Explain propensity score matching with an example

Last updated: September 5, 2025

Quick Overview

Explain propensity score matching in simple terms and provide a concrete example.

Booking.com
Statistics & Math
Data Scientist
Booking.com
September 5, 2025
Data Scientist
Technical Screen
Statistics & Math
Medium

62

13

2,155 solved


Explain propensity score matching in simple terms and provide a concrete example.

Booking.com values data-driven decision making. This Technical Screen question assesses whether you can design experiments, interpret results correctly, and avoid common statistical pitfalls like p-hacking or Simpson's paradox.

What the Interviewer Expects
  • Set up the problem formally with proper notation
  • Apply the correct statistical test with clear justification
  • Interpret results with appropriate caveats and confidence levels
  • Discuss practical significance vs statistical significance
  • Identify potential confounders and how to address them
Key Topics to Cover
Conditional probability and Bayes theorem
Bayesian vs frequentist inference
Confidence intervals and significance levels
Causal inference basics
How to Approach This
  1. Define your hypotheses (H0 and H1) clearly before performing any test.
  2. Calculate required sample size BEFORE running an experiment, using power analysis.
  3. Remember the Central Limit Theorem: sample means become approximately normal with large n.
  4. Watch for Simpson's paradox. Always segment data by key dimensions.
  5. Distinguish between statistical significance and practical significance.
Possible Follow-up Questions
  • What assumptions does this test make, and how would you validate them?
  • How would you explain this result to a non-technical audience?
  • What if the sample size is very small?
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