhongrun Wang, et al. Research on the Effects of Prior Beliefs and Task Knowledge on Human-AI Collaborative Decision-Making[J]. Chinese Journal of Management Science, 2026, 34(8): 92-103.
| [1] | 王红卫, 李珏, 刘建国, 等. 人机融合复杂社会系统研究[J]. 中国管理科学, 2023, 31(7): 1-21. |
| Wang H W, Li J, Liu J G, et al. Research on human-machine integration complex social system[J]. Chinese Journal of Management Science, 2023, 31(7): 1-21. | |
| [2] | 刘伦. 面向人机协同的公共决策转型: 内涵、议题与框架[J]. 中国行政管理, 2023, 39(9): 142-151. |
| Liu L. Towards human-AI collaborative public decision making: Concepts, issues, and framework[J]. Chinese Public Administration, 2023, 39(9): 142-151. | |
| [3] | Lucas G M, Becerik-Gerber B, Roll S C. Calibrating workers’ trust in intelligent automated systems[J]. Patterns, 2024, 5(9): 101045. |
| [4] | Wiczorek R, Meyer J. Effects of trust, self-confidence, and feedback on the use of decision automation[J]. Frontiers in Psychology, 2019, 10: 519. |
| [5] | Tolmeijer S, Gadiraju U, Ghantasala R, et al. Second chance for a first impression? Trust development in intelligent system interaction[C]//Proceedings of the 29th ACM Conference on User Modeling, Adaptation and Personalization, Utrecht,Netherlands, June 21-25, ACM, 2021: 77-87. |
| [6] | Waggoner P, Kennedy R. The role of personality in trust in public policy automation[J]. Journal of Behavioral Data Science, 2022, 2(1): 106-123. |
| [7] | Yin M, Wortman Vaughan J, Wallach H. Understanding the effect of accuracy on trust in machine learning models[C]//Proceedings of the 2019 CHI Conference on Human Factors in Computing Systems, Glasgow, Scotland, May 4-9, ACM, 2019: 1-12. |
| [8] | Bansal G, Wu T, Zhou J, et al. Does the whole exceed its parts? The effect of ai explanations on complementary team performance[C]//Proceedings of the 2021 CHI Conference on Human Factors in Computing Systems, Yokohama, Japan, May 8-13, ACM, 2021: 1-16. |
| [9] | 高彧, 王聪, 王翀. 点估计与区间估计: 算法预测呈现方式对人机共融决策效果的影响[J]. 管理工程学报, 2024, 38(1): 46-59. |
| Gao Y, Wang C, Wang C. Point and interval estimation: The influence of algorithmic prediction presentation on human-algorithm-integrated decision-making[J]. Journal of Industrial Engineering and Engineering Management, 2024, 38(1): 46-59. | |
| [10] | Buçinca Z, Lin P, Gajos K Z, et al. Proxy tasks and subjective measures can be misleading in evaluating explainable AI systems[C]//Proceedings of the 25th International Conference on Intelligent User Interfaces, Cagliari,Italy, March 17-20,ACM, 2020: 454-464. |
| [11] | Yaniv I, Kleinberger E. Advice taking in decision making: Egocentric discounting and reputation formation[J]. Organizational Behavior and Human Decision Processes, 2000, 83(2): 260-281. |
| [12] | Snow T. From satisficing to artificing: The evolution of administrative decision-making in the age of the algorithm[J]. Data Policy, 2021, 3: e3. |
| [13] | Smith G F, Benson P G, Curley S P. Belief, knowledge, and uncertainty: A cognitive perspective on subjective probability[J]. Organizational Behavior and Human Decision Processes, 1991, 48(2): 291-321. |
| [14] | Leyer M, Schneider S. Decision augmentation and automation with artificial intelligence: Threat or opportunity for managers?[J]. Business Horizons, 2021, 64(5): 711-724. |
| [15] | Shrestha Y R, Ben-Menahem S M, von Krogh G. Organizational decision-making structures in the age of artificial intelligence[J]. California Management Review, 2019, 61(4): 66-83. |
| [16] | 李忆, 喻靓茹, 邱东. 人与人工智能协作模式综述[J]. 情报杂志, 2020, 39(10): 137-143. |
| Li Y, Yu L R, Qiu D. Review of cooperation mode between human and artificial intelligence[J]. Journal of Intelligence, 2020, 39(10): 137-143. | |
| [17] | Hou T, Li M, Tan Y, et al. Physician adoption of AI assistant[J]. Manufacturing Service Operations Management, 2024, 26(5): 1639-1655. |
| [18] | Selten F, Robeer M, Grimmelikhuijsen S. ‘Just like I thought’: Street-level bureaucrats trust AI recommendations if they confirm their professional judgment[J]. Public Administration Review, 2023, 83(2): 263-278. |
