Artificial Intelligence

Counterfactual Explanation

An explanation of an AI decision that describes what would need to change in the input for the model to produce a different output. It answers 'What if?' questions about predictions.

Why It Matters

Counterfactual explanations are the most actionable form of explainability — they tell users exactly what to change to get a different outcome.

Example

A loan denial explanation: 'Your application would have been approved if your credit score were 680 instead of 640, or if your debt-to-income ratio were below 35%.'

Think of it like...

Like a teacher saying 'You would have passed if you had scored 5 more points on the essay' — it tells you exactly what needed to be different.

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