🌙

1+1>2?信息、人类与机器

1 + 1 > 2? Information, Humans, and Machines

Information Systems Research · 2024
被引 49 · 同刊同年前 3%
人大 AFT50UTD24ABS 4*

中文导读

通过亚洲小额贷款公司的实地实验,研究了信息复杂度和机器解释如何影响人机协作中的贷款审批决策,发现结合大量信息和机器解释能提升预测准确性并减少性别偏见。

Abstract

Our study, conducted through a field experiment with a major Asian microloan company, examines the interaction between information complexity and machine explanations in human–machine collaboration. We find that human evaluators’ loan approval decision-making outcomes are significantly enhanced when they are equipped with both large information volumes and machine-generated explanations, underscoring the limitations of relying solely on human intuition or machine analysis. This blend fosters deep human engagement and rethinking, effectively reducing gender biases and increasing prediction accuracy by identifying overlooked data correlations. Our findings stress the crucial role of combining human discernment with artificial intelligence to improve decision-making efficiency and fairness. We offer specific training and system design strategies to bolster human–machine collaboration, advocating for a balanced integration of technological and human insights to navigate intricate decision-making scenarios efficiently. Specifically, the study suggests that, whereas machines manage borderline cases, humans can significantly contribute by reevaluating and correcting machine errors in random cases (i.e., those without explicitly congruent feature patterns) through stimulated active rethinking triggered by strategic information prompts. This approach not only amplifies the strengths of both humans and machines, but also ensures more accurate and fair decision-making processes.

人机协作决策科学人工智能金融科技