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This repository contains materials related to Hajime Takeda's presentation on media mix modeling at ODSC East 2023. The talk demonstrates how to measure the effectiveness of advertising using Python/LightweightMMM and R/Robyn library.

Contents

Supplementary Contents

Related Links

  • LightweightMMM : A lightweight Bayesian Marketing Mix Modeling (MMM) library (Python)

  • Robyn : The Open Source Marketing Mix Model Package from Meta Marketing Science (R)

  • sibylhe/mmm_stan : Python/STAN Implementation of Multiplicative Marketing Mix Model

Key Reference