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Autori principali: Lewis, Randall, Zettelmeyer, Florian, Gordon, Brett R., Garib, Cristobal, Hermle, Johannes, Perry, Mike, Romero, Henrique, Schnaidt, German
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2508.08209
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author Lewis, Randall
Zettelmeyer, Florian
Gordon, Brett R.
Garib, Cristobal
Hermle, Johannes
Perry, Mike
Romero, Henrique
Schnaidt, German
author_facet Lewis, Randall
Zettelmeyer, Florian
Gordon, Brett R.
Garib, Cristobal
Hermle, Johannes
Perry, Mike
Romero, Henrique
Schnaidt, German
contents Amazon's new Multi-Touch Attribution (MTA) solution allows advertisers to measure how each touchpoint across the marketing funnel contributes to a conversion. This gives advertisers a more comprehensive view of their Amazon Ads performance across objectives when multiple ads influence shopping decisions. Amazon MTA uses a combination of randomized controlled trials (RCTs) and machine learning (ML) models to allocate credit for Amazon conversions across Amazon Ads touchpoints in proportion to their value, i.e., their likely contribution to shopping decisions. ML models trained purely on observational data are easy to scale and can yield precise predictions, but the models might produce biased estimates of ad effects. RCTs yield unbiased ad effects but can be noisy. Our MTA methodology combines experiments, ML models, and Amazon's shopping signals in a thoughtful manner to inform attribution credit allocation.
format Preprint
id arxiv_https___arxiv_org_abs_2508_08209
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Amazon Ads Multi-Touch Attribution
Lewis, Randall
Zettelmeyer, Florian
Gordon, Brett R.
Garib, Cristobal
Hermle, Johannes
Perry, Mike
Romero, Henrique
Schnaidt, German
Econometrics
Amazon's new Multi-Touch Attribution (MTA) solution allows advertisers to measure how each touchpoint across the marketing funnel contributes to a conversion. This gives advertisers a more comprehensive view of their Amazon Ads performance across objectives when multiple ads influence shopping decisions. Amazon MTA uses a combination of randomized controlled trials (RCTs) and machine learning (ML) models to allocate credit for Amazon conversions across Amazon Ads touchpoints in proportion to their value, i.e., their likely contribution to shopping decisions. ML models trained purely on observational data are easy to scale and can yield precise predictions, but the models might produce biased estimates of ad effects. RCTs yield unbiased ad effects but can be noisy. Our MTA methodology combines experiments, ML models, and Amazon's shopping signals in a thoughtful manner to inform attribution credit allocation.
title Amazon Ads Multi-Touch Attribution
topic Econometrics
url https://arxiv.org/abs/2508.08209