From Insights to Impact: Actionable Interpretability for Neural Machine Translation | Gabriele Sarti
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From Insights to Impact: Actionable Interpretability for Neural Machine Translation
Gabriele Sarti
Natural Language Processing
,
Academic
Project
Project
Slides
Date
Jun 18, 2026
Event
Best Thesis Award, Conference of the European Association for Machine Translation (EAMT)
Location
Schouwburg & Concertzaal
Tilburg, Netherlands
Natural Language Processing
Interpretability
Language Modeling
Feature Attribution
Steering
Sparse Autoencoders
Machine Translation
Post-editing
User study
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From Insights to Impact: Actionable Interpretability for Neural Machine Translation
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