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予見学習によるサプライチェーン混乱の予測
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ポイント
- サプライチェーンの混乱を事前に予測するLLMフレームワークを導入し、混乱の実績を教師データとして活用。
- 汎用モデルが苦手とする、頻度の低い高インパクト事象の推論を、タスク特化型適応で実現し、信頼性を向上。
- GPT-5を含む強力なベースラインを大幅に上回り、精度、キャリブレーション、プレシジョンで優れた性能を発揮。
Abstract
Anticipating supply chain disruptions before they materialize is a core challenge for firms and policymakers alike. A key difficulty is learning to reason reliably about infrequent, high-impact events from noisy and unstructured inputs - a setting where general-purpose models struggle without task-specific adaptation. We introduce an end-to-end framework that trains LLMs to produce calibrated probabilistic forecasts using realized disruption outcomes as supervision. The resulting model substantially outperforms strong baselines - including GPT-5 - on accuracy, calibration, and precision. We also show that training induces more structured and reliable probabilistic reasoning without explicit prompting. These results suggest a general pathway for training domain-specific forecasting models that produce decision-ready signals. To support transparency we open-source the evaluation dataset used in this study. Dataset: https://huggingface.co/datasets/LightningRodLabs/supply-chain-predictions
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