Korpuslinguistik
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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).
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).
Editorial
(2016)
Journal for language technology and computational linguistics. Corpus linguistic software tools
(2016)
With the growing availability and importance of (large) corpora in all fields of linguistics, the role of software tools is gradually moving from useful, possibly intelligent informationtechnological “helpers” towards scientific instruments that are as integral parts of the research process as data, methodology and interpretations. Both aspects are present in this special issue of JLCL on corpus linguistic software tools.
This paper is about the workflow for construction and dissemination of FOLK (Forschungs - und Lehrkorpus Gesprochenes Deutsch – Research and Teaching Corpus of Spoken German), a large corpus of authentic spoken interaction data, recorded on audio and video. Section 2 describes in detail the tools used in the individual steps of transcription, anonymization, orthographic normalization, lemmatization and POS tagging of the data, as well as some utilities used for corpus management. Section 3 deals with the DGD (Datenbank für Gesprochenes Deutsch - Database of Spoken German) as a tool for distributing completed data sets and making them available for qualitative and quantitative analysis. In section 4, some plans for further development are sketched.
Many applications in Natural Language Processing require a semantic analysis of sentences in terms of truth-conditional representations, often with specific desiderata in terms of which information needs to be included in the semantic analysis. However, there are only very few tools that allow such an analysis. We investigate the representations of an automatic analysis pipeline of the C&C parser and Boxer to determine whether Boxer’s analyses in form of Discourse Representation Structure can be successfully converted into a more surface oriented event semantic representation, which will serve as input for a fusion algorithm for fusing hard and soft information. We use a data set of synthetic counter intelligence messages for our investigation. We provide a basic pipeline for conversion and subsequently discuss areas in which ambiguities and differences between the semantic representations present challenges in the conversion process.
Brown clustering has been used to help increase parsing performance for morphologically rich languages. However, much of the work has focused on using clustering techniques to replace terminal nodes or as a feature for parsing. Instead, we choose to examine how effectively Brown clustering is for unlexicalized parsing by creating data-driven POS tagsets which are then used with the Berkeley parser. We investigate cluster sizes as well as on what information (e.g. words vs. lemmas) clustering will yield the best parser performance. Our results approach the current state of the art results for the German T¨uBa-D/Z treebank when using parser internal tagging.
Dieser Beitrag stellt nach einer kurzen allgemeinen Einführung die Datenbank für Gesprochenes Deutsch (DGD) und das Forschungs- und Lehrkorpus Gesprochenes Deutsch (FOLK) als Instrumente speziell für gesprächsanalytisches Arbeiten vor. Anhand des Beispiels sprich als Diskursmarker für Reformulierungen werden Schritt für Schritt die Ressourcen und Tools für systematische korpus- und datenbankgesteuerte Recherchen illustriert: Nutzungsmöglichkeiten der Token-, Kontext-, Metadaten- und Positionssuche werden gezeigt, jeweils in Bezug auf und im wechselseitigen Verhältnis mit qualitativen Fallanalysen, auch mit Belegannotationen nach analyserelevanten (strukturellen und funktionalen) Kategorien. Schließlich wird das heißt als weiterer Reformulierungsindikator für eine vergleichende Analyse herangezogen. Dieser Beitrag stellt eine detailliertere Ausarbeitung einer kürzeren, eher technisch-didaktischen Online-Handreichung (Kaiser/ Schmidt 2016) zu diesem Thema dar, und hat einen stärker inhaltlich-analytischen Fokus.
In this paper, we present first results of training a classifier for discriminating Russian texts into different levels of difficulty. For the classification we considered both surface-oriented features adopted from readability assessments and more linguistically informed, positional features to classify texts into two levels of difficulty. This text classification is the main focus of our Levelled Study Corpus of Russian (LeStCoR), in which we aim to build a corpus adapted for language learning purposes – selecting simpler texts for beginner second language learners and more complex texts for advanced learners. The most discriminative feature in our pilot study was a lexical feature that approximates accessibility of the vocabulary by the second language learner in terms of the proportion of familiar words in the texts. The best feature setting achieved an accuracy of 0.91 on a pilot corpus of 209 texts.
