Predictive data science as an epistemic stance: Benefits, risks, and opportunities for knowledge pursuit in organizations
提出“认知立场”概念,分析预测性数据科学在组织中应用的好处与风险,指出过度依赖可能忽视非数字维度,建议通过设计社会技术系统结合多种认知立场来增强知识能力。
Modern organizations face growing institutional and competitive pressures to adopt artificial intelligence for predictive data science and to generate knowledge from vast digital datasets. While artificial intelligence adoption promises new insights, it also engenders hidden capability traps, risking the conflation of reality with algorithmic representations and the neglect of non-digital or analogue dimensions of organizational life. This article introduces the concept of epistemic stance—the underlying approach and orientation to generating knowledge in organizations—to critically examine the organizational implications of predictive data science. It unpacks the components and promises of a data science epistemic stance, highlights its epistemic risks, and explains its appeal to modern organizations. The article argues that organizations can strengthen their knowledge capabilities by combining multiple epistemic stances through carefully designed sociotechnical systems.