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Linked Open Tafsir - Rekonstruktion der Entstehungsdynamik(en) des Korans mithilfe der Netzwerkmodellierung früher islamischer Überlieferungen ...
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EMBEDDIA tools output example corpus of Estonian, Croatian and Latvian news articles 1.0
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Freienthal, Linda; Pelicon, Andraž; Martinc, Matej; Škrlj, Blaž; Krustok, Ivar; Pranjić, Marko; Cabrera-Diego, Luis Adrián; Purver, Matthew; Pollak, Senja; Kuulmets, Hele-Andra; Shekhar, Ravi; Koloski, Boshko. - : Ekspress Meedia Group, 2022. : Styria Media Group, 2022
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Abstract:
This dataset contains articles from EMBEDDIA Media partners with various information added by the tools developed within the EMBEDDIA project: - 12,390 Estonian articles from 2019 with tags given by Ekspress Meedia. The complete dataset without the output of EMBEDDIA tools is available at http://hdl.handle.net/11356/1408 - 5,000 Croatian articles from autumn of 2010 with tags given by 24sata. The complete dataset without the output of EMBEDDIA tools is available at http://hdl.handle.net/11356/1410 - 15,264 Latvian articles from 2019 with tags given by Ekspress Meedia. The complete dataset without the output of EMBEDDIA tools is available at http://hdl.handle.net/11356/1409 All the articles in the dataset have been analysed with texta-mlp Python package (https://pypi.org/project/texta-mlp/) via the EMBEDDIA Media assistant's Texta Toolkit (https://docs.texta.ee/). The tools used to analyse the articles were the following: - Latin1 and Latin2 Name Entity Recognition Tool modules (Cabrera-Diego et al., 2021, both described in https://aclanthology.org/2021.bsnlp-1.12/) . The Latin 1 results can be found folders annotated_articles_ner_latin1/ and annotated_articles_all_tools/, while the Latin 2 results are in annotated_articles_nerlatin2/ or annotated_articles_all_tools/. - RAKUN keyword extractor. RAKUN (Škrlj et al. 2019) is an unsupervised system for keyword extraction, so it can be used for any language. It detects keywords by turning text into a graph and the most important nodes in the graph mostly turn out to be the keywords. It is described in https://link.springer.com/chapter/10.1007/978-3-030-31372-2_26. The keyword annotation results can be found in the folder annotated_articles_rakun/ or annotated_articles_all_tools/. - TNT-KID keyword extractor. TNT-KID (Martinc et al. 2021, ) is a supervised system for automatic keyword extraction. It was trained on a corpus of articles with human-assigned keywords. For Croatian, the annotators were 24sata editors, for Estonian the Ekspress Meedia staff and for Latvian the Latvian Delfi staff. The system is further documented at https://doi.org/10.1017/S1351324921000127. For Croatian only TNT-KID was applied, while for Estonian and Latvian, the TNT-KID with TF-IDF, and extension by Koloski et al. (https://aclanthology.org/2021.hackashop-1.4.pdf) was used. The results of applying this tool are found in the folder annotated articles tnt_kid/ or annotated articles all tools/. - Sentiment analysis. Our news sentiment analyser (Pelicon et al. 2020) labels a news article as being of positive, negative, or neutral sentiment, using a fine-tuned multilingual BERT model, which was trained on Slovene sentiment annotated news articles. The system is further documented in https://doi.org/10.3390/app10175993. The results of this tools are found in the folder annotated articles sentiment/ or annotated articles all tools/. All the data is encoded in "JSON Lines" format. Each folder has its own README file which explains the structure of the files.
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Keyword:
keyword extraction; named entity recognition; sentiment classification
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URL: http://hdl.handle.net/11356/1485
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Threat assessment, sense making, and critical decision-making in police, military, ambulance, and fire services
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In: Research outputs 2022 to 2026 (2022)
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The influence of singing with text and a neutral syllable on Portuguese children´s vocal performance, song recognition, and use of singing voice
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By the People Crowdsourcing Datasets from the Library of Congress
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In: Journal of Open Humanities Data; Vol 8 (2022); 5 ; 2059-481X (2022)
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Large-scale Bilingual Language-Image Contrastive Learning ...
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Bridging Video-text Retrieval with Multiple Choice Questions ...
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FiNER-139: A Financial Numeric Entity Recognition Dataset ...
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FiNER-139: A Financial Numeric Entity Recognition Dataset ...
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Review on multichannel emotion perception in ASD (Zhang et al., 2022) ...
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Review on multichannel emotion perception in ASD (Zhang et al., 2022) ...
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