Sentence Level
Sentence-level analysis in natural language processing focuses on understanding and processing individual sentences within larger texts, aiming to improve various downstream tasks. Current research emphasizes developing robust sentence representations using techniques like multi-task learning, transformer architectures (e.g., RoBERTa), and incorporating both sentence- and token-level objectives to capture finer-grained information. This work is crucial for advancing applications such as machine translation, lexicography, and automated essay scoring, where accurate sentence-level understanding is essential for achieving high performance and improving human-computer interaction.
Papers
SD-HuBERT: Sentence-Level Self-Distillation Induces Syllabic Organization in HuBERT
Cheol Jun Cho, Abdelrahman Mohamed, Shang-Wen Li, Alan W Black, Gopala K. Anumanchipalli
xCOMET: Transparent Machine Translation Evaluation through Fine-grained Error Detection
Nuno M. Guerreiro, Ricardo Rei, Daan van Stigt, Luisa Coheur, Pierre Colombo, André F. T. Martins