Did you know Researchers Highlight A-B Testing Issues Disrupting Digital Advertising Effectiveness
According to researchers from Southern Methodist University and
University of Michigan, there are a lot of limitations in A-B testing of
online ads and it can have significant effects on ad performance. In
A-B testing, the company creates two ads of categories A and B. The ads
are then personalised to audiences according to their preference. The
two categories of ads are made to target specific consumers by placing
the specific ads in front of audiences with similar interests. But the
study by researchers find that A-B testing is not delivering what it
should to marketers and this creates unreliable conclusions in ad
performance.
The study
introduced the term divergent delivery in which platforms like Google
and Meta target specific users with different types of ads. The problem
arises when the ads get mixed during A-B testing and appear on the wrong
algorithm on a platform. The researcher of the study, Braun, says that
when an ad is performing well only because it is appearing more due to
the algorithm as compared to the other ad, it creates problems.
Similarly, if an ad is not doing well, it can all depend on how many
users are seeing it instead of what's actually in the ad content.
When
the companies are large, ad targeting can cause a lot of impact and
right ads to the right audience can provide them with a lot of value. Ad
placement doesn't only depend on the monetary value of an ad bid.
User-ad relevance and ad content also have equal importance.
Ad-relevance affects auction results as well so when ads are being
placed on a specific platform, the platform decides ads for specific
audiences. This means that advertisers do not know that much. It is
still not confirmed how algorithms determine user-ad relevance, but the
study warns that marketers who rely on A-B testing to make their
marketing strategies do not do that.
In conclusion, A-B testing
is not reliable for analysis of ads. The researchers say that there
isn't any technical problem in A-B tests, that's just how they operate
because they tell marketers how to maximize their performance. Marketers
should be aware of the limitations in A-B testing so they can make
their ad campaigns that can actually help reach online ads to the right
audience.
