R. Miikkulainen, N. Iscoe, A. Shagrin, R. Rapp, S. Nazari, P. McGrath, C. Schoolland, E. Achkar, M. Brundage, J. Miller, J. Epstein, and G. Lamba
Conversion rate optimization (CRO) means designing an e-commerce web
interface so that as many users as possible take a desired action
such as registering for an account, requesting a contact, or making
a purchase. Such design is usually done by hand, evaluating one
change at a time through A/B testing, or evaluating all combinations
of two or three variables through multivariate testing. Traditional
CRO is thus limited to a small fraction of the design space only.
This paper describes Sentient Ascend, an automatic CRO system that
uses evolutionary search to discover effective web interfaces given
a human-designed search space. Design candidates are evaluated in
parallel on line with real users, making it possible to discover and
utilize interactions between the design elements that are difficult
to identify otherwise. A commercial product since September 2016,
Ascend has been applied to numerous web interfaces across industries
and search space sizes, with up to four-fold improvements over human
design. Ascend can therefore be seen as massively multivariate CRO
made possible by AI.
Recipient of an IAAI Deployed Application Award.