Explosive growth in big data technologies and artificial intelligence [AI] applications have led to increasing pervasiveness of information facets and a rapidly growing array of information representations. Information facets, such as equivocality and veracity, can dominate and significantly influence human perceptions of information and consequently affect human performance. Extant research in cognitive fit, which preceded the big data and AI era, focused on the effects of aligning information representation and task on performance, without sufficient consideration to information facets and attendant cognitive challenges. Therefore, there is a compelling need to understand the interplay of these dominant information facets with information representations and tasks, and their influence on human performance. We suggest that artificially intelligent technologies that can adapt information representations to overcome cognitive limitations are necessary for these complex information environments. To this end, we propose and test a novel *Adaptive Cognitive Fit* [ACF] framework that explains the influence of information facets and AI-augmented information representations on human performance. We draw on information processing theory and cognitive dissonance theory to advance the ACF framework and a set of propositions. We empirically validate the ACF propositions with an economic experiment that demonstrates the influence of information facets, and a machine learning simulation that establishes the viability of using AI to improve human performance.
翻译:大数据技术和人工智能应用的爆炸性增长导致信息方面日益普遍,信息表现迅速增加,信息方面,例如不清晰和真实性,能够支配和影响人类对信息的看法,从而影响人类的性能。在大数据和AI时代之前,在认知方面进行动态研究,重点是在不充分考虑信息方面和随之而来的认知挑战的情况下,使信息代表性和工作对业绩的影响。因此,迫切需要理解这些主要信息方面与信息表现和任务及其对人类业绩的影响之间的相互作用。我们建议,这些复杂的信息环境需要人工智能技术,能够调整信息表现以克服认知限制。为此,我们提议并测试一个创新的 " 适应认知 " 框架,用以解释信息方面的影响和AI的强化信息表现对人类业绩的影响。我们利用信息处理理论和认知不协调理论来推进ACF框架和一套建议。我们用经验验证ACF的建议,通过经济实验来显示人类表现的影响力,并用机器学习模型来确定信息表现的可靠性。