Automatic annotation for accurate text-to-SPARQL translation using hybrid encoder–decoder models.
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| Title: | Automatic annotation for accurate text-to-SPARQL translation using hybrid encoder–decoder models. |
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| Authors: | Chen, Yi-Hui1,2,3 (AUTHOR), Lu, Eric Jui-Lin4 (AUTHOR) jllu@nchu.edu.tw, Hsu, Cheng-Hsien4 (AUTHOR) |
| Source: | Journal of Supercomputing. Jan2026, Vol. 82 Issue 1, p1-41. 41p. |
| Abstract: | Knowledge graph question answering (KGQA) systems translate natural language questions into structured query languages (e.g., SQL/SPARQL). With advances in sequence-to-sequence models and large pre-trained language models (LPLMs), neural machine translation (NMT) has become a prevailing approach for Text-to-SPARQL. This study leverages the large-scale pre-trained language model |
| Database: | Academic Search Index |
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