Reverse Bayes:
Imagine you run a randomized controlled trial;
The results come with a p-value of 0.03 -- significant at the customary level of 0.05.
But are they credible?
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Is Half of All Advertising Spend Wasted?
In this week's issue of Causal Python Weekly:
- David Rohde on why even granular digital data often can't tell you which half of your ad budget is working
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Is CUPED just regression adjustment in disguise? You be the judge: nothing-so-practical.com/post/cuped-v...
#ABtest #experiment #CausalSky #Causalinference
"We intervene and the intervention changes the market dynamics"
Two-sided marketplaces can be a challenging setting for impact measurement.
In the new episode of the Causal Bandits Podcast, we meet Lawrence De Geest (Zoox, ex-Lyft, ex-NBA), a former...
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#CausalSky #StatSky #EpiSky #EconSky
What makes #causalinference hard? It's not the math or the code: nothing-so-practical.com/post/causal-...
#CausalSky #ABtest
We Often Think About Randomized Trials as "the Gold Standard" for Causal Inference.
And yet we almost as often forget to ask what information they provide and under what circumstances.
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What If We Reversed Bayes to Test How Robust Our Findings Are to Skepticism?
In this week's issue of Causal Python Weekly:
- Lu Qian's new blog post on Reverse Bayes and evidence
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Is the effect heterogeneity in your data real?
Testing effect homogeneity and confounding with mixed data
In their new working paper, Ana Paula Armendariz and Martin Huber propose a framework for testing the...
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#CausalSky #EconSky #EpiSky #StatSky #MLSky
You Need an Analysis. Which Statistical Test to Use?
Hey there, why not ask Claude?
With LLMs, the bottleneck is no longer the speed of access to information or the speed of content generation, but the effort needed to verify the outputs.
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#StatSky #EpiSky #BioStats #CausalSky
Dropbox Reallocates $25M After a Causal Study
In a recent paper, Varun Chivukula et al describe a series of large-scale blackout experiments across marketing channels that inspired the company to reallocate $25M of their marketing budget to more effective channels.
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www.tandfonline.com/doi/full/10....
#causalsky #causalinference #StatsSky
www.tandfonline.com/doi/full/10....
#CausalSky #causalinference #statssky
Is there a reason that risk difference isn't used more for time to event outcomes?
For example, estimate baseline hazard and hazard at 5 years, then take the difference (i.e., using a Royston-Parmar model)
#CausalSky #StatsSky
Dropbox Reallocated $25M of Their Marketing Budget After a Causal Study.
In this week's issue of Causal Python Weekly:
- Alberto D. Horner reviews a new End-to-End Estimation for Counterfactual Fairness by Yuchen Ma et al.
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#CausalSky #EconSky #EpiSky #StatSky #MLSky
I'm trying to find examples of replicable mistakes by Chat GPT. I seem to recall there was a thread on here about common causal inference mistakes made by AI. Does anyone have a tip? #causalsky
5 Causal Inference Ideas for the Age of Vibes
I'm working on a talk for an event this spring, and I want to ask you for your thoughts.
I collected these 5 ideas in response to various queries I got from people across industries and...
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📊 Join us tomorrow for our #HealthData seminar, exploring causal inference challenges with examples from research in ACE inhibitors #CausalSky
📆 Tuesday 17 March 2026 (12:45-13:50)
🏛️ LSHTM | Online
More details 🔽
www.lshtm.ac.uk/newsevents/e...
academic.oup.com/ije/article/...
#EpiSky #COVID19 #CausalSky #causalinference
Is the Effect Heterogeneity in Your Data Real?
In today's issue of Causal Python Weekly:
- A new paper by Ana Paula Armendariz and Martin Huber on testing for heterogeneity and confounding in high-dimensional mixed data (observational + experimental)
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#CausalSky #StatSky #EpiSky #EconSky
Very Handy!
The latest version of CausalPy introduces a new piecewise interrupted time series (ITS) class.
CausalPy is a popular Python library for modeling quasi-experimental data.
The new version comes with a brand new...
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What a Week!
We literally had too many topics to fit into one newsletter this week.
Here's what we picked:
- Alberto D. Horner reviews the brand new book by Quentin Gallea, PhD
- David Rohde on why policies are stochastic in reinforcement learning
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So does this one:
rss.onlinelibrary.wiley.com/doi/abs/10.1...
#causalsky #causalinference
The Optimal Split for an A/B Test Is 50:50
Unless...
I recently saw a post explaining why the optimal split between treatment and control groups should be 50:50.
The optimal split is indeed 50:50, but only under one assumption:
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You Train Your Robot in August, It Trashes Your Garden in September.
In today's issue of causal Python Weekly:
- Causal POMDPs (Partially Observed Markov Decision Processes): Planning when the world changes - a review of...
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Should you use a t-test if n >= 30?
Perhaps. But most “which test should I use?” rules are wrong.
Most of these rules exist because we were trained to think in reverse: starting with procedures instead of questions.
The sad truth is that...
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Science is a Crossword
A 2015 randomized controlled trial (RCT) demonstrated that chocolate speeds up weight loss.
P-value < 0.05
The results went viral and were discussed broadly in the press and social media.
Moreover, they likely...
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Independent Causal Mechanisms Inside Your LLM?
In this week's issue of Causal Python Weekly:
- StochTree tutorial by Drew Herren, Richard Hahn, Jared Murray, and Carlos Carvalho (R and Python included)
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📊 Join us next week for a seminar with @georgiatomova.bsky.social on her new paper exploring how different modes of survey data collection can introduce bias #datascience #CausalSky
📆 Thursday 26 February (12:50-13:50)
🏛️ LSHTM | Online
Details 🔽
www.lshtm.ac.uk/newsevents/e...
It’s amusing that “Structural Equation Model” can refer to either:
1) a nonparametric model, y~f(x_1, x_2,… x_n), à la Pearlian DAGs, or
2) a massively parametric model, where every relationship is parameterized with a linear/factor model (the psychometrics approach).
#statssky #causalsky