Boosting Industrial Forecasts with Measurement Credibility Correction
New research proposes a method to improve industrial prediction accuracy by addressing unreliable input measurements. LLM-Guided Measurement Credibility Correction could transform how industries rely…
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arstechnica.com·1mo ago
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