Low-Cost Eye Tracking Corpus for Explainable Natural Language Processing
Name of applicant
Anders Søgaard
Institution
University of Copenhagen
Amount
DKK 367,352
Year
2021
Type of grant
Research Infrastructure
Summary
This infrastructure project enables the creation of a multilingual low-cost eye-tracking dataset, designed to make artificial intelligence-based language technologies fair and transparent. Deep learning models are ubiquitous in the present-day landscape of artificial intelligence. In order to understand what these models learn despite their generally opaque nature, and whether their rationales align with those of humans, we collect low-cost eye movement data through a crowd-sourcing platform and learn human rationales from gaze patterns. We collect gaze patterns from both task-specific and task-agnostic natural reading, providing a platform for evaluating the transparency and soundness of modern language technologies at scale. PIs: Anders Søgaard and Nora Hollenstein.