2 research outputs found
An Empirical Analysis of Search Engine Advertising: Sponsored Search and Cross-Selling in Electronic Markets
The phenomenon of sponsored search advertising – where advertisers
pay a fee to Internet search engines to be displayed alongside organic
(non-sponsored) web search results – is gaining ground as the
largest source of revenues for search engines. Using a unique panel
dataset of several hundred keywords collected from a large nationwide
retailer that advertises on Google, we empirically model the
relationship between different metrics such as click-through rates,
conversion rates, bid prices and keyword ranks. Our paper proposes a
novel framework and data to better understand what drives these
differences. We use a Hierarchical Bayesian modeling framework and
estimate the model using Markov Chain Monte Carlo (MCMC) methods. We
empirically estimate the impact of keyword attributes on consumer search
and purchase behavior as well as on firms’ decision-making
behavior on bid prices and ranks. We find that the presence of
retailer-specific information in the keyword increases click-through
rates, and the presence of brand-specific information in the keyword
increases conversion rates. Our analysis provides some evidence that
advertisers are not bidding optimally with respect to maximizing the
profits. We also demonstrate that as suggested by anecdotal evidence,
search engines like Google factor in both the auction bid price as well
as prior click-through rates before allotting a final rank to an
advertisement. Finally, we conduct a detailed analysis with product
level variables to explore the extent of cross-selling opportunities
across different categories from a given keyword advertisement. We find
that there exists significant potential for cross-selling through search
keyword advertisements. Latency (the time it takes for consumer to place
a purchase order after clicking on the advertisement) and the presence
of a brand name in the keyword are associated with consumer spending on
product categories that are different from the one they were originally
searching for on the Internet
An Empirical Analysis of Search Engine Advertising: Sponsored Search and Cross-Selling in Electronic Markets
The phenomenon of sponsored search advertising – where advertisers
pay a fee to Internet search engines to be displayed alongside organic
(non-sponsored) web search results – is gaining ground as the
largest source of revenues for search engines. Using a unique panel
dataset of several hundred keywords collected from a large nationwide
retailer that advertises on Google, we empirically model the
relationship between different metrics such as click-through rates,
conversion rates, bid prices and keyword ranks. Our paper proposes a
novel framework and data to better understand what drives these
differences. We use a Hierarchical Bayesian modeling framework and
estimate the model using Markov Chain Monte Carlo (MCMC) methods. We
empirically estimate the impact of keyword attributes on consumer search
and purchase behavior as well as on firms’ decision-making
behavior on bid prices and ranks. We find that the presence of
retailer-specific information in the keyword increases click-through
rates, and the presence of brand-specific information in the keyword
increases conversion rates. Our analysis provides some evidence that
advertisers are not bidding optimally with respect to maximizing the
profits. We also demonstrate that as suggested by anecdotal evidence,
search engines like Google factor in both the auction bid price as well
as prior click-through rates before allotting a final rank to an
advertisement. Finally, we conduct a detailed analysis with product
level variables to explore the extent of cross-selling opportunities
across different categories from a given keyword advertisement. We find
that there exists significant potential for cross-selling through search
keyword advertisements. Latency (the time it takes for consumer to place
a purchase order after clicking on the advertisement) and the presence
of a brand name in the keyword are associated with consumer spending on
product categories that are different from the one they were originally
searching for on the Internet