Handling DMA level data #286
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Hi team, |
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Replies: 2 comments 2 replies
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Hi, usually your dataset (panel data) requires a mixed model (or hierarchical model, or multilevel model, there're many names) to treat DMA as random effect. Robyn can't deal with that yet. Of course you can always build a separate model for each DMA if you have enough observations each. Our recommendation is column to row ratio of 1 to 10 |
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I have a similar issue. And thought about building a separate model to measure the relationship between the total ad-invest of individual shops vs total revenue. Now, in that special case the goal is to detect cannibalization effects between shops: Investing heavily in shop1 does not necessarily increase the total revenue but could also lead to just moving renue from other shops to shop1. What do you think about that idea? |
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Hi, usually your dataset (panel data) requires a mixed model (or hierarchical model, or multilevel model, there're many names) to treat DMA as random effect. Robyn can't deal with that yet. Of course you can always build a separate model for each DMA if you have enough observations each. Our recommendation is column to row ratio of 1 to 10