Nanigans launches incrementality optimization & reporting solution

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The new solution focuses on driving incremental revenue growth from Facebook, Instagram, Twitter and programmatic retargeting campaigns.

Please visit Marketing Land for the full article.

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Nanigans, the cross-channel SaaS (software as a service) platform for large-scale performance advertisers, has launched incrementality optimization and reporting in the platform, which supports Faceboook, Instagram, Twitter and programmatic retargeting campaigns.

The machine learning-driven solution aims to target consumers deemed likely to be influenced by advertising and limit spending on users who are already likely to convert.

Ric Calvillo, Nanigans co-founder and chief executive officer, said in a phone interview that the new service uses machine learning to predict revenue lift from an impression (a user) and make a bid based on that prediction in real time.

In comparing Nanigans Incrementality to a multitouch attribution (MTA) model, Calvillo said, “Giving partial credit to channels is broken. It’s just de-duping conversions but still using touch-based attribution. That confuses correlation with causality.” That’s because MTA gives credit to the impression or click even when those people would have purchased organically anyway without the extra ad exposure. Nanigans measures revenue lift relative to a holdout sample of people.

[Read the full article on MarTech Today.]


About The Author

As Third Door Media’s paid media reporter, Ginny Marvin writes about paid online marketing topics including paid search, paid social, display and retargeting for Search Engine Land and Marketing Land. With more than 15 years of marketing experience, Ginny has held both in-house and agency management positions. She provides search marketing and demand generation advice for ecommerce companies and can be found on Twitter as @ginnymarvin.


 

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