预测驱动的决策:动荡时期的最优决策与业务绩效提升

Prediction-led prescription: Optimal Decision-Making in times of turbulence and business performance improvement

JOURNAL OF BUSINESS RESEARCH · 2024
被引 11
人大 A-ABS 3

中文导读

研究证明在动荡时期,基于人工智能的预测分析方法优于传统线性回归模型,能更准确地预测特殊事件影响并优化决策,从而提升企业绩效。

Abstract

Can you have prescription without prediction? Most scholars and practitioners would argue that a good forecast drives an optimal decision, thus promoting the concept of prediction-led prescription. In times of turbulence, Special events like promotions and supply chain disruptions are impacting businesses severely. Nevertheless, limited research has been carried out to date to accurately forecast the impact of, and consequentially prescribe in the presence of special events. Nowadays Artificial Intelligence (AI) predictive analytics methods and heuristics imitate and even improve human intelligence, progressively leading towards innovative cognitive analytics solutions. This research aims to contribute to applying advancements in AI-based predictive analytics to improve business performance. We provide empirical evidence that these AI solutions outperform the popular (especially among practitioners) linear regression models. We corroborate the stream of literature arguing that AI predictive analytics could − via a natural path-dependent process − enhance prescriptive analytics solutions, and thus improve business performance.

人工智能预测分析业务绩效决策科学计量经济学