Evaluating the Effectiveness of Large Language Models in Automated News Article Summarization
Lionel Richy Panlap Houamegni, Fatih Gedikli

TL;DR
This paper evaluates the effectiveness of large language models in automating news article summarization for supply chain risk analysis, demonstrating significant improvements in summary quality and risk detection.
Contribution
It develops an automated summarization system using LLMs for supply chain risk analysis and compares various models' effectiveness in this context.
Findings
Few-Shot GPT-4o mini outperforms other models in summary quality
LLMs effectively detect risks and improve readability
User study confirms the top models' superior performance
Abstract
The automation of news analysis and summarization presents a promising solution to the challenge of processing and analyzing vast amounts of information prevalent in today's information society. Large Language Models (LLMs) have demonstrated the capability to transform vast amounts of textual data into concise and easily comprehensible summaries, offering an effective solution to the problem of information overload and providing users with a quick overview of relevant information. A particularly significant application of this technology lies in supply chain risk analysis. Companies must monitor the news about their suppliers and respond to incidents for several critical reasons, including compliance with laws and regulations, risk management, and maintaining supply chain resilience. This paper develops an automated news summarization system for supply chain risk analysis using LLMs.…
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Taxonomy
TopicsTopic Modeling · Advanced Text Analysis Techniques · Computational and Text Analysis Methods
