Semantic Parsing
Semantic parsing aims to translate natural language into formal, structured representations, enabling computers to understand and act upon human instructions. Current research focuses on improving the accuracy and robustness of semantic parsers, particularly using large language models and sequence-to-sequence architectures, often augmented with techniques like in-context learning and grammar constraints to handle ambiguity and improve generalization. This field is crucial for bridging the gap between human language and machine action, with applications ranging from question answering and database querying to controlling robots and other intelligent systems. Ongoing efforts address challenges like handling complex queries, diverse data sources, and cross-lingual transfer.
Papers
Counterfactual Explanations for Natural Language Interfaces
George Tolkachev, Stephen Mell, Steve Zdancewic, Osbert Bastani
Modern Baselines for SPARQL Semantic Parsing
Debayan Banerjee, Pranav Ajit Nair, Jivat Neet Kaur, Ricardo Usbeck, Chris Biemann
Better Query Graph Selection for Knowledge Base Question Answering
Yonghui Jia, Wenliang Chen
HIE-SQL: History Information Enhanced Network for Context-Dependent Text-to-SQL Semantic Parsing
Yanzhao Zheng, Haibin Wang, Baohua Dong, Xingjun Wang, Changshan Li
S$^2$SQL: Injecting Syntax to Question-Schema Interaction Graph Encoder for Text-to-SQL Parsers
Binyuan Hui, Ruiying Geng, Lihan Wang, Bowen Qin, Bowen Li, Jian Sun, Yongbin Li