会議情報
CoNLL 2022: The SIGNLL Conference on Computational Natural Language Learning
https://www.conll.org/2022提出日: |
2022-06-30 |
通知日: |
|
会議日: |
2022-12-07 |
場所: |
Online |
年: |
26 |
CCF: c CORE: a QUALIS: b1 閲覧: 27855 追跡: 100 出席: 12
論文募集
SIGNLL invites submissions to the 26th Conference on Computational Natural Language Learning (CoNLL 2022). The focus of CoNLL is on theoretically, cognitively and scientifically motivated approaches to computational linguistics, rather than on work driven by particular engineering applications. Such approaches include: Computational learning theory and other techniques for theoretical analysis of machine learning models for NLP Models of first, second and bilingual language acquisition by humans Models of language evolution and change Computational simulation and analysis of findings from psycholinguistic and neurolinguistic experiments Analysis and interpretation of NLP models, using methods inspired by cognitive science or linguistics or other methods Data resources, techniques and tools for scientifically-oriented research in computational linguistics Connections between computational models and formal languages or linguistic theories Linguistic typology, translation, and other multilingual work Theoretically, cognitively and scientifically motivated approaches to text generation We welcome work targeting any aspect of language, including: Speech and phonology Syntax and morphology Lexical, compositional and discourse semantics Dialogue and interactive language use Sociolinguistics Multimodal and grounded language learning
最終更新 Dou Sun 2022-05-15
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---|---|---|---|
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関連仕訳帳
CCF | 完全な名前 | インパクト ・ ファクター | 出版社 | ISSN |
---|---|---|---|---|
c | Neural Computing & Applications | 5.606 | Springer | 0941-0643 |
Journal of Computational Design and Engineering | 5.860 | Elsevier | 2288-4300 | |
Interactive Technology and Smart Education | Emerald | 1741-5659 | ||
Computational Materials Science | 3.300 | Elsevier | 0927-0256 | |
Archives of Computational Methods in Engineering | 7.302 | Springer | 1134-3060 | |
Computational Management Science | Springer | 1619-697X | ||
International Journal on Natural Language Computing | AIRCC | 2319-4111 | ||
Computational and Structural Biotechnology Journal | 7.271 | Elsevier | 2001-0370 | |
IEEE Computational Intelligence Magazine | 5.857 | IEEE | 1556-603X | |
b | Computational Linguistics | 0.721 | MIT Press | 0891-2017 |
完全な名前 | インパクト ・ ファクター | 出版社 |
---|---|---|
Neural Computing & Applications | 5.606 | Springer |
Journal of Computational Design and Engineering | 5.860 | Elsevier |
Interactive Technology and Smart Education | Emerald | |
Computational Materials Science | 3.300 | Elsevier |
Archives of Computational Methods in Engineering | 7.302 | Springer |
Computational Management Science | Springer | |
International Journal on Natural Language Computing | AIRCC | |
Computational and Structural Biotechnology Journal | 7.271 | Elsevier |
IEEE Computational Intelligence Magazine | 5.857 | IEEE |
Computational Linguistics | 0.721 | MIT Press |
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