AKEGIS: automatic keyword generation for sponsored search advertising in online retailing
作者:
Highlights:
• This paper presents an automated approach (AKEGIS) for generating valuable keywords for Sponsored Search Advertising (SSA).
• Empirical analyses revealed that keywords used in internal searches in online stores constitute promising candidates for SSA.
• It increased the number of keywords, improved the conversion rate by 41% and decreased the average cost per click by 70%.
摘要
Sponsored search advertisers face several complex decisions when planning and implementing a new sponsored search advertising campaign. These decisions include the selection of keywords, the definition of landing pages, and the formulation of bidding strategies. Relatively low attention has been paid on supporting the selection of keywords in recent research and most studies on sponsored search advertising focus on the formulation of bidding strategies and strategies for budget planning. We present a novel approach for automatically generating sponsored search keywords that relies on the theory of consumer search behavior. Our approach uses an online store's internal search log to extract keywords used by consumers within their search process, because recent research has shown that especially consumers with a high conversion probability that exhibit goal-directed instead of exploratory search patterns use an online store's internal search engine. We empirically test our approach based on a store's internal search engine and identify the effects of this approach by comparing it to a state-of-the-art approach. Our analysis reveals that our approach substantially increased the number of profitable keywords, improved the store's conversion rate by approximately 41%, and decreased the average cost per click by more than 70%.
论文关键词:Keyword generation,Sponsored search advertising,Empirical evaluation,Difference-in-difference,Conversion rate,Customer journey
论文评审过程:Received 14 September 2018, Revised 1 February 2019, Accepted 3 February 2019, Available online 12 March 2019, Version of Record 22 March 2019.
论文官网地址:https://doi.org/10.1016/j.dss.2019.02.001