Leveraging Large Language Models for Risk Assessment in Hyperconnected Logistic Hub Network Deployment
- URL: http://arxiv.org/abs/2503.21115v1
- Date: Thu, 27 Mar 2025 03:13:22 GMT
- Title: Leveraging Large Language Models for Risk Assessment in Hyperconnected Logistic Hub Network Deployment
- Authors: Yinzhu Quan, Yujia Xu, Guanlin Chen, Frederick Benaben, Benoit Montreuil,
- Abstract summary: Dynamic risk assessment becomes essential to ensure successful hub deployment.<n>Traditional methods often struggle to effectively capture and analyze unstructured information.<n>This framework incorporates scalability with long-term memory and enhances decision-making through explanation and interpretation.
- Score: 3.3454502835917035
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The growing emphasis on energy efficiency and environmental sustainability in global supply chains introduces new challenges in the deployment of hyperconnected logistic hub networks. In current volatile, uncertain, complex, and ambiguous (VUCA) environments, dynamic risk assessment becomes essential to ensure successful hub deployment. However, traditional methods often struggle to effectively capture and analyze unstructured information. In this paper, we design an Large Language Model (LLM)-driven risk assessment pipeline integrated with multiple analytical tools to evaluate logistic hub deployment. This framework enables LLMs to systematically identify potential risks by analyzing unstructured data, such as geopolitical instability, financial trends, historical storm events, traffic conditions, and emerging risks from news sources. These data are processed through a suite of analytical tools, which are automatically called by LLMs to support a structured and data-driven decision-making process for logistic hub selection. In addition, we design prompts that instruct LLMs to leverage these tools for assessing the feasibility of hub selection by evaluating various risk types and levels. Through risk-based similarity analysis, LLMs cluster logistic hubs with comparable risk profiles, enabling a structured approach to risk assessment. In conclusion, the framework incorporates scalability with long-term memory and enhances decision-making through explanation and interpretation, enabling comprehensive risk assessments for logistic hub deployment in hyperconnected supply chain networks.
Related papers
- Adapting Probabilistic Risk Assessment for AI [0.0]
General-purpose artificial intelligence (AI) systems present an urgent risk management challenge.
Current methods often rely on selective testing and undocumented assumptions about risk priorities.
This paper introduces the probabilistic risk assessment (PRA) for AI framework.
arXiv Detail & Related papers (2025-04-25T17:59:14Z) - Credit Risk Identification in Supply Chains Using Generative Adversarial Networks [11.125130091872046]
This study explores the application of Generative Adversarial Networks (GANs) to enhance credit risk identification in supply chains.<n>GANs enable the generation of synthetic credit risk scenarios, addressing challenges related to data scarcity and imbalanced datasets.<n>By leveraging GAN-generated data, the model improves predictive accuracy while effectively capturing dynamic and temporal dependencies in supply chain data.
arXiv Detail & Related papers (2025-01-17T18:42:46Z) - Risk-Averse Certification of Bayesian Neural Networks [70.44969603471903]
We propose a Risk-Averse Certification framework for Bayesian neural networks called RAC-BNN.<n>Our method leverages sampling and optimisation to compute a sound approximation of the output set of a BNN.<n>We validate RAC-BNN on a range of regression and classification benchmarks and compare its performance with a state-of-the-art method.
arXiv Detail & Related papers (2024-11-29T14:22:51Z) - Navigating the Risks: A Survey of Security, Privacy, and Ethics Threats in LLM-Based Agents [67.07177243654485]
This survey collects and analyzes the different threats faced by large language models-based agents.
We identify six key features of LLM-based agents, based on which we summarize the current research progress.
We select four representative agents as case studies to analyze the risks they may face in practical use.
arXiv Detail & Related papers (2024-11-14T15:40:04Z) - Risk Analysis in Customer Relationship Management via Quantile Region Convolutional Neural Network-Long Short-Term Memory and Cross-Attention Mechanism [3.5987853812352837]
This paper combines the advantages of quantile region convolutional neural network-long short-term memory (QRCNN-LSTM) and cross-attention mechanisms for modeling.
