Language is often viewed as the pinnacle of (human) intelligence. The seamlessness by which machines can be integrated with society depends on their understanding and mastery of language. Our research thus covers domain-specific large-scale language modeling, text manipulation algorithms, argumentation, and causal language. It is studied specifically in the context of conversational AI and connecting knowledge extraction and graphs with goal-driven dialogs, as well as in the context of mining the scientific literature.
Our research in natural language processing and information retrieval focuses on algorithms and models. The overarching challenge is advancing language understanding and manipulation.
Artificial Intelligence technologies with the help of increasingly large language resources from web archives fuel the generalization capabilities of these models.
In the research area “Understanding Language”, we are building domain-specific language models for writing assistance and problem-solving, focusing on latent variables in language models.