Journal of East China Normal University(Natural Science) ›› 2020, Vol. 2020 ›› Issue (5): 95-112.doi: 10.3969/j.issn.1000-5641.202091011
• Semantic Extraction from Data • Previous Articles Next Articles
HAN Chengcheng, LI Lei, LIU Tingting, GAO Ming
Received:
2020-08-09
Published:
2020-09-24
CLC Number:
HAN Chengcheng, LI Lei, LIU Tingting, GAO Ming. Approaches for semantic textual similarity[J]. Journal of East China Normal University(Natural Science), 2020, 2020(5): 95-112.
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