SOTAVerified

Phrase-based Unsupervised Machine Translation with Compositional Phrase Embeddings

2018-10-01WS 2018Unverified0· sign in to hype

Maksym Del, Andre T{\"a}ttar, Mark Fishel

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

This paper describes the University of Tartu's submission to the unsupervised machine translation track of WMT18 news translation shared task. We build several baseline translation systems for both directions of the English-Estonian language pair using monolingual data only; the systems belong to the phrase-based unsupervised machine translation paradigm where we experimented with phrase lengths of up to 3. As a main contribution, we performed a set of standalone experiments with compositional phrase embeddings as a substitute for phrases as individual vocabulary entries. Results show that reasonable n-gram vectors can be obtained by simply summing up individual word vectors which retains or improves the performance of phrase-based unsupervised machine tