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Open-Access-Finanzierung

2022, Kändler, Ulrike, Wohlgemuth, Michael, Ertl, Hubert, Rödel, Bodo

[no abstract available]

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Seriös oder nicht? Die individuelle Prüfung der Qualität von Zeitschriften an der TIB

2023, Schmeja, Stefan, Kändler, Ulrike

Die Frage nach der Qualität von Open-Access-Zeitschriften stellt sich an der TIB sowohl bei der Beratung von Autor:innen als auch bei der Förderung durch einen Publikationsfonds. Wenn eine Zeitschrift nicht im Directory of Open Access Journals (DOAJ) gelistet ist und auch nicht eindeutig unseriös erscheint, wird sie individuell anhand unterschiedlicher Kriterien geprüft. In diesem Beitrag stellen wir die benutzten Kriterien vor und schildern unsere Erfahrung bei der Einschätzung.

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About Migration Flows and Sentiment Analysis on Twitter Data: Building the Bridge Between Technical and Legal approaches to data protection

2022, Gottschalk, Thilo, Pichierri, Francesca, Rigault, Mickaël, Arranz, Victoria, Siegert, Ingo

Sentiment analysis has always been an important driver of political decisions and campaigns across all fields. Novel technologies allow automatizing analysis of sentiments on a big scale and hence provide allegedly more accurate outcomes. With user numbers in the billions and their increasingly important role in societal discussions, social media platforms become a glaring data source for these types of analysis. Due to its public availability, the relative ease of access and the sheer amount of available data, the Twitter API has become a particularly important source to researchers and data analysts alike. Despite the evident value of these data sources, the analysis of such data comes with legal, ethical and societal risks that should be taken into consideration when analysing data from Twitter. This paper describes these risks along the technical processing pipeline and proposes related mitigation measures.

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Digital Humanities Handbuch

2015-08-12, Hahn, Helene, Kalman, Tibor, Pielström, Steffen, Puhl, Johanna, Kolbmann, Wibke, Kollatz, Thomas, Neuschäfer, Markus, Stiller, Juliane, Tonne, Danah

Um das Handbuch möglichst praxisnah zu gestalten, haben wir uns entschieden, zuerst einzelne DH-Projekte vorzustellen, um die Möglichkeiten der DH den Lebringen und ihnen zu zeigen, was in der Praxis in dem Bereich derzeit schon umgesetzt wurde. So zeigen wir in Kapitel 2, wie mit TextGrid Texte editiert und meCodicology Handschriften analysiert werden. Die folgenden drei Kapitel beschäftigen sich mit den drei Säulen, die jedes Projekt in den Digital Humanities trag Methoden und Werkzeuge, und Infrastruktur. Die Kapitel bieten erste Einführungen in die jeweilige Thematik und vermitteln den Lesern an die Praxis angelehntsie in eigenen DH-Projekten anwenden können. Die Kapitel Daten und Alles was Recht ist - Urheberrecht und Lizenzierung von Forschungsdaten weisen in die Grundlage wissenschaftlichen Forschens ein und bieten Hilfestellungen im Umgang mit Lizenzen und Dateiformaten. Das Kapitel Methoden und Werkzeuge ze Digital Humanities auf und verweist beispielhaft auf digitale Werkzeuge, die für die Beantwortung geisteswissenschaftlicher Forschungsfragen herangezogen weKapitel Infrastruktur werden Digitale Infrastrukturen, deren Komponenten und Zielstellungen näher beschrieben. Sie sind unerlässlich, um die digitale Forschunund nachhaltig zu gestalten.

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On the Impact of Temporal Representations on Metaphor Detection

2022, Giorgio Ottolina, Matteo Palmonari, Manuel Vimercati, Mehwish Alam, Calzolari, Nicoletta, Béchet, Frédéric, Blache, Philippe, Choukri, Khalid, Cieri, Christopher, Declerck, Thierry, Goggi, Sara, Isahara, Hitoshi, Maegaard, Bente, Mariani, Joseph, Mazo, Hélène, Odijk, Jan, Piperidis, Stelios

State-of-the-art approaches for metaphor detection compare their literal - or core - meaning and their contextual meaning using metaphor classifiers based on neural networks. However, metaphorical expressions evolve over time due to various reasons, such as cultural and societal impact. Metaphorical expressions are known to co-evolve with language and literal word meanings, and even drive, to some extent, this evolution. This poses the question of whether different, possibly time-specific, representations of literal meanings may impact the metaphor detection task. To the best of our knowledge, this is the first study that examines the metaphor detection task with a detailed exploratory analysis where different temporal and static word embeddings are used to account for different representations of literal meanings. Our experimental analysis is based on three popular benchmarks used for metaphor detection and word embeddings extracted from different corpora and temporally aligned using different state-of-the-art approaches. The results suggest that the usage of different static word embedding methods does impact the metaphor detection task and some temporal word embeddings slightly outperform static methods. However, the results also suggest that temporal word embeddings may provide representations of the core meaning of the metaphor even too close to their contextual meaning, thus confusing the classifier. Overall, the interaction between temporal language evolution and metaphor detection appears tiny in the benchmark datasets used in our experiments. This suggests that future work for the computational analysis of this important linguistic phenomenon should first start by creating a new dataset where this interaction is better represented.

