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Empirical Linguistics and Computational Language Modeling (LiMo) (Department of Computational Linguistics of Heidelberg University and Leibniz Institute for the German Language)

Data publications of the Leibniz ScienceCampus “Empirical Linguistics and Computational Language Modeling”

The Leibniz ScienceCampus “Empirical Linguistics and Computational Language Modeling” (LiMo) is a cooperative research project between the Leibniz Institute for the German Language (Leibniz-Institut für Deutsche Sprache, IDS) in Mannheim and the Department of Computational Linguistics at Heidelberg University (ICL). The general aims of the project are to develop new methods, models, and tools for compiling and analysing automatically large German textual corpora covering different domains, genres and language varieties.

The project is supported by funds from the Baden-Württemberg Ministry of Science, Research and the Arts and the Leibniz Association together with funds provided by the Leibniz Institute for the German Language and Heidelberg University.

Funding Period: 2015 – 2020

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Tab-Delimited - 119.5 KB - MD5: 2e631a49b1fdd3ffe8a091bcb16482fa
Data
Markdown Text - 1.3 KB - MD5: fba1140865e1ceb050c05897826e3410
Documentation
ZIP Archive - 1.6 MB - MD5: f928beb9f56c4a3e011941904872a4eb
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Markdown Text - 7.8 KB - MD5: 705940dda9344f994549436966482467
Documentation
Mar 26, 2020 - MACE-AL
ZIP Archive - 326.8 KB - MD5: 056a7e70a8f8b6e8fa72e3eead763d39
Code
Mar 26, 2020 - MACE-AL-TREE
ZIP Archive - 141.9 KB - MD5: 7de327971177c2124d8f388a19b1c4c6
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ZIP Archive - 10.1 MB - MD5: 30167cb475d743ced8aa63e6349a99ce
CodeDocumentation
Plain Text - 1.2 KB - MD5: fc57366f049837b691c85a50b3e47b46
Documentation
Unknown - 2.9 MB - MD5: 8bf35bfb77317b4d789fb0387454f118
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Plain Text - 333 B - MD5: fef85f2d0d0a34d965014646659e5222
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