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Why Correct for Measurement Error?

  • In conjoint experiments, measurement error is pervasive but often overlooked.
  • Respondents may:
    • Misread attributes
    • Misunderstand levels
    • Click randomly
    • Forget information across tasks
  • As a result, respondents’ recorded choices often refelect random noise.
  • This random error leads to attenuate true prefernces (or true effects).

The Consequences of Ignoring Measurement Error

Without Correction With Correction
Underestimates true preferences Provides more accurate preferences
Falsely suggests indifference Recovers meaningful trade-offs
Misleads theory building and application Provides accurate, unbiased insights

How projoint Corrects for Measurement Error

  • Estimates the intra-respondent reliability (IRR) based on responses to a repeated task
  • Adjusts marginal means (MMs) and average marginal component effects (AMCEs) accordingly
  • Provides corrected estimates that better reflect respondents’ true preferences
  • Corrected estimates reveal the true magnitude of effects, improving both theoretical and applied inferences in political science, marketing, and other fields.

✅ No additional respondent burden (just one repeated task)
✅ Minimal survey design changes
✅ Massive improvements in accuracy


Key Takeaway

🧠 Measurement error systematically biases results.

🔥 Correcting for measurement error reveals true preferences, sharper trade-offs, and prevents misleading inferences.


📚 Key Reference

  • Clayton, Horiuchi, Kaufman, King, Komisarchik (Forthcoming).
    “Correcting Measurement Error Bias in Conjoint Survey Experiments.”
    Forthcoming, American Journal of Political Science.
    Pre-Print Available