Engineering Optimal Network Effects via Social Media Features and Seeding in Markets for Digital Goods and Services

互补性(分子生物学) 播种 微观经济学 利用 业务 信息良好 网络效应 计算机科学 产业组织 营销 经济 互联网 计算机安全 生物 工程类 万维网 遗传学 航空航天工程
作者
Yifan Dou,Marius Florin Niculescu,D. J. Wu
出处
期刊:Information Systems Research [Institute for Operations Research and the Management Sciences]
卷期号:24 (1): 164-185 被引量:129
标识
DOI:10.1287/isre.1120.0463
摘要

Firms nowadays are increasingly proactive in trying to strategically capitalize on consumer networks and social interactions. In this paper, we complement an emerging body of research on the engineering of word-of-mouth effects by exploring a different angle through which firms can strategically exploit the value-generation potential of the user network. Namely, we consider how software firms should optimize the strength of network effects at utility level by adjusting the level of embedded social media features in tandem with the right market seeding and pricing strategies in the presence of seeding disutility. We explore two opposing seeding cost models where seeding-induced disutility can be either positively or negatively correlated with customer type. We consider both complete and incomplete information scenarios for the firm. Under complete information, we uncover a complementarity relationship between seeding and building social media features that holds for both disutility models. When the cost of any of these actions increases, rather than compensating by a stronger action on the other dimension to restore the overall level of network effects, the firm will actually scale back on the other initiative as well. Under incomplete information, this complementarity holds when seeding disutility is negatively correlated with customer type but may not always hold in the other disutility model, potentially leading to fundamentally different optimal strategies. We also discuss how our insights apply to asymmetric networks.
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