2025-12-10 –, Analytics, Visualization & Decision Science
Switch or stay, what do you say? And more importantly, why?
The Monty Hall Problem is a well-known brain teaser from which we can learn important lessons in decision making that are useful in general and in particular for data scientists.
If you are not familiar with this problem, prepare to be perplexed 🤯. If you are, I hope to shine light on aspects that you might not have considered 💡.
I introduce the problem and solve with three types of intuitions: Common, Bayesian and Causal. I summarise with a discussion on lessons learnt for better data decision making.
Imagine you're a contestant on a game show. Three doors stand before you: behind one is a prize car, behind the other two are goats. You choose a door, and the host—who knows what's behind each—reveals a goat behind one of the doors you didn’t pick. Now you're asked: "Do you want to switch your choice or stay?"
This is the essence of the Monty Hall Problem, a classic puzzle that famously baffles our intuitions about probability. While it may seem like just a fun brain teaser, it offers profound lessons for decision-making under uncertainty.
In this talk, we'll break down the Monty Hall Problem, explore its counterintuitive nature, and uncover what it teaches us about probabilistic reasoning and critical thinking. Together, we'll navigate multiple perspectives.
Key Topics:
* The Monty Hall Problem: Origins, setup, and why it confuses even experts
* Misconceptions and cognitive biases: Why our gut reactions often lead us astray
* Bayesian thinking: The power of belief updating in uncertain scenarios
* Information theory: How the host's actions reveal hidden information
* Causal reasoning: A fresh lens for understanding the game's dynamics
* Real-world takeaways: Applying these lessons to practical decision-making
By the end of this session, attendees will gain:
- A clear understanding of the Monty Hall Problem and its solution
- Insights into the pitfalls of intuitive probability judgments
- Strategies for approaching complex decisions and probabilistic reasoning
This session is for data scientists, analysts, and decision-makers at all experience levels. No advanced math is required—just curiosity and a willingness to rethink what you know about probability.
Join me to discover how a seemingly trivial game show puzzle can sharpen your decision-making skills and elevate your approach to statistics, data science, and beyond.
I have summarised this talk in this publication: bit.ly/mh-lessons.
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I'm an Ex-cosmologist turned data scientist with 20 years experience in solving challenging problems. I am motivated by intellectual challenges, highly detail oriented and love visualising data results to communicate insights for better decisions within organisations.
My main drive is applying scientific approaches that result in practical and clear solutions. To accomplish these, I use whatever works, be it statistical/causal inference, machine/deep learning or optimisation algorithms. Being result driven I have a passion for facilitating stakeholders to make data driven decisions by quantifying and communicating the impact of interventions to non-specialist audiences in an accessible manner.
In my free time I craft engaging articles on applied stats in data science and machine learning: https://medium.com/@eyal-kazin
My claim for fame is that between 2004-2014 I lived in four different continents within a span of a decade, including three tennis Grand Slam cities (NYC, Melbourne, London).