适度
营销
独创性
产品(数学)
新产品开发
市场营销策略
信息处理
结构方程建模
经济
业务
计算机科学
心理学
创造力
社会心理学
几何学
数学
神经科学
机器学习
作者
Serdar S. Durmuşoğlu,Kwaku Atuahene‐Gima,Roger J. Calantone
标识
DOI:10.1108/ejim-11-2021-0575
摘要
Purpose Research on market information use in product innovation suggests that firms utilize two key strategic decision-making processes: incremental and comprehensive. Drawing from organizational information processing theory, literature implies that these processes operate differently. However, this assumption remains untested. Moreover, the degree to which a comprehensive process affects the innovation strategy outcomes depends on market information time sensitivity (MITS) and analyzability. To-date, no study has tested these assertions, either. Finally, it is suggested that meaningful market strategy is a key driver of new product success and it is important to understand how decision-making processes influence it under differing time sensitivity and analyzability. Design/methodology/approach Based on survey data from 250 Chinese firms, authors use structural equation modeling to test the hypotheses. Findings The results generally support authors’ contentions. More specifically, marketing strategy outcomes are influenced by marketing strategy incrementality (MSI) and marketing strategy comprehensiveness (MSC) differently. Further, time sensitivity moderates the effect of both MSI and MSC on outcomes, except for the effect of MSI on decision quality. Finally, analyzability moderates the relationships between decision making processes and certain strategy outcomes such as between MSI and meaningfulness. Originality/value Drawing from information processing theory, authors argue that incremental and comprehensive marketing strategy decision making for new product operate differentially under the same conditions. Further, the effects of these decision processes on outcomes depend on time sensitivity and analyzability of market information. Finally, auhtors argue that meaningful market strategy is a driver of success. The authors find support for most of our hypotheses and provide directions for future research.
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