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Causal inference when you can't experiment: difference-in-differences and synthetic controls

Mar 9, 2020
20:48
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1
Introduction
00:00 • 2min
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2
Search Engine Marketing - Difference in Differences and Synthetic Controls
02:10 • 2min
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3
Why Isn't Eba the First Organic Results?
04:12 • 3min
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4
Is There a Causal Inference?
06:47 • 2min
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5
How to Pair Up Cities That Look Like Each Other
08:49 • 2min
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6
The Difference in Differences Between Cities
10:43 • 4min
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7
What's the Synthetic Control for California?
14:20 • 2min
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8
Frank in California - Is the California Legislation Passed?
15:57 • 2min
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9
Real California, Real California
17:51 • 2min
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10
Ads, Linear Digressions Podcast
19:47 • 56sec
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When you need to untangle cause and effect, but you can’t run an experiment, it’s time to get creative. This episode covers difference in differences and synthetic controls, two observational causal inference techniques that researchers have used to understand causality in complex real-world situations.
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