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DWUG ES: Diachronic Word Usage Graphs for Spanish ...
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Abstract:
This data collection contains diachronic Word Usage Graphs (WUGs) for Spanish. Find a description of the data format, code to process the data and further datasets on the WUGsite. Please find more information on the provided data in the paper referenced below. The annotation was funded by ANID FONDECYT grant 11200290, U-Inicia VID Project UI-004/20, ANID - Millennium Science Initiative Program - Code ICN17 002 and SemRel Group (DFG Grants SCHU 2580/1 and SCHU 2580/2). Version: 1.0.1, 9.4.2022. Development data . Reference Frank D. Zamora-Reina, Felipe Bravo-Marquez, Dominik Schlechtweg. 2022. LSCDiscovery: A shared task on semantic change discovery and detection in Spanish. In Proceedings of the 3rd International Workshop on Computational Approaches to Historical Language Change. Association for Computational Linguistics. ... : only development data, corrected target word indices ...
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Keyword:
diachronic usage relatedness; graded word meaning annotation; semantic change; word usage graphs
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URL: https://zenodo.org/record/6433203 https://dx.doi.org/10.5281/zenodo.6433203
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Hybrid Hashtags: #YouKnowYoureAKiwiWhen Your Tweet Contains Māori and English
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In: Front Artif Intell (2020)
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Hybrid Hashtags: #YouKnowYoureAKiwiWhen Your Tweet Contains Māori and English
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In: WASSA 2017 (2017)
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Determining word–emotion associations from tweets by multi-label classification
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In: WI'16 (2016)
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From opinion lexicons to sentiment classification of tweets and vice versa: a transfer learning approach
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In: WI'16 (2016)
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Annotate-Sample-Average (ASA): A New Distant Supervision Approach for Twitter Sentiment Analysis
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In: 22nd European Conference on Artificial Intelligence (ECAI) (2016)
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From unlabelled tweets to Twitter-specific opinion words
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In: SIGIR '15 (2015)
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