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Official tutorials and tips covering GA4, Tag Manager, Looker Studio, and related tools.

Google Meridian | Adstock and Hill
Video•Apr 1, 2026

Google Meridian | Adstock and Hill

The video introduces Meridian’s two core transformations—Adstock and Hill—designed to reflect real‑world marketing dynamics. Adstock captures lagged effects by aggregating media exposure over a user‑defined maximum lag (L), applying weighted decay curves to model how influence fades over time. The Hill function models saturation, showing that incremental spend yields diminishing returns and is governed by a half‑saturation point (ec) and a slope parameter. Key insights include the choice between geometric and binomial decay curves: geometric decay, driven by the alpha retention rate, suits fast‑acting media, while binomial decay stretches to accommodate effects persisting later in the window. Meridian learns ec from data, fixing the slope at one to maintain a concave curve that guarantees a global optimum for budget allocation. The order of operations—Adstock followed by Hill—assumes saturation derives from accumulated media history, though this can be reversed. Illustrative examples underscore the concepts: a headphone ad may prompt a purchase weeks later, demonstrating lag, and doubling spend rarely doubles sales, highlighting saturation. The half‑saturation point pinpoints where a channel loses efficiency, and the model’s built‑in estimation removes the need for manual calculations, letting users simply input raw execution data and decay preferences. For marketers, these transformations enable more accurate attribution, preventing over‑investment in diminishing‑return channels and improving budget optimization. By automating decay and saturation modeling, Meridian reduces noise, streamlines analysis, and supports data‑driven decision‑making.

By Google Analytics
Google Meridian | Intro to Priors
Video•Apr 1, 2026

Google Meridian | Intro to Priors

Google Meridian’s new video explains how its Bayesian framework leverages priors to improve marketing mix modeling (MMM). By allowing analysts to embed external knowledge directly into the model, Meridian aims to make causal estimates more reliable for decision‑makers. The presenter highlights...

By Google Analytics
Google Meridian | Controls, Mediators and Treatments
Video•Apr 1, 2026

Google Meridian | Controls, Mediators and Treatments

Google’s Meridian platform relies on Directed Acyclic Graphs to separate causal marketing effects from noise. The model maps treatments, KPI, confounding controls, predictor controls and mediators across time periods, allowing lagged impacts and ensuring that only true causal pathways are...

By Google Analytics
Google Meridian | Knots in Meridian
Video•Apr 1, 2026

Google Meridian | Knots in Meridian

The video introduces Google Meridian’s knot‑based method for handling time effects in marketing mix modeling, explaining how the tool mathematically smooths seasonal fluctuations without inflating parameter counts. Instead of estimating a separate coefficient for every week, Meridian selects a limited set...

By Google Analytics
Google Meridian | Treatment Prior Types
Video•Apr 1, 2026

Google Meridian | Treatment Prior Types

The video explains how Google’s Meridian platform classifies marketing treatments and selects appropriate statistical priors for each. Treatments fall into two buckets—paid media, which has direct spend data, and organic or non‑media actions that lack spend. Meridian offers three dedicated prior...

By Google Analytics
Google Meridian | Intro to Meridian
Video•Apr 1, 2026

Google Meridian | Intro to Meridian

The video unveils Google Meridian, an open‑source marketing mix modeling (MMM) platform designed to give marketers a unified, privacy‑durable view of how every media channel contributes to sales. As digital ecosystems grow more fragmented, traditional click‑based metrics no longer...

By Google Analytics
Google Meridian | Calibrate Treatment Priors
Video•Apr 1, 2026

Google Meridian | Calibrate Treatment Priors

The video explains how to integrate lift‑test or geo‑experiment results into Google Meridian’s marketing mix model by calibrating the model’s treatment priors. Jeff walks through the process of mapping an experiment’s ROI point estimate and its standard error onto the...

By Google Analytics
Google Meridian | Demo of Meridian
Video•Apr 1, 2026

Google Meridian | Demo of Meridian

Google’s Developer Relations team introduced Meridian, an open‑source marketing mix modeling (MMM) library that leverages Bayesian inference to quantify the incremental impact of media spend. The demo walks users through a three‑stage workflow—pre‑modeling data preparation, Bayesian model execution, and post‑modeling...

By Google Analytics
Google Meridian | Incremental Outcome, ROI, mROI, and Response Curves
Video•Apr 1, 2026

Google Meridian | Incremental Outcome, ROI, mROI, and Response Curves

The video introduces Google Meridian’s core metrics—incremental outcome, ROI, response curves, and marginal ROI (MROI)—as a framework for evaluating ad‑spend effectiveness. Using a shoe‑store example, Jeff shows $10 k spent on video generated $150 k in sales, while the model predicts $125 k would...

By Google Analytics
Google Meridian | Geo Vs National Level Modeling
Video•Apr 1, 2026

Google Meridian | Geo Vs National Level Modeling

The video outlines Meridian’s recommendation to construct marketing mix models at the geo‑level instead of aggregating to a single national view, emphasizing that finer granularity unlocks more precise ROI insights. It introduces hierarchical Bayesian models that employ partial pooling—a compromise between...

By Google Analytics