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Add timestamps for video 12: Michael-Zhenyu Media Mix Modelling
### Reference Towards pymc-devs#11 ### Description Add timestamps for video 12: Michael-Zhenyu Media Mix Modelling
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videos-list/12-michael-zhenyu.md

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@@ -20,12 +20,21 @@ https://discourse.pymc.io/t/a-bayesian-approach-to-media-mix-modeling-by-michael
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- Model applications
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## Timestamps
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0:00 Outline of presenation
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0:00 Introduction and outline of presentation
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1:16 Marketing at HelloFresh (funnels, conversion, channels)
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2:40 Measuring the effectiveness of marketing
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5:00 Multivariate regression model
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5:00 What is Media Mix Modelling?
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6:20 Structure of a Media Mix Model
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7:51 Transformation functions (Reach function and Adstock function)
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10:53 Benefits of using bayesian methods to build a Media Mix Model
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13:07 Hellofresh's Media Mix Model structure
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19:46 Geometric Adstock Function
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20:54 Nonlinear Saturation Function
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21:16 The bayesian MMM workflow
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22:39 Applications of HelloFresh's Media Mix Model
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26:41 Constrained optimization algorithm
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29:18 Thank you!
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x:xx Help us add timestamps here: https://github.com/pymc-devs/video-timestamps
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Speaker info:
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Michael Johns is a data scientist at HelloFresh US. His work focuses on building statistical models for business applications, such as optimizing marketing strategy, customer acquisition forecasting and customer retention.

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