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This contribution explores the relationship between the English CEFR (Common European Framework of Reference for Languages) vocabulary levels and user interest in English Wiktionary entries. User interest was operationalized through the number of views of these entries in Wikimedia server logs covering a period of four years (2019–2022). Our findings reveal a significant relationship between CEFR levels and user interest: entries classified at lower CEFR levels tend to attract more views, which suggests a greater user interest in more basic vocabulary. A multiple regression model controlling for other known or potential factors affecting interest: corpus frequency, polysemy, word prevalence, and age of acquisition confirmed that lower CEFR levels attract significantly more views even after taking into account the other predictors. These findings highlight the importance of CEFR levels in predicting which words users are likely to look up, with implications for lexicography and the development of language learning materials.
Less than one percent of words would be affected by gender-inclusive language in German press texts
(2024)
Research on gender and language is tightly knitted to social debates on gender equality and non-discriminatory language use. Psycholinguistic scholars have made significant contributions in this field. However, corpus-based studies that investigate these matters within the context of language use are still rare. In our study, we address the question of how much textual material would actually have to be changed if non-gender-inclusive texts were rewritten to be gender-inclusive. This quantitative measure is an important empirical insight, as a recurring argument against the use of gender-inclusive German is that it supposedly makes written texts too long and complicated. It is also argued that gender-inclusive language has negative effects on language learners. However, such effects are only likely if gender-inclusive texts are very different from those that are not gender-inclusive. In our corpus-linguistic study, we manually annotated German press texts to identify the parts that would have to be changed. Our results show that, on average, less than 1% of all tokens would be affected by gender-inclusive language. This small proportion calls into question whether gender-inclusive German presents a substantial barrier to understanding and learning the language, particularly when we take into account the potential complexities of interpreting masculine generics.
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.
Computational language models (LMs), most notably exemplified by the widespread success of OpenAI's ChatGPT chatbot, show impressive performance on a wide range of linguistic tasks, thus providing cognitive science and linguistics with a computational working model to empirically study different aspects of human language. Here, we use LMs to test the hypothesis that languages with more speakers tend to be easier to learn. In two experiments, we train several LMs—ranging from very simple n-gram models to state-of-the-art deep neural networks—on written cross-linguistic corpus data covering 1293 different languages and statistically estimate learning difficulty. Using a variety of quantitative methods and machine learning techniques to account for phylogenetic relatedness and geographical proximity of languages, we show that there is robust evidence for a relationship between learning difficulty and speaker population size. However, contrary to expectations derived from previous research, our results suggest that languages with more speakers tend to be harder to learn.
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.
One of the fundamental questions about human language is whether all languages are equally complex. Here, we approach this question from an information-theoretic perspective. We present a large scale quantitative cross-linguistic analysis of written language by training a language model on more than 6500 different documents as represented in 41 multilingual text collections consisting of ~ 3.5 billion words or ~ 9.0 billion characters and covering 2069 different languages that are spoken as a native language by more than 90% of the world population. We statistically infer the entropy of each language model as an index of what we call average prediction complexity. We compare complexity rankings across corpora and show that a language that tends to be more complex than another language in one corpus also tends to be more complex in another corpus. In addition, we show that speaker population size predicts entropy. We argue that both results constitute evidence against the equi-complexity hypothesis from an information-theoretic perspective.
Neologisms, i.e., new words or meanings, are finding their way into everyday language use all the time. In the process, already existing elements of a language are recombined or linguistic material from other languages is borrowed. But are borrowed neologisms accepted similarly well by the speech community as neologisms that were formed from “native” material? We investigate this question based on neologisms in German. Building on the corresponding results of a corpus study, we test the hypothesis of whether “native” neologisms are more readily accepted than those borrowed from English. To do so, we use a psycholinguistic experimental paradigm that allows us to estimate the degree of uncertainty of the participants based on the mouse trajectories of their responses. Unexpectedly, our results suggest that the neologisms borrowed from English are accepted more frequently, more quickly, and more easily than the “native” ones. These effects, however, are restricted to people born after 1980, the so-called millenials. We propose potential explanations for this mismatch between corpus results and experimental data and argue, among other things, for a reinterpretation of previous corpus studies.
Ziel dieses Projekts ist es, Sprachdaten so nah wie möglich am Jetzt zu erheben und analysierbar zu machen. Wir möchten, dass möglichst viele Menschen, nicht nur Sprachwissenschaftlerinnen und Sprachwissenschaftler, in die Lage versetzt werden, Sprachdaten zu explorieren und zu nutzen. Hierzu erheben wir ein Korpus, d. h. eine aufbereitete Sammlung von Sprachdaten von RSS-Feeds deutschsprachiger Onlinequellen. Wir zeichnen die Entwicklung der Analysewerkzeuge von einem Prototyp hin zur aktuellen Form der Anwendung nach, die eine komplette Reimplementierung darstellt. Dabei gehen wir auf die Architektur, einige Analysebeispiele sowie Erweiterungsmöglichkeiten ein. Fragen der Skalierbarkeit und Performanz stehen dabei im Mittelpunkt. Unsere Darstellungen lassen sich daher auf andere Data-Science-Projekte verallgemeinern.
Dieser Beitrag gibt einen Überblick über die methodischen Ausgangspunkte des Projekts MIT. Qualität und stellt einige zentrale Erkenntnisse zur Modellbildung, der korpuslinguistischen Analyse und Akzeptabilitätserhebungen in der Sprachgemeinschaft vor. Wir zeigen dabei, wie bestehende Textqualitätsmodelle anhand einer Analyse einschlägiger Ratgeberliteratur erweitert werden können. Es wurden zwei empirische Fallstudien durchgeführt, die beide auf die Herstellung von textueller Kohärenz mittels des Kausalkonnektors weil fokussieren. Wir stellen zunächst eine korpuskontrastive Analyse vor. Weiterhin zeigen wir, wie man anhand verschiedener Aufgabenstellungen diverse Aspekte von Akzeptabilität in der Sprachgemeinschaft abprüfen kann.