The content introduces EROS, a model for summarizing privacy policy documents using controlled abstractive summarization. It addresses challenges in understanding complex privacy policies by incorporating critical entities like data and medium. The proposed model achieves state-of-the-art performance on a new dataset, PD-Sum, through entity-driven controlled summarization. By integrating reinforcement learning and modified loss functions, EROS optimizes the generation of informative and concise summaries while ensuring the inclusion of relevant entities.
The study compares EROS with baseline models like BART and PEGASUS, showcasing superior performance in terms of ROUGE-L score, BLEU-4 score, METEOR score, and BertScore. Human evaluation results indicate that EROS excels in informativeness, grammatical correctness, and entity coverage compared to baselines. The research highlights the significance of concise and user-friendly representations of privacy policies to enhance user understanding across various domains.
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by Joykirat Sin... alle arxiv.org 03-04-2024
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