User acceptance of knowledge-based system recommendations: Explanations, arguments, and fit

作者:

Highlights:

• System explanations that cognitively fit with users have higher perceived quality.

• Users engage with explanations that cognitively fit, increasing evaluation time.

• Explanation influence is a function of both cognitive fit and perceived quality.

摘要

Knowledge-based systems (KBS) can potentially enhance individual decision-making. Yet, recommendations from KBS continue to be met with resistance. This is particularly troubling in the context of deception detection (e.g., border control), in which humans are accurate only about half the time. In this study, we examine how the fit between KBS explanations and users' internal explanations influences acceptance of KBS recommendations. We leverage cognitive fit theory (CFT) to explain why fit is important for user acceptance of KBS evaluations. We also compare the predictions of CFT to those of the person–environment fit (PEF) paradigm. The two theories make conflicting predictions about the outcomes of fit when it comes to KBS explanations. CFT predicts that explanations with a higher cognitive fit will have more influence and be evaluated faster whereas PEF predicts that individuals will take more time in evaluating explanations with greater fit. In our deception detection scenario, we find support for CFT in the sense that people are influenced more by cognitively fitting explanations, however PEF is supported in the sense that people take more time to evaluate the explanation.

论文关键词:User acceptance,Explanations,Cognitive fit,Recommendations

论文评审过程:Received 19 August 2014, Revised 2 February 2015, Accepted 5 February 2015, Available online 11 February 2015.

论文官网地址:https://doi.org/10.1016/j.dss.2015.02.005