Korpuslinguistik
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We introduce DeReKoGram, a novel frequency dataset containing lemma and part-of-speech (POS) information for 1-, 2-, and 3-grams from the German Reference Corpus. The dataset contains information based on a corpus of 43.2 billion tokens and is divided into 16 parts based on 16 corpus folds. We describe how the dataset was created and structured. By evaluating the distribution over the 16 folds, we show that it is possible to work with a subset of the folds in many use cases (e.g., to save computational resources). In a case study, we investigate the growth of vocabulary (as well as the number of hapax legomena) as an increasing number of folds are included in the analysis. We cross-combine this with the various cleaning stages of the dataset. We also give some guidance in the form of Python, R, and Stata markdown scripts on how to work with the resource.
Filtern, Explorieren, Vergleichen: neue Zugriffsstrukturen und instruktive Potenziale von OWIDplus
(2023)
OWIDplus, das Zusatzangebot zur Wörterbuchplattform OWID, vereint verschiedenste lexikalische Datenbanken, Korpustools und visuell aufbereitete Analysen, die mithilfe von Textsuche und Kategorienfiltern so sortiert werden können, dass Benutzer*innen leicht die für sie interessanten Projekte entdecken können. Eine tiefergehende Beschäftigung mit den Einzelprojekten zeigt, wie bei aller oberflächlicher Ähnlichkeit oder gemeinsamen Themenbereichen ganz unterschiedliche methodische Zugänge zu sprachlichen Daten gewählt worden sind und wie Methodik und Forschungsfrage stets aufeinander abgestimmt werden müssen. Die Vielzahl potenzieller Forschungsfragen führt so unweigerlich zu einer Diversität von Projekten und somit einer Heterogenität, die, so hoffen die Autor*innen, in OWIDplus greifbar wird.
Dictionaries are often a reflection of their time; their respective (socio-)historical context influences how the meaning of certain lexical units is described. This also applies to descriptions of personal terms such as man or woman. Lexicographers have a special responsibility to comprehensively investigate current language use before describing it in the dictionary. Accordingly, contemporary academic dictionaries are usually corpus-based. However, it is important to acknowledge that language is always embedded in cultural contexts. Our case study investigates differences in the linguistic contexts of the use of man and woman, drawing from a range of language collections (in our case fiction books, popular magazines and newspapers). We explain how potential differences in corpus construction would therefore influence the “reality”1 depicted in the dictionary. In doing so, we address the far-reaching consequences that the choice of corpus-linguistic basis for an empirical dictionary has on semantic descriptions in dictionary entries.
Furthermore, we situate the case study within the context of gender-linguistic issues and discuss how lexicographic teams can engage with how dictionaries might perpetuate traditional role concepts when describing language use.
We start by trying to answer a question that has already been asked by de Schryver et al. (2006): Do dictionary users (frequently) look up words that are frequent in a corpus. Contrary to their results, our results that are based on the analysis of log files from two different online dictionaries indicate that users indeed look up frequent words frequently. When combining frequency information from the Mannheim German Reference Corpus and information about the number of visits in the Digital Dictionary of the German Language as well as the German language edition of Wiktionary, a clear connection between corpus and look-up frequencies can be observed. In a follow-up study, we show that another important factor for the look-up frequency of a word is its temporal social relevance. To make this effect visible, we propose a de-trending method where we control both frequency effects and overall look-up trends.