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by conductrics
14 days ago
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We needed a principled approach to help find heterogenous treatment effects and to discover if A/B Tests with more than 2 arms were potentially interacting with one another. Most approaches seem to just use single t-tests with multiple comparison adjustments, but this approach just became too unwieldly at scale.
Anyone else use the F-test with nested regression? Or find some other useful approach beyond collections of individual A/B tests? |
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