'Interpretative overconfidence' occurs when researchers express excessive certainty about the meaning or implications of their findings, going beyond what the data objectively support.

  • Drawing causal conclusions from correlational or observational data
  • Presenting model outputs (e.g., risk scores, AUCs, SHAP values) as clinically actionable without external validation
  • Ignoring limitations or uncertainty in measurement, sampling, or context
  • Overstating the generalizability or novelty of results
Claiming that a machine learning model can prevent disease simply because it predicts risk with high accuracy on retrospective data.
  • Misguides clinical decision-making
  • Inflates perceived scientific progress
  • Erodes public and professional trust in medical research

'In summary:' interpretative overconfidence distorts the relationship between evidence and conclusion, leading to potentially misleading or unjustified claims.

  • interpretative_overconfidence.txt
  • Last modified: 2025/06/15 11:09
  • by administrador