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1 ( : A9TB2096)

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7 2 2.1 He is cooooooooooooooolll cooooooooooooooolll Brody [2] cooooool cooollll cool 2.2 [3] 20 (* *) ( )( ) 4

8 1 5

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11 ( A 3.4 CRF(Conditional Random Fields)[5] CRF CRFsuite[6] : 1 : 1 : 2 : True False 8

12 3.2: brat 3.3: う に置換 3.4: 9

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15 正規化前のテキスト おはようううございまつ おはよううございまつ う の削除 ( コスト : 1) おはようございまつ う の削除 ( コスト : 1) つ を す に置換 ( コスト : 1) 人手による正規化後のテキスト おはようございます 4.1: 1 モデルによる正規化後のテキスト 1 おはよううございます う の削除 ( コスト : 1) 人手による正規化後のテキスト おはようございます 4.2: 2 モデルによる正規化後のテキスト 2 うはようううございまつ おはようううございまつ う を お に置換 ( コスト : 1) おはよううございまつ う の削除 ( コスト : 1) おはようございまつ う の削除 ( コスト : 1) つ を す に置換 ( コスト : 1) 人手による正規化後のテキスト おはようございます 4.3: 3 12

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21 [1] Taku Kudo, Kaoru Yamamoto, and Yuji Matsumoto. Applying conditional random fields to Japanese morphological analysis. Proceedings of EMNLP [2] Samuel Brody, and Nicholas Diakopoulos. Cooooooooooooooollllllllllllll!!!!!!!!!!!!!!: using word lengthening to detect sentiment in microblogs. Proceedings of the Conference on Empirical Methods in Natural Language Processing. Association for Computational Linguistics, [3],,, (2009): [4] Pontus Stenetorp, Sampo Pyysalo, Goran Topi, Tomoko Ohta, Sophia Ananiadou, and Jun ichi Tsujii. BRAT: a Web-based Tool for NLP-Assisted Text Annotation. EACL 2012 (2012): 102. [5] John Lafferty, Andrew McCallum, and Fernando CN Pereira. Conditional random fields: Probabilistic models for segmenting and labeling sequence data. (2001). [6] Naoaki Okazaki. CRFsuite: a fast implementation of conditional random fields (CRFs). URL (2007). 18

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