QRCNN-LSTM model combines sequence modeling with deep learning architectures commonly used in natural language processing tasks.
Cross-attention mechanism enhances interactions between different input data parts, allowing the model to focus on specific areas or features relevant to risk analysis.
arXiv Detail & Related papers (2024-08-22T03:55:28Z) - SHIELD: LLM-Driven Schema Induction for Predictive Analytics in EV Battery Supply Chain Disruptions [52.90276059116822]
SHIELD combines Large Language Models (LLMs) with domain expertise for EV battery supply chain risk assessment.
Evaluated on 12,070 paragraphs from 365 sources (2022-2023), SHIELD outperforms baseline GCNs and LLM+prompt methods in disruption prediction.
arXiv Detail & Related papers (2024-08-09T22:08:12Z) - EARBench: Towards Evaluating Physical Risk Awareness for Task Planning of Foundation Model-based Embodied AI Agents [53.717918131568936]
Embodied artificial intelligence (EAI) integrates advanced AI models into physical entities for real-world interaction.<n>Foundation models as the "brain" of EAI agents for high-level task planning have shown promising results.<n>However, the deployment of these agents in physical environments presents significant safety challenges.<n>This study introduces EARBench, a novel framework for automated physical risk assessment in EAI scenarios.
arXiv Detail & Related papers (2024-08-08T13:19:37Z) - Enhancing Supply Chain Visibility with Knowledge Graphs and Large Language Models [49.898152180805454]
This paper presents a novel framework leveraging Knowledge Graphs (KGs) and Large Language Models (LLMs) to enhance supply chain visibility.
Our zero-shot, LLM-driven approach automates the extraction of supply chain information from diverse public sources.
With high accuracy in NER and RE tasks, it provides an effective tool for understanding complex, multi-tiered supply networks.
arXiv Detail & Related papers (2024-08-05T17:11:29Z) - Mapping LLM Security Landscapes: A Comprehensive Stakeholder Risk Assessment Proposal [0.0]
We propose a risk assessment process using tools like the risk rating methodology which is used for traditional systems.
We conduct scenario analysis to identify potential threat agents and map the dependent system components against vulnerability factors.
We also map threats against three key stakeholder groups.
arXiv Detail & Related papers (2024-03-20T05:17:22Z) - Provable Risk-Sensitive Distributional Reinforcement Learning with
General Function Approximation [54.61816424792866]
We introduce a general framework on Risk-Sensitive Distributional Reinforcement Learning (RS-DisRL), with static Lipschitz Risk Measures (LRM) and general function approximation.
We design two innovative meta-algorithms: textttRS-DisRL-M, a model-based strategy for model-based function approximation, and textttRS-DisRL-V, a model-free approach for general value function approximation.
arXiv Detail & Related papers (2024-02-28T08:43:18Z) - It Is Time To Steer: A Scalable Framework for Analysis-driven Attack Graph Generation [50.06412862964449]
Attack Graph (AG) represents the best-suited solution to support cyber risk assessment for multi-step attacks on computer networks.
Current solutions propose to address the generation problem from the algorithmic perspective and postulate the analysis only after the generation is complete.
This paper rethinks the classic AG analysis through a novel workflow in which the analyst can query the system anytime.
arXiv Detail & Related papers (2023-12-27T10:44:58Z) - AI in Supply Chain Risk Assessment: A Systematic Literature Review and Bibliometric Analysis [0.0]
This study examines 1,903 articles from Google Scholar and Web of Science, with 54 studies selected through PRISMA guidelines.<n>Our findings reveal that ML models, including Random Forest, XGBoost, and hybrid approaches, significantly enhance risk prediction accuracy and adaptability in post-pandemic contexts.<n>The study underscores the necessity of dynamic strategies, interdisciplinary collaboration, and continuous model evaluation to address challenges such as data quality and interpretability.
arXiv Detail & Related papers (2023-12-12T17:47:51Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.