no code implementations • LREC 2022 • Pantea Haghighatkhah, Antske Fokkens, Pia Sommerauer, Bettina Speckmann, Kevin Verbeek
Topological Data Analysis (TDA) focuses on the inherent shape of (spatial) data.
no code implementations • GWC 2019 • Pia Sommerauer, Antske Fokkens, Piek Vossen
We provide hypotheses on which properties are reflected in distributional data or not based on the type of relation.
no code implementations • 2 Oct 2023 • Zhivar Sourati, Filip Ilievski, Pia Sommerauer, Yifan Jiang
However, while cognitive theories of analogy often focus on narratives and study the distinction between surface, relational, and system similarities, existing work in natural language processing has a narrower focus as far as relational analogies between word pairs.
no code implementations • 11 Jan 2023 • Richard Brath, Daniel Keim, Johannes Knittel, SHimei Pan, Pia Sommerauer, Hendrik Strobelt
We motivate the use of visualization in relation to target users and common NLP pipelines.
no code implementations • 8 Dec 2022 • Pantea Haghighatkhah, Antske Fokkens, Pia Sommerauer, Bettina Speckmann, Kevin Verbeek
Applying one targeted (MP) projection hence is methodologically cleaner than applying multiple (INLP) projections that introduce random effects.
1 code implementation • NAACL 2021 • Yvette Oortwijn, Jelke Bloem, Pia Sommerauer, Francois Meyer, Wei Zhou, Antske Fokkens
We investigate the possibilities and limitations of using distributional semantic models for analyzing philosophical data by means of a realistic use-case.
no code implementations • COLING 2020 • Pia Sommerauer, Antske Fokkens, Piek Vossen
We establish an additional, agreement-independent quality metric based on answer-coherence and evaluate it in comparison to existing metrics.
no code implementations • ACL 2020 • Pia Sommerauer
The expected outcome is a better understanding of (1) the semantic information we can infer purely based on linguistic co-occurrence patterns and (2) the potential of distributional semantic models to pick up linguistic evidence.
no code implementations • WS 2019 • Pia Sommerauer, Antske Fokkens
Studying conceptual change using embedding models has become increasingly popular in the Digital Humanities community while critical observations about them have received less attention.
no code implementations • WS 2018 • Pia Sommerauer, Antske Fokkens
The idea behind this method is that properties identified by classifiers, but not through full vector comparison are captured by embeddings.
no code implementations • SEMEVAL 2018 • Pia Sommerauer, Antske Fokkens, Piek Vossen
This paper presents the two systems submitted by the meaning space team in Task 10 of the SemEval competition 2018 entitled Capturing discriminative attributes.