自动汇总
可读性
适应性
计算机科学
领域(数学分析)
答疑
领域知识
适应(眼睛)
阅读(过程)
数据科学
知识管理
自然语言处理
心理学
语言学
生态学
生物
数学分析
哲学
数学
神经科学
程序设计语言
作者
Jay Thakkar,Suresh Kolekar,Shilpa Gite,Biswajeet Pradhan,Abdullah Alamri
标识
DOI:10.2478/ijssis-2024-0021
摘要
Abstract Large language models (LLMs) have transformed open-domain abstractive summarization, delivering coherent and precise summaries. However, their adaptability to user knowledge levels is largely unexplored. This study investigates LLMs’ efficacy in tailoring summaries to user familiarity. We assess various LLM architectures across different familiarity settings using metrics like linguistic complexity and reading grade levels. Findings expose current capabilities and constraints in knowledge-aware summarization, paving the way for personalized systems. We analyze LLM performance across three familiarity levels: none, basic awareness, and complete familiarity. Utilizing established readability metrics, we gauge summary complexity. Results indicate LLMs can adjust summaries to some extent based on user familiarity. Yet, challenges persist in accurately assessing user knowledge and crafting informative, comprehensible summaries. We highlight areas for enhancement, including improved user knowledge modeling and domain-specific integration. This research informs the advancement of adaptive summarization systems, offering insights for future development.
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