Summarization Model
Text summarization models aim to automatically generate concise and informative summaries of longer texts, focusing on accuracy, fluency, and relevance. Current research emphasizes improving model robustness and fairness across diverse data sources and domains, often employing transformer-based architectures and techniques like knowledge distillation and contrastive learning to enhance performance and efficiency. This field is crucial for managing information overload and enabling efficient access to knowledge across various applications, from news aggregation to medical record management, with ongoing efforts to address challenges like bias and factual consistency.
Papers
Systematic Exploration of Dialogue Summarization Approaches for Reproducibility, Comparative Assessment, and Methodological Innovations for Advancing Natural Language Processing in Abstractive Summarization
Yugandhar Reddy Gogireddy, Jithendra Reddy Gogireddy
DomainSum: A Hierarchical Benchmark for Fine-Grained Domain Shift in Abstractive Text Summarization
Haohan Yuan, Haopeng Zhang