Refine
Year of publication
Document Type
- Conference Proceeding (6)
- Part of a Book (4)
- Book (2)
- Article (1)
- Other (1)
Has Fulltext
- yes (14)
Keywords
- Sprachverarbeitung (14) (remove)
Publicationstate
- Veröffentlichungsversion (14) (remove)
Reviewstate
- (Verlags)-Lektorat (8)
- Peer-Review (4)
- Peer-review (1)
Publisher
- Universitätsverlag Hildesheim (2)
- BBAW (1)
- CEUR-WS (1)
- Coling 2010 Organizing Committee (1)
- Deutsche Gesellschaft für Sprachwissenschaft (1)
- German Society for Computational Linguistics & Language Technology und Friedrich-Alexander-Universität Erlangen-Nürnberg (1)
- Gesellschaft für Sprachtechnologie and Computerlinguistik (1)
- Institut für Deutsche Sprache (1)
- Language Science Press (1)
- Ruhr-Universität Bochum, Sprachwissenschaftliches Institut (1)
The present paper reports the first results of the compilation and annotation of a blog corpus for German. The main aim of the project is the representation of the blog discourse structure and relations between its elements (blog posts, comments) and participants (bloggers, commentators). The data included in the corpus were manually collected from the scientific blog portal SciLogs. The feature catalogue for the corpus annotation includes three types of information which is directly or indirectly provided in the blog or can be construed by means of statistical analysis or computational tools. At this point, only directly available information (e.g. title of the blog post, name of the blogger etc.) has been annotated. We believe, our blog corpus can be of interest for the general study of blog structure or related research questions as well as for the development of NLP methods and techniques (e.g. for authorship detection).
Lexical chaining has become an important part of many NLP tasks. However, the goodness of a chaining process and hence its annotation output depends on the quality of the chaining resource. Therefore, a framework for chaining is needed which integrates divergent resources in order to balance their deficits and to compare their strengths and weaknesses. In this paper we present an application that incorporates the framework of a meta model of lexical chaining exemplified on three resources and its generalized exchange format.
This paper describes the application of probabilistic part of speech taggers to the Dzongkha language. A tag set containing 66 tags is designed, which is based on the Penn Treebank. A training corpus of 40,247 tokens is utilized to train the model. Using the lexicon extracted from the training corpus and lexicon from the available word list, we used two statistical taggers for comparison reasons. The best result achieved was 93.1% accuracy in a 10-fold cross validation on the training set. The winning tagger was thereafter applied to annotate a 570,247 token corpus.
Datenmanagement wird durch die Forschungsföderungsorganisationen (etwa in Horizon 2020 der EU, die Allianz der deutschen Wissenschaftsorganisationen oder in DFG geförderten Projekten) mehr und mehr Teil der Forschungslandschaft. Für die Computerlinguistik ist das Forschungsdatenmanagement aber auch Teil des Forschungsgebietes: Datenmodellierung und Transformation für die nachhaltige Datenspeicherung gehören in den Bereich der Texttechnologie und Textlinguistik, ebenso die Modellierung der beschreibenden Daten zu Datensätzen.
Ein integriertes Datenbank-, Such- und Tagging-Tool (IDaSTo) wird vorgestellt, das sich besonders für Variablenanalysen, für Paralleltexte und für diachronische Untersuchungen eignet. Relevante Kategorien bzw. Variablen können individuell definiert, Tags frei im Text und auf verschiedenen Wegen gesetzt und ihre Häufigkeiten in den verlinkten Statistiken direkt abgerufen werden.
In this paper we present an approach to faceted search in large language resource repositories. This kind of search which enables users to browse through the repository by choosing their personal sequence of facets heavily relies on the availability of descriptive metadata for the objects in the repository. This approach therefore informs the collection of a minimal set of metatdata for language resources. The work described in this paper has been funded by the EC within the ESFRI infrastructure project CLARIN.
Der vorliegende Band befasst sich mit dem Stand und der Entwicklung von Forschungsinfrastrukturen für die germanistische Linguistik und einigen angrenzenden Bereichen. Einen zentralen Aspekt dabei bildet die Notwendigkeit, Kooperativität in der Wissenschaft im institutionellen Sinne, aber auch in Hinsicht auf die wissenschaftliche Praxis zu organisieren. Dies geschieht in Verbunden als Kooperationsstrukturen, wobei Sprachwissenschaft und Sprachtechnologie miteinander verbunden werden. Als zentraler Forschungsressource kommen dabei Korpora und ihrer Erschließung durch spezielle, linguistisch motivierte Informationssysteme besondere Bedeutung zu. Auf der Ebene der Daten werden durch Annotations- und Modellierungsstandards die Voraussetzung für eine nachhaltige Nutzbarkeit derartiger Ressourcen geschaffen.
This paper reports about current practice in a staged approach to the introduction of NLP principles and techniques for students of information science (IIM) and of international communication and translation (ICT) as part of their curricula. As most of these students are rather not familiar with computer science or, in the case of IIM students, linguistics, we see them as comparable with students of the humanities. We follow a blended learning strategy with lectures, online materials, tutorials, and screencasts. In the first two terms, we focus on linguistics and its formalisation, NLP tools and applications are then introduced from the third term on. The lectures are combined with tutorials and - since the summer term 2017 - with a set of screencasts.
The 2014 issue of KONVENS is even more a forum for exchange: its main topic is the interaction between Computational Linguistics and Information Science, and the synergies such interaction, cooperation and integrated views can produce. This topic at the crossroads of different research traditions which deal with natural language as a container of knowledge, and with methods to extract and manage knowledge that is linguistically represented is close to the heart of many researchers at the Institut für Informationswissenschaft und Sprachtechnologie of Universität Hildesheim: it has long been one of the institute’s research topics, and it has received even more attention over the last few years. The main conference papers deal with this topic from different points of view, involving flat as well as deep representations, automatic methods targeting annotation and hybrid symbolic and statistical processing, as well as new Machine Learning-based approaches, but also the creation of language resources for both machines and humans, and methods for testing the latter to optimize their human-machine interaction properties. In line with the general topic, KONVENS-2014 focuses on areas of research which involve this cooperation of information science and computational linguistics: for example learning-based approaches, (cross-lingual) Information Retrieval, Sentiment Analysis, paraphrasing or dictionary and corpus creation, management and usability.