MODELING MULTICHANNEL ADVERTISING ATTRIBUTION ACROSS COMPETITORS

成果类型:
Article
署名作者:
Li, Yiyi; Xie, Ying; Zheng, Zhiqiang (Eric)
署名单位:
University of Delaware; University of Texas System; University of Texas Dallas
刊物名称:
MIS QUARTERLY
ISSN/ISSBN:
0276-7783
DOI:
10.25300/MISQ/2019/14257
发表日期:
2019
页码:
263-+
关键词:
online search BEHAVIOR
摘要:
The bursts and multiplicity of Internet advertising have made multichannel attribution an immediate challenge for marketing practitioners. Existing attribution models predominantly focus on analyzing consumers' conversion paths with respect to one focal firm while largely overlooking the impact of their interactions with competing firms, leading to biased estimates of advertising effectiveness. We address this problem by developing an integrated individual-level choice model that considers consumers' online visit and purchase decisions across all competitors within one industry. We specifically analyze the effects of multichannel advertising on (1) consumer choice of entry site, (2) consumer search decisions concerning the remaining competing websites, and (3) subsequent purchase at one of the searched websites. We quantify the impact of different digital advertising channels on consumers ' decisions at different purchase funnel stages based on individual-level click stream data from the online air ticket booking industry. We find that information stock of all online channels considered search, display/referral, email, direct-contributes significantly to consumers 'visit and purchase decisions, among which search is the most effective advertising channel in driving all three decisions. We map the estimates to the conversion attribution of different channels. The result reveals that the relative contribution of the display/referral channel was underestimated under the popular single-firm attribution models by a factor of two on average. In terms of predictive performance, our model consistently outperforms the single-firm model in predicting the occurrences of future purchases.
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