TTLab – Text Technology Lab

The TTLab (Text Technology Lab), headed by Prof. Alexander Mehler, is part of the Department of Computer Science and Mathematics (Fachbereich Informatik und Mathematik) at the Goethe Universität in Frankfurt. It investigates formal, algorithmic models to deepen our understanding of information processing in the humanities. We examine diachronic, time-dependent as well as synchronic aspects of processing linguistic and non-linguistic, multimodal signs. The Lab works across several disciplines to bridge between computer science on the one hand and corpus-based research in the humanities on the other. To this end, we develop information models and algorithms for the analysis of texts, images, and other objects relevant to research in the humanities.

News

  • New publication accepted at ITC 2026

    by

    The following paper has been accepted for publication in the proceedings of the International Test Commission Conference (ITC) 2026 in Auckland, New Zealand:

    Linguistic Features as Predictors of Students’ Performance in Domain-Specific Critical Online Reasoning Tasks

    Walter Bisang and Alexander Mehler. 2026. Linguistic Features as Predictors of Students' Performance in Domain-Specific Critical Online Reasoning Tasks. International Test Commission Conference (ITC) 2026. accepted.
    BibTeX
    @inproceedings{Bisang:Mehler:2026,
      title     = {Linguistic Features as Predictors of Students' Performance in
                   Domain-Specific Critical Online Reasoning Tasks},
      author    = {Bisang, Walter and Mehler, Alexander},
      booktitle = {International Test Commission Conference (ITC) 2026},
      eventdate = {2026-06-30/2026-07-03},
      location  = {Auckland, New Zealand},
      note      = {accepted},
      year      = {2026},
      keywords  = {core,core_b05}
    }
  • New publication accepted at WASSA

    by

    The following paper has been accepted for publication in the proceedings of the 15th Workshop on Computational Approaches to Subjectivity, Sentiment, & Social Media Analysis (WASSA):

    Predicting Convincingness in Political Speech: How Emotional Tone Shapes Persuasive Strength

    Bhuvanesh Verma, Mounika Marreddy and Alexander Mehler. 2026. Predicting Convincingness in Political Speech: How Emotional Tone Shapes Persuasive Strength. Proceedings of the 15th Workshop on Computational Approaches to Subjectivity, Sentiment, & Social Media Analysis. accepted.
    BibTeX
    @inproceedings{Verma:et:al:2026,
      title     = {Predicting Convincingness in Political Speech: How Emotional Tone
                   Shapes Persuasive Strength},
      booktitle = {Proceedings of the 15th Workshop on Computational Approaches to
                   Subjectivity, Sentiment, \& Social Media Analysis},
      year      = {2026},
      author    = {Verma, Bhuvanesh and Marreddy, Mounika and Mehler, Alexander},
      keywords  = {Argument Detection, Argument Quality Assessment,Topic Modelling, Persuasiveness, Convincingness, Emotion Analysis, Argument Mining},
      abstract  = {Emotional tone plays a central role in persuasion, yet its impact
                   on computational assessments of political argument quality in
                   real world election campaign speeches remains understudied. In
                   this work, we investigate whether positive emotional framing correlates
                   with higher perceived convincingness in political arguments. We
                   fine-tune language models on argument quality datasets and test
                   their ability to transfer convincingness predictions to real-world
                   campaign speeches. Using a corpus of U.S. presidential campaign
                   speeches, we analyze emotional polarity in relation to predicted
                   persuasive strength to test whether positively framed arguments
                   are judged more convincing than neutral or negative ones. Our
                   empirical analysis shows that political parties rely heavily on
                   argumentation during their election campaigns. Also, we found
                   the evidence that politicians strategically employ emotional cues
                   within their arguments during these campaign speeches, with positive
                   emotions being more strongly associated with persuasive strength,
                   for example in topics such as USMCA’s Effect on American Jobs
                   and Agriculture, Border Control Policies, Progressive Tax Reforms.
                   At the same time, we find that negative emotions have a weaker
                   yet still non-negligible influence on voter persuasion in topics
                   such as City Crime and Civil Unrest and White Supremacist Violence
                   (Charlottesville Incident).},
      note      = {accepted}
    }
  • New article accepted at SoftwareX

    by

    The following article is accepted in the journal SoftwareX:

    DUUIgateway: A Web Service for Platform-independent, Ubiquitous Big Data NLP

    Cedric Borkowski, Giuseppe Abrami, Dawit Terefe, Daniel Baumartz and Alexander Mehler. 2026. DUUIgateway: A Web Service for Platform-independent, Ubiquitous Big Data NLP. SoftwareX. accepted.
    BibTeX
    @article{Borkowski:et:al:2026,
      title     = {DUUIgateway: A Web Service for Platform-independent, Ubiquitous Big Data NLP},
      journal   = {SoftwareX},
      year      = {2026},
      issn      = {2352-7110},
      author    = {Borkowski, Cedric and Abrami, Giuseppe and Terefe, Dawit and Baumartz, Daniel
                   and Mehler, Alexander},
      keywords  = {duui, neglab},
      abstract  = {Distributed processing of unstructured text data is a challenge
                   in the rapidly changing and evolving natural language processing
                   (NLP) landscape. This landscape is characterized by heterogeneous
                   systems, models, and formats, and especially by the increasing
                   influence of AI systems. While many of these systems handle text
                   data, there are also unified systems that process multiple input
                   and output formats, while allowing for distributed corpus processing.
                   However, there are hardly any user-friendly interfaces that allow
                   existing NLP frameworks to be used flexibly and extended in a
                   user-controlled manner. Due to this gap and the increasing importance
                   of NLP for various scientific disciplines, there has been a demand
                   for a web and API based flexible software solution for deploying,
                   managing and monitoring NLP systems. Such a solution is provided
                   by Docker Unified UIMA-gateway. We introduce DUUIgateway and evaluate
                   its API and user-driven approach to encapsulation. We also describe
                   how these features improve the usability and accessibility of
                   the NLP framework DUUI. We illustrate DUUIgateway in the field
                   of process modeling in higher education and show how it closes
                   the latter gap in NLP by making a variety of systems for processing
                   text and multimodal data accessible to non-experts.},
      note      = {accepted}
    }

Sign up to our mailing list to receive news updates.

Click here to see all recent news.