João Alves


2022

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Unbabel-IST at the WMT Chat Translation Shared Task
João Alves | Pedro Henrique Martins | José G. C. de Souza | M. Amin Farajian | André F. T. Martins
Proceedings of the Seventh Conference on Machine Translation (WMT)

We present the joint contribution of IST and Unbabel to the WMT 2022 Chat Translation Shared Task. We participated in all six language directions (English ↔ German, English ↔ French, English ↔ Brazilian Portuguese). Due to the lack of domain-specific data, we use mBART50, a large pretrained language model trained on millions of sentence-pairs, as our base model. We fine-tune it using a two step fine-tuning process. In the first step, we fine-tune the model on publicly available data. In the second step, we use the validation set. After having a domain specific model, we explore the use of kNN-MT as a way of incorporating domain-specific data at decoding time.