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『現代日本語書き言葉均衡コーパス』出版書籍サンプルのNDC別語彙分布
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In: https://ccd.ninjal.ac.jp/lrw2021.html (2021)
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ALICE++ : Adversarial Training for Robust and Effective Temporal Reasoning
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The Annotation of Antonym Information in the 'Word List by Semantic Principles'
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『現代日本語書き言葉均衡コーパス』新聞記事情報を用いたジャンル別語彙分布
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In: https://ccd.ninjal.ac.jp/lrw2021.html (2021)
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自然言語処理 : 言語資源・意味解析(レクチャーシリーズ「人工知能の今」第6回)
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In: https://www.ai-gakkai.or.jp/vol35_no1/ (2020)
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Design of BCCWJ-EEG : Balanced Corpus with Human Electroencephalography
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KOTONOHA : A Corpus Concordance System for Skewer-Searching NINJAL Corpora
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Composing Word Vectors for Japanese Compound Words Using Bilingual Word Embeddings
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Generation and Evaluation of Concept Embeddings Via Fine-Tuning Using Automatically Tagged Corpus
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編集後記
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In: https://pj.ninjal.ac.jp/corpus_center/lrw2020.html (2020)
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Automatic Creation of Correspondence Table of Meaning Tags from Two Dictionaries in One Language Using Bilingual Word Embedding
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Dynamically Updating Event Representations for Temporal Relation Classification with Multi-category Learning
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Abstract:
Kyoto University ; National Institute for Japanese Language and Linguistics ; Ochanomizu University ; Kyoto University ; Temporal relation classification is a pair-wise task for identifying the relation of a temporal link (TLINK) between two mentions, i.e. event, time and document creation time (DCT). It leads to two crucial limits: 1) Two TLINKs involving a common mention do not share information. 2) Existing models with independent classifiers for each TLINK category (E2E, E2T and E2D) hinder from using the whole data. This paper presents an event centric model that allows to manage dynamic event representations across multiple TLINKs. Our model deals with three TLINK categories with multi-task learning to leverage the full size of data. The experimental results show that our proposal outperforms state-of-the-art models and two transfer learning baselines on both the English and Japanese data.
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URL: http://id.nii.ac.jp/1328/00003267/ https://repository.ninjal.ac.jp/?action=repository_action_common_download&item_id=3283&item_no=1&attribute_id=22&file_no=1 https://repository.ninjal.ac.jp/?action=repository_uri&item_id=3283
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