Conversion-Based Dynamic-Creative-Optimization in Native Advertising
Yohay Kaplan, Yair Koren, Alex Shtoff, Tomer Shadi, Oren Somekh

TL;DR
This paper introduces a conversion-based dynamic creative optimization method for native advertising that leverages predicted conversion rates to enhance ad performance, achieving significant lift in real-world online tests.
Contribution
It presents a novel post-auction approach that uses auxiliary CVR predictions to optimize ad combinations in DCO, improving conversion rates in native advertising.
Findings
53.5% CVR lift in online A/B testing
Effective combination distribution based on predicted CVR
Enhanced revenue and user satisfaction
Abstract
Yahoo Gemini native advertising marketplace serves billions of impressions daily, to hundreds millions of unique users, and reaches a yearly revenue of many hundreds of millions USDs. Powering Gemini native models for predicting advertise (ad) event probabilities, such as conversions and clicks, is OFFSET - a feature enhanced collaborative-filtering (CF) based event prediction algorithm. The predicted probabilities are then used in Gemini native auctions to determine which ads to present for every serving event (impression). Dynamic creative optimization (DCO) is a recent Gemini native product that was launched two years ago and is increasingly gaining more attention from advertisers. The DCO product enables advertisers to issue several assets per each native ad attribute, creating multiple combinations for each DCO ad. Since different combinations may appeal to different crowds, it may…
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Taxonomy
TopicsConsumer Market Behavior and Pricing · Auction Theory and Applications · Sports Analytics and Performance
