Encoded Summarization: Summarizing Documents into Continuous Vector Space for Legal Case Retrieval
Tran, Vu, Nguyen, Minh Le, Tojo, Satoshi, Satoh, Ken
–arXiv.org Artificial Intelligence
On the other hand, we explore the benefits from combining lexical features and latent features generated with neural networks. Our experiments show that lexical features and latent features generated with neural networks complement each other to improve the retrieval system performance. Furthermore, our experimental results suggest the importance of case summarization in different aspects: using provided summaries and performing encoded summarization. Our approach achieved F1 of 65.6% and 57.6% on the experimental datasets of legal case retrieval tasks.
arXiv.org Artificial Intelligence
Sep-15-2023
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