| [19] | Kappes A, Harvey A H, Lohrenz T, et al. Confirmation bias in the utilization of others’ opinion strength[J]. Nature Neuroscience, 2020, 23(1): 130-137. |
| [20] | Amsel E, Brock S. The development of evidence evaluation skills[J]. Cognitive Development, 1996, 11(4): 523-550. |
| [21] | Alon-Barkat S, Busuioc M. Human–AI interactions in public sector decision making: “automation bias” and “selective adherence” to algorithmic advice[J]. Journal of Public Administration Research and Theory, 2023, 33(1): 153-169. |
| [22] | Choudhury P, Starr E, Agarwal R. Machine learning and human capital complementarities: Experimental evidence on bias mitigation[J]. Strategic Management Journal, 2020, 41(8): 1381-1411. |
| [23] | Veenman M V J, Van Hout-Wolters B H A M, Afflerbach P. Metacognition and learning: Conceptual and methodological considerations[J]. Metacognition and Learning, 2006, 1(1): 3-14. |
| [24] | Rollwage M, Fleming S M. Confirmation bias is adaptive when coupled with efficient metacognition[J]. Philosophical Transactions of the Royal Society B, 2021, 376(1822): 20200131. |
| [25] | Bandura A. Self-efficacy: The exercise of control[M]. Worcestershire: Worth Publishers, 1997. |
| [26] | Molenberghs P, Trautwein F M, Böckler A, et al. Neural correlates of metacognitive ability and of feeling confident: A large-scale fMRI study[J]. Social Cognitive and Affective Neuroscience, 2016, 11(12): 1942-1951. |
| [27] | Heart T, Zucker A, Roshtov S S I, et al. Investigating physicians' compliance with drug prescription notifications[J]. Journal of the Association for Information Systems, 2011, 12(3): 235-254. |
| [28] | Hutton R J B, Klein G. Expert decision making[J]. Systems Engineering;The Journal of The International Council on Systems Engineering,1999, 2(1): 32-45. |
| [29] | Adomavicius G, Bockstedt J C, Curley S P, et al. Do recommender systems manipulate consumer preferences? A study of anchoring effects[J]. Information Systems Research, 2013, 24(4): 956-975. |
| [30] | Pescetelli N, Yeung N. The role of decision confidence in advice-taking and trust formation[J]. Journal of Experimental Psychology: General, 2021, 150(3): 507-526. |
| [31] | Lu Z, Yin M. Human reliance on machine learning models when performance feedback is limited: Heuris tics and risks[C]//Proceedings of the 2021 CHI Confer ence on Human Factors in Computing Systems, Yokohama, Japan, May 8-13, ACM, 2021: 1-16. |
| [32] | Schemmer M, Kuehl N, Benz C, et al. Appropriate reliance on AI advice: Conceptualization and the effect of explanations[C]//Proceedings of the 28th International Conference on Intelligent User Interfaces, Sydney,Australia, March 27-31,ACM, 2023: 410-422. |
| [33] | Dey I, Gnesdilow D, Passonneau R, et al. Potential pitfalls of false positives[C]//Proceedings of the 25th International Conference on Artificial Intelligence in Education, Recife, Brazil, July 8-12, Springer,2024: 469-476. |
| [34] | Logg J M, Minson J A, Moore D A. Algorithm appreciation: People prefer algorithmic to human judgment[J]. Organizational Behavior and Human Decision Processes, 2019, 151: 90-103. |
| [35] | Lehmann C A, Haubitz C B, Fügener A, et al. The risk of algorithm transparency: How algorithm complexity drives the effects on the use of advice[J]. Production and Operations Management, 2022, 31(9): 3419-3434. |
| [36] | Ning X, Lu Y, Li W, et al. How transparency affects algorithmic advice utilization: The mediating roles of trusting beliefs[J]. Decision Support Systems, 2024, 183: 114273. |
| [37] | Bonaccio S, Dalal R S. Advice taking and decision-making: An integrative literature review, and implications for the organizational sciences[J]. Organizational Behavior and Human Decision Processes, 2006, 101(2): 127-151. |
| [38] | Cortez P, Silva A M G. Using data mining to predict secondary school student performance[C]//Proceedings of the 5th Annual Future Business Technology Conference, Porto, Portugal, April 9-11 , INSTICC Press, 2008: 5-12. |
| [39] | Fügener A, Grahl J, Gupta A, et al. Will humans-in-the-loop become borgs? Merits and pitfalls of working with AI[J]. MIS Quarterly, 2021, 45(3): 1527-1556. |
| [40] | Abid L, Masmoudi A, Zouari-Ghorbel S. The consumer loan’s payment default predictive model: An application of the logistic regression and the discriminant analysis in a Tunisian commercial bank[J]. Journal of the Knowledge Economy, 2018, 9(3): 948-962. |
| [41] | Tolles J, Meurer W J. Logistic regression: Relating patient characteristics to outcomes[J]. JAMA, 2016, 316(5): 533-534. |
| [42] | Bansal G, Nushi B, Kamar E, et al. Updates in human-AI teams: Understanding and addressing the performance/compatibility tradeoff[J]. Proceedings of the AAAI Conference on Artificial Intelligence, 2019, 33(1): 2429-2437. |
| [43] | John D R, Scott C A, Bettman J R. Sampling data for covariation assessment: The effect of prior beliefs on search patterns[J]. Journal of Consumer Research, 1986, 13(1): 38-47. |
| [44] | Chong L, Zhang G, Goucher-Lambert K, et al. Human confidence in artificial intelligence and in themselves: The evolution and impact of confidence on adoption of AI advice[J]. Computers in Human Behavior, 2022, 127: 107018. |
| [45] | Tang M, Liao H. From conventional group decision making to large-scale group decision making: What are the challenges and how to meet them in big data era? A state-of-the-art survey[J]. Omega, 2021, 100: 102141. |
| [46] | Vuorre M, Metcalfe J. Measures of relative metacognitive accuracy are confounded with task performance in tasks that permit guessing[J]. Metacognition and Learning, 2022, 17(2): 269-291. |
| [1] | Wei Gu, Yajin Liu, Feng Susan Lu, Xiangbin Yan. AI-Driven Decision Sciences: Application, Perception and Bias [J]. Chinese Journal of Management Science, 2025, 33(5): 99-112. |
| [2] | Suoyi Tan, Mengning Wang, Ye Tian, Jianguo Liu, Xin Lu. Data-Driven Models and Applications on Poverty Identification, Classification, and Prediction [J]. Chinese Journal of Management Science, 2025, 33(5): 124-137. |
| [3] | Wei Ge, Han Xiao. Artificial Intelligence, Household Consumption and Economic Singularity: Based on the Perspective of Optimizing Redistribution Policy [J]. Chinese Journal of Management Science, 2025, 33(3): 93-106. |
| [4] | Xiangpei Hu, Yaxian Zhou. Review of Research on Economics and Management Based on Generative Artificial Intelligence [J]. Chinese Journal of Management Science, 2025, 33(1): 76-97. |
| [5] | Feng Shi, Yang Yang, Yun Yuan, Jianmin Jia. Marketing Transformation in the Age of Artificial Intelligence [J]. Chinese Journal of Management Science, 2025, 33(1): 111-123. |
| [6] | YANG Shan-lin, LI Xiao-jian, ZHANG Qiang, JIAO Jian-ling, YANG Chang-hui. Artificial Intelligence and Management Transformation [J]. Chinese Journal of Management Science, 2023, 31(6): 1-11. |
| [7] | SONG Jin-bo, ZHOU Yu-shan, HE Qiu-ying. The Impact of Emotional Load on Service Quality and Operational Efficiency of Online Political Inquiry Platform—Evidence from Textual Data [J]. Chinese Journal of Management Science, 2023, 31(3): 133-142. |
| [8] | LIU Xiang-guan, GAO Chuan-hou, LUO Shi-hua, WANG Yi-kang, WU Wu-lin. Hua Luogeng System Engineering of Management Science and Industrial Big Data Analysis [J]. Chinese Journal of Management Science, 2022, 30(11): 8-19. |
| [9] | XIE Meng-meng, XIA Yan, PAN Jiao-feng, GUO Jian-feng. Artificial Intelligence,Technological Change and Low-skill Employment. Empirical Evidence from Chinese Manufacturing Firms [J]. Chinese Journal of Management Science, 2020, 28(12): 54-66. |
| [10] | ZHANG Hong-yan. Study on the Sensitivity of Implied volatility Based on Artificial Intelligence [J]. Chinese Journal of Management Science, 2008, 16(3): 125-130. |
| Viewed | ||||||
|
Full text |
|
|||||
|
Abstract |
|
|||||
|
||