Events

Priberam Machine Learning Lunch Seminar – Wafaa Mohammed

VA5 Amphitheatre, Civil Engineering Building, Alameda campus

17 June, at 1 p.m., in VA5 Amphitheatre, Civil Engineering Building, Alameda campus

Date: 17 June
Hour: 1 p.m.
Venue: VA5 Amphitheatre, Civil Engineering Building, Alameda campus

Speaker: Wafaa Mohammed (ELLIS/UvA/IT)
Title: “Unlocking Latent Discourse Translation in LLMs Through Quality-Aware Decoding”

Abstract:

Large language models (LLMs) have emerged as strong contenders in machine translation. Yet, they often fall behind specialized neural machine translation systems in addressing discourse phenomena, such as pronoun resolution and lexical cohesion at the document level. In the seminar, I will present our recent work where we thoroughly investigate the discourse phenomena performance of LLMs for document-level translation. We demonstrate that discourse knowledge is encoded within LLMs and propose the use of quality-aware decoding (QAD) to effectively extract this knowledge, showcasing its superiority over other decoding approaches through comprehensive analysis. Furthermore, we illustrate that QAD enhances the semantic richness of translations and aligns them more closely with human preferences.

Speaker Bio:

Wafaa Mohammed is an ELLIS PhD student co-supervised by Vlad Niculae at the University of Amsterdam (UvA) and Chrysoula Zerva at the SARDINE lab of Instituto de Telecomunicações (IT). Her current research focuses on context-aware machine translation, aiming to build machine translation systems that are able to handle context-dependent discourse phenomena while ensuring high overall translation quality.

Priberam is a member of the IST Spin-Off Community®.

The Priberam Machine Learning Lunch Seminars are free of charge. Prior registration is required.

More information and registration.