
Anne Lauscher
bias
domain adaptation
stereotypes
text-2-image
pretrained language model
identity inclusion
gender
demographic
non-cis gender
ethics
natural language inference
fairness
survey
semantic textual similarity
roberta
11
presentations
SHORT BIO
Anne Lauscher is Associate Professor of Data Science at the University of Hamburg, where her research group investigates Conversational Artificial Intelligence (AI) systems with a focus on fair, inclusive, and sustainable communication. The professorship is funded by the Excellence Initiative of the German Federation and the federal states. Before, she was a Postdoctoral Researcher in the Natural Language Processing group at Bocconi University (Milan, Italy) where she was working on introducing demographic factors into language processing systems with the aim of improving algorithmic performance and system fairness. She obtained her Ph.D., awarded with the highest honors (summa cum laude), from the Data and Web Science group at the University of Mannheim (Germany), where her research focused on the interplay between language representations and computational argumentation. During her studies, she conducted research internships at and became an independent research contractor for Grammarly Inc. (New York City, U.S.) and for the Allen Institute for Artificial Intelligence (Seattle, U.S.).
Presentations

WinoPron: Revisiting English Winogender Schemas for Consistency, Coverage, and Grammatical Case
Vagrant Gautam and 5 other authors

Robust Pronoun Fidelity with English LLMs: Are they Reasoning, Repeating, or Just Biased?
Vagrant Gautam and 4 other authors

Stop! In the Name of Flaws: Disentangling Personal Names and Sociodemographic Attributes in NLP
Vagrant Gautam and 3 other authors

What the Weight?! A Unified Framework for Zero-Shot Knowledge Composition
Carolin Holtermann and 3 other authors

Stereotypes and Smut: The (Mis)representation of Non-cisgender Identities by Text-to-Image Models
Anne Lauscher and 2 other authors

Stereotypes and Smut: The (Mis)representation of Non-cisgender Identities by Text-to-Image Models
Anne Lauscher and 2 other authors

What about "em"? How Commercial Machine Translation Fails to Handle (Neo-)Pronouns
Anne Lauscher and 4 other authors

Can Demographic Factors Improve Text Classification? Revisiting Demographic Adaptation in the Age of Transformers
Chia-Chien Hung and 4 other authors

Can Demographic Factors Improve Text Classification? Revisiting Demographic Adaptation in the Age of Transformers
Chia-Chien Hung and 4 other authors

SocioProbe: What, When, and Where Language Models Learn about Sociodemographics
Anne Lauscher and 3 other authors

Bridging Fairness and Environmental Sustainability in Natural Language Processing
Anne Lauscher and 3 other authors