AdTheorent Uses Machine Learning-Powered Predictive Advertising to Drive Privacy-Forward Digital Engagement for Cornerstone Community Financial Credit Union
AdTheorent, Inc., a programmatic digital advertising leader using advanced machine learning technology and solutions to deliver real-world value for advertisers and marketers, and Reflective Media Services, a full-service media partner, announced mid-campaign results from the Cornerstone Community Financial Credit Union 2021 digital advertising campaign. Cornerstone Community Financial’s mission is to revolutionize the banking service experience, fulfilling the changing needs of its members and communities. The credit union offers progressive financial products and services as well as the latest in banking technology to provide exceptional personalized service. Cornerstone Community Financial partnered with Reflective Media Services and AdTheorent to drive engagement with the Cornerstone Community Financial brand and empower consumers to learn more about their financial options.
In 2021, consumers are expected to spend 7 hours and 57 minutes with digital devices per day and 83% of US households are expected to have connected tv (CTV) devices. Additionally, CTV viewership is on the rise: in 2020, US adults spent an additional 18 minutes per day watching video on CTV devices (a 39% year-over-year increase) and in 2021 average CTV video time will grow by another 10.2%. To align strategies with consumer behavior, AdTheorent ran the Cornerstone Community Financial digital campaign across a mix of cross-device display and video, mobile Rich Media and CTV.
AdTheorent’s privacy-forward machine learning-powered Predictive Advertising approach is well-suited for financial brands governed by federal fair lending laws and regulations. In addition to prioritizing statistical signals over individualized data, AdTheorent credit-extension predictive models and targeting practices do not leverage or consider prohibited basis variables or any available proxies for those variables.
AdTheorent’s platform leveraged custom financial machine learning models fueled by non-individualized statistics and predictive targeting optimizations to identify and target consumers with the highest likelihood of completing the required actions: defined for CTV as video completes, for Rich Media as engagement rates, and for display as engagement with the campaign website. AdTheorent’s programmatic performance optimizers utilized myriad signals in the custom predictive financial models such as ad position, publisher, geo-intelligence, non-individualized user device attributes, location DMA, time of day, connection signal and many others to exceed benchmarks and drive results for each targeting tactic.
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“AdTheorent Predictive Advertising is beneficial to financial institutions advertising credit-extension products and services because our technology and models drive performance in a privacy-forward and non-discriminatory manner,” said Jim Lawson, CEO of AdTheorent. “Cornerstone Community Financial and Reflective Media Services are valuable partners and we are excited to share some of the great results from our recent campaign.”
“Serving our members and arming them with the resources to reach their financial goals is woven into the DNA of Cornerstone Community Financial. Because our members are digital-first and spend increasingly more time on connected TV devices, an omni-channel approach is key to ensuring that our brand is top of mind,” said Jennifer Bleau, VP of Marketing, Cornerstone Community Financial. “We are thrilled to identify and reach consumers on digital devices and CTV, powered by AdTheorent’s unique privacy-forward machine learning-powered predictive advertising. The campaign is successfully raising brand awareness for Cornerstone Community Financial and the results are exceeding all benchmarks.”
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