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Main Authors: Cheng, Zhi-Qi, Dong, Yifei, Shi, Aike, Liu, Wei, Hu, Yuzhi, O'Connor, Jason, Hauptmann, Alexander G., Whitefoot, Kate S.
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2408.05357
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author Cheng, Zhi-Qi
Dong, Yifei
Shi, Aike
Liu, Wei
Hu, Yuzhi
O'Connor, Jason
Hauptmann, Alexander G.
Whitefoot, Kate S.
author_facet Cheng, Zhi-Qi
Dong, Yifei
Shi, Aike
Liu, Wei
Hu, Yuzhi
O'Connor, Jason
Hauptmann, Alexander G.
Whitefoot, Kate S.
contents The electric vehicle (EV) battery supply chain's vulnerability to disruptions necessitates advanced predictive analytics. We present SHIELD (Schema-based Hierarchical Induction for EV supply chain Disruption), a system integrating Large Language Models (LLMs) with domain expertise for EV battery supply chain risk assessment. SHIELD combines: (1) LLM-driven schema learning to construct a comprehensive knowledge library, (2) a disruption analysis system utilizing fine-tuned language models for event extraction, multi-dimensional similarity matching for schema matching, and Graph Convolutional Networks (GCNs) with logical constraints for prediction, and (3) an interactive interface for visualizing results and incorporating expert feedback to enhance decision-making. Evaluated on 12,070 paragraphs from 365 sources (2022-2023), SHIELD outperforms baseline GCNs and LLM+prompt methods (e.g., GPT-4o) in disruption prediction. These results demonstrate SHIELD's effectiveness in combining LLM capabilities with domain expertise for enhanced supply chain risk assessment.
format Preprint
id arxiv_https___arxiv_org_abs_2408_05357
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle SHIELD: LLM-Driven Schema Induction for Predictive Analytics in EV Battery Supply Chain Disruptions
Cheng, Zhi-Qi
Dong, Yifei
Shi, Aike
Liu, Wei
Hu, Yuzhi
O'Connor, Jason
Hauptmann, Alexander G.
Whitefoot, Kate S.
Artificial Intelligence
Human-Computer Interaction
The electric vehicle (EV) battery supply chain's vulnerability to disruptions necessitates advanced predictive analytics. We present SHIELD (Schema-based Hierarchical Induction for EV supply chain Disruption), a system integrating Large Language Models (LLMs) with domain expertise for EV battery supply chain risk assessment. SHIELD combines: (1) LLM-driven schema learning to construct a comprehensive knowledge library, (2) a disruption analysis system utilizing fine-tuned language models for event extraction, multi-dimensional similarity matching for schema matching, and Graph Convolutional Networks (GCNs) with logical constraints for prediction, and (3) an interactive interface for visualizing results and incorporating expert feedback to enhance decision-making. Evaluated on 12,070 paragraphs from 365 sources (2022-2023), SHIELD outperforms baseline GCNs and LLM+prompt methods (e.g., GPT-4o) in disruption prediction. These results demonstrate SHIELD's effectiveness in combining LLM capabilities with domain expertise for enhanced supply chain risk assessment.
title SHIELD: LLM-Driven Schema Induction for Predictive Analytics in EV Battery Supply Chain Disruptions
topic Artificial Intelligence
Human-Computer Interaction
url https://arxiv.org/abs/2408.05357