Summarization System
Summarization systems aim to automatically condense large amounts of text into concise, informative summaries, addressing the growing need to efficiently process vast quantities of information. Current research focuses on improving the accuracy and fluency of these systems, particularly using large language models (LLMs) and techniques like prompt engineering to guide the summarization process, often incorporating salient information or external knowledge bases to enhance relevance and factual accuracy. These advancements have significant implications for various fields, including information retrieval, scientific literature analysis, and legal document processing, by enabling more efficient access and understanding of textual data.
Papers
CriSPO: Multi-Aspect Critique-Suggestion-guided Automatic Prompt Optimization for Text Generation
Han He, Qianchu Liu, Lei Xu, Chaitanya Shivade, Yi Zhang, Sundararajan Srinivasan, Katrin Kirchhoff
Salient Information Prompting to Steer Content in Prompt-based Abstractive Summarization
Lei Xu, Mohammed Asad Karim, Saket Dingliwal, Aparna Elangovan