Key points are not available for this paper at this time.
Explainable artificial intelligence (XAI) is a burgeoning concept. It is gaining prominence as an approach to better understanding how AI solutions' outputs can improve decision-making. Evaluation frameworks to enable organizations to understand XAI's what, why, how, and when are yet to be developed. Thus, we aim to fill this void by developing a conceptual content , context , process, and outcome (CCPO) evaluation framework to justify XAI's adoption and effective management using construction organizations as a backdrop for the paper's setting. After introducing and describing the proposed novel CCPO framework for operationalizing XAI, we discuss its implications for future research. The contributions of our paper are twofold: (1) it highlights the need for organizations to embrace and enact XAI so that decision-makers and stakeholders can better understand why and how a specific prediction materializes; and (2) it provides a frame of reference for organizations to realize the business value and benefits of XAI.
Love et al. (Wed,) studied this question.