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When Does Retargeting Work? Information Specificity in Online Advertising

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TLDR
In this article, the authors use data from a field experiment conducted by an online travel firm to examine whether dynamic retargeted ads are more effective than simply showing generic brand ads.
Abstract
Firms can now offer personalized recommendations to consumers who return to their website, using consumers' previous browsing history on that website. In addition, online advertising has greatly improved in its use of external browsing data to target Internet ads. Dynamic retargeting integrates these two advances by using information from the browsing history on the firm's website to improve advertising content on external websites. When surfing the Internet, consumers who previously viewed products on the firm's website are shown ads with images of those same products. To examine whether this is more effective than simply showing generic brand ads, the authors use data from a field experiment conducted by an online travel firm. Surprisingly, the data suggest that dynamic retargeted ads are, on average, less effective than their generic equivalents. However, when consumers exhibit browsing behavior that suggests their product preferences have evolved (e.g., visiting review websites), dynamic retargeted ad...

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Citations
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Journal ArticleDOI

Memory at Play: Personalizing Online Advertisements Based on Consumers’ Autobiographical Memory

TL;DR: In this article, the authors examined whether personalizing online advertising can increase relevance to consumers, but risks backfiring if it seems overly intrusive, and found that personalization can backfire.
Proceedings ArticleDOI

The power of big data and algorithms for advertising and customer communication

TL;DR: The development of the new field around advertising and marketing technology is discussed, some industry case studies will be shared to illustrate the power of the latest big-data and machine-learning applications for driving business outcomes, and present research efforts are summarized.
Journal ArticleDOI

Consumer's Attitude towards Ramadan Advertising

TL;DR: In this paper, the authors have adopted the constructs commonly used in measuring attitude towards advertising and found that entertainment, information, credibility and good for the economy and irritation positively influence consumers' attitudes towards advertising.

Marketing des traces : du tracking, des contre-mesures et de leur efficacité.

Robert Viseur
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Factors influencing peer-communication through social advertising: a consumer socialisation framework

TL;DR: In this paper, the authors present a Table of Contents and a List of FIGURES (LF FIGURES) for a survey of the major FIGURE types and their relationships.
References
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Journal Article

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Journal ArticleDOI

Marketing in Hypermedia Computer-Mediated Environments: Conceptual Foundations

TL;DR: The authors address the role of marketing in hypermedia computer-mediated environments by considering hypermedia CMEs to be large-scale (i.e., national or global) networked enviro...
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