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 toolService 
toolService
Description:
The model for lemmatisation of non-standard Serbian was built with the CLASSLA-StanfordNLP tool (https://github.com/clarinsi/classla-stanfordnlp) by training on the SETimes.SR training corpus (http://hdl.handle.net/11356/1200), ...
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 toolService 
toolService
Description:
The model for lemmatisation of non-standard Croatian was built with the CLASSLA-StanfordNLP tool (https://github.com/clarinsi/classla-stanfordnlp) by training on the hr500k training corpus (http://hdl.handle.net/11356/1210), ...
 This item contains 1 file (789.52 MB).
 
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 toolService 
toolService
Description:
This model for morphosyntactic annotation of non-standard Croatian was built with the CLASSLA-StanfordNLP tool (https://github.com/clarinsi/classla-stanfordnlp) by training on the hr500k training corpus (http://hdl.handl ...
 This item contains 2 files (1.12 GB).
 
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 corpus 
corpus
Description:
The ParlaMeter-sl corpus contains minutes of the National Assembly of the Republic of Slovenia and currently covers its VIIth mandate (2014-08-01 to 2018-06-22). The corpus contains speaker metadata (gender, age, education, ...
 This item contains 2 files (423.98 MB).
 
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 corpus 
corpus
Author(s):
Description:
The corpus contains 256,567 documents from the Slovenian news portals 24ur, Dnevnik, Finance, Rtvslo, and Žurnal24. These portals contain political, business, economic and financial content. The submission contains 7 files: ...
 This item contains 8 files (616.88 MB).
 
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 lexicalConceptualResource 
lexicalConceptualResource
Description:
A lexicon of 751 emoji characters with automatically assigned sentiment. The sentiment is computed from 70,000 tweets, labeled by 83 human annotators in 13 European languages. The process and analysis of emoji sentiment ...
 This item contains 3 files (93.95 KB).
 
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