Methodological Pluralism and Innovation in Data-Driven Organizations

成果类型:
Article
署名作者:
Allen, Ryan T.; Mcdonald, Rory M.
署名单位:
University of Washington; University of Washington Seattle; University of Virginia
刊物名称:
ADMINISTRATIVE SCIENCE QUARTERLY
ISSN/ISSBN:
0001-8392
DOI:
10.1177/00018392251313737
发表日期:
2025
页码:
403-443
关键词:
PRODUCT DEVELOPMENT PROCESS MANAGEMENT Corporate culture big data KNOWLEDGE entrepreneurship exploitation exploration field AMBIDEXTERITY
摘要:
Prior research on data-driven innovation, which assumes quantitative analysis as the default, suggests a tradeoff: Organizations that rely heavily on data-driven analysis tend to produce familiar, incremental innovations with moderate commercial potential, at the expense of risky, novel breakthroughs or hit products. We argue that this tradeoff does not hold when quantitative and qualitative analysis are used together. Organizations that substantially rely on both types of analysis in the new-product innovation process will benefit by triangulating quantifiably verifiable demand (which prompts more moderate successes but fewer hits) with qualitatively discernible potential (which prompts more novelty but more flops). Although relying primarily on either type of analysis has little impact on overall new-product sales due to the countervailing strengths and weaknesses inherent in each, together they have a complementary positive effect on new-product sales as each compensates for the weaknesses of the other. Drawing on a unique dataset of 3,768 new-product innovations from NielsenIQ linked to employee resume job descriptions from 55 consumer-product firms, we find support for our hypothesis. The highest sales and number of hits were observed in organizations that demonstrated methodological pluralism: substantial reliance on both types of analyses. Further mixed-method research examining related outcomes-hits, flops, and novelty-corroborates our theory and confirms its underlying mechanisms.
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