Language models are particularly effective at:
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Producing well-structured explanations
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Matching tone and register
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Filling in plausible details
They are significantly weaker at:
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Identifying when an explanation is inappropriate for an audience
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Recognizing missing domain constraints
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Signaling uncertainty or ignorance reliably
As a result, explanations are one of the most common failure points in applied AI work.