The IFCASL corpus is a French-German bilingual phonetic learner corpus designed, recorded and annotated in a project on individualized feedback in computer-assisted spoken language learning. The motivation for setting up this corpus was that there is no phonetically annotated and segmented corpus for this language pair of comparable of size and coverage. In contrast to most learner corpora, the IFCASL corpus incorporate data for a language pair in both directions, i.e. in our case French learners of German, and German learners of French. In addition, the corpus is complemented by two sub-corpora of native speech by the same speakers. The corpus provides spoken data by about 100 speakers with comparable productions, annotated and segmented on the word and the phone level, with more than 50% manually corrected data. The paper reports on inter-annotator agreement and the optimization of the acoustic models for forced speech-text alignment in exercises for computer-assisted pronunciation training. Example studies based on the corpus data with a phonetic focus include topics such as the realization of /h/ and glottal stop, final devoicing of obstruents, vowel quantity and quality, pitch range, and tempo.
The paper presents best practices and results from projects in four countries dedicated to the creation of corpora of computer-mediated communication and social media interactions (CMC). Even though there are still many open issues related to building and annotating corpora of that type, there already exists a range of accessible solutions which have been tested in projects and which may serve as a starting point for a more precise discussion of how future standards for CMC corpora may (and should) be shaped like.
Präposition-Substantiv-Verbindungen mit rekurrentem Nullartikel in adverbialer Verwendung – z.B. nach Belieben, auf Knopfdruck, ohne Ende oder bei Nacht – sind ein in der Mehrwortforschung bisher eher vernachlässigter Typ. Sie sind Untersuchungsgegenstand des laufenden Forschungsprojekts „Präpositionale Wortverbindungen kontrastiv“ (beteiligte Institutionen: IDS Mannheim, Universität Santiago de Compostela, Universität Trnava), in das wir in unserem Vortrag einen Einblick vermitteln. Es wird skizziert, wie sich solche Wortverbindungen sowie abstraktere präpositionale Wortverbindungsmuster vom Typ [in + SUBX-Zeit(en) (z.B. in Echtzeit, in Krisenzeiten) aus kontrastiver Sicht (Deutsch – Spanisch – Slowakisch) korpusbasiert untersuchen und lexikografisch beschreiben lassen. Von großem Interesse – gerade auch für Fremdsprachenlerner – sind dabei insbesondere die semantisch-funktionalen Restriktionen, denen solche Entitäten unterliegen. Basierend auf den theoretischen und empirischen Grundannahmen des am IDS entwickelten Modells „Usuelle Wortverbindungen“ (vgl. Steyer 2013) werden im Projekt zunächst Kollokations- und Kotextmuster für die binären deutschen Mehrworteinheiten induktiv in sehr großen Korpora ermittelt; im Anschluss werden sie einem systematischen Vergleich mit dem Spanischen und Slowakischen unterzogen. Methodisch greifen wir – in allen drei Sprachen – u.a. auf Kookkurrenzprofile zu den Wortverbindungen sowie auf Slotanalysen zu definierten Suchmustern zurück. Ziel des Projekts ist u.a. die Entwicklung eines neuartigen Prototyps für eine multilinguale Aufbereitung des Untersuchungsgegentands (speziell für Fremdsprachenlerner).
The paper reports the results of the curation project ChatCorpus2CLARIN. The goal of the project was to develop a workflow and resources for the integration of an existing chat corpus into the CLARIN-D research infrastructure for language resources and tools in the Humanities and the Social Sciences (http://clarin-d.de). The paper presents an overview of the resources and practices developed in the project, describes the added value of the resource after its integration and discusses, as an outlook, to what extent these practices can be considered best practices which may be useful for the annotation and representation of other CMC and social media corpora.
We introduce our pipeline to integrate CMC and SM corpora into the CLARIN-D corpus infrastructure. The pipeline was developed by transforming an existing CMC corpus, the Dortmund Chat Corpus, into a resource conforming to current technical and legal standards. We describe how the resource has been prepared and restructured in terms of TEI encoding, linguistic annotations, and anonymisation. The output is a CLARIN-conformant resource integrated in the CLARIN-D research infrastructure.