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Towards Analyzing the Bias of News Recommender Systems Using Sentiment and Stance Detection

2022, Alam, Mehwish, Iana, Andreea, Grote, Alexander, Ludwig, Katharina, Müller, Philipp, Paulheim, Heiko, Laforest, Frédérique, Troncy, Raphael, Médini, Lionel, Herman, Ivan

News recommender systems are used by online news providers to alleviate information overload and to provide personalized content to users. However, algorithmic news curation has been hypothesized to create filter bubbles and to intensify users' selective exposure, potentially increasing their vulnerability to polarized opinions and fake news. In this paper, we show how information on news items' stance and sentiment can be utilized to analyze and quantify the extent to which recommender systems suffer from biases. To that end, we have annotated a German news corpus on the topic of migration using stance detection and sentiment analysis. In an experimental evaluation with four different recommender systems, our results show a slight tendency of all four models for recommending articles with negative sentiments and stances against the topic of refugees and migration. Moreover, we observed a positive correlation between the sentiment and stance bias of the text-based recommenders and the preexisting user bias, which indicates that these systems amplify users' opinions and decrease the diversity of recommended news. The knowledge-aware model appears to be the least prone to such biases, at the cost of predictive accuracy.

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Causal Relationship over Knowledge Graphs

2022, Huang, Hao, Al Hasan, Mohammad, Xiong, Li

Causality has been discussed for centuries, and the theory of causal inference over tabular data has been broadly studied and utilized in multiple disciplines. However, only a few works attempt to infer the causality while exploiting the meaning of the data represented in a data structure like knowledge graph. These works offer a glance at the possibilities of causal inference over knowledge graphs, but do not yet consider the metadata, e.g., cardinalities, class subsumption and overlap, and integrity constraints. We propose CareKG, a new formalism to express causal relationships among concepts, i.e., classes and relations, and enable causal queries over knowledge graphs using semantics of metadata. We empirically evaluate the expressiveness of CareKG in a synthetic knowledge graph concerning cardinalities, class subsumption and overlap, integrity constraints. Our initial results indicate that CareKG can represent and measure causal relations with some semantics which are uncovered by state-of-the-art approaches.

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Toward a Comparison Framework for Interactive Ontology Enrichment Methodologies

2022, Vrolijk, Jarno, Reklos, Ioannis, Vafaie, Mahsa, Massari, Arcangelo, Mohammadi, Maryam, Rudolph, Sebastian, Fu, Bo, Lambrix, Patrick, Pesquita, Catia

The growing demand for well-modeled ontologies in diverse application areas increases the need for intuitive interaction techniques that support human domain experts in ontology modeling and enrichment tasks, such that quality expectations are met. Beyond the correctness of the specified information, the quality of an ontology depends on its (relative) completeness, i.e., whether the ontology contains all the necessary information to draw expected inferences. On an abstract level, the Ontology Enrichment problem consists of identifying and filling the gap between information that can be logically inferred from the ontology and the information expected to be inferable by the user. To this end, numerous approaches have been described in the literature, providing methodologies from the fields of Formal Semantics and Automated Reasoning targeted at eliciting knowledge from human domain experts. These approaches vary greatly in many aspects and their applicability typically depends on the specifics of the concrete modeling scenario at hand. Toward a better understanding of the landscape of methodological possibilities, this position paper proposes a framework consisting of multiple performance dimensions along which existing and future approaches to interactive ontology enrichment can be characterized. We apply our categorization scheme to a selection of methodologies from the literature. In light of this comparison, we address the limitations of the methods and propose directions for future work.

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B!SON: A Tool for Open Access Journal Recommendation

2022, Entrup, Elias, Eppelin, Anita, Ewerth, Ralph, Hartwig, Josephine, Tullney, Marco, Wohlgemuth, Michael, Hoppe, Anett, Nugent, Ronan

Finding a suitable open access journal to publish scientific work is a complex task: Researchers have to navigate a constantly growing number of journals, institutional agreements with publishers, funders’ conditions and the risk of Predatory Publishers. To help with these challenges, we introduce a web-based journal recommendation system called B!SON. It is developed based on a systematic requirements analysis, built on open data, gives publisher-independent recommendations and works across domains. It suggests open access journals based on title, abstract and references provided by the user. The recommendation quality has been evaluated using a large test set of 10,000 articles. Development by two German scientific libraries ensures the longevity of the project.

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Entropy-based Chinese city-level MRIO table framework

2021, Zheng, Heran, Többen, Johannes, Dietzenbacher, Erik, Moran, Daniel, Meng, Jing, Wang, Daoping, Guan, Dabo

Cities are pivotal hubs of socioeconomic activities, and consumption in cities contributes to global environmental pressures. Compiling city-level multi-regional input-output (MRIO) tables is challenging due to the scarcity of city-level data. Here we propose an entropy-based framework to construct city-level MRIO tables. We demonstrate the new construction method and present an analysis of the carbon footprint of cities in China's Hebei province. A sensitivity analysis is conducted by introducing a weight reflecting the heterogeneity between city and province data, as an important source of uncertainty is the degree to which cities and provinces have an identical ratio of intermediate demand to total demand. We compare consumption-based emissions generated from the new MRIO to results of the MRIO based on individual city input-output tables. The findings reveal a large discrepancy in consumption-based emissions between the two MRIO tables but this is due to conflicting benchmark data used in the two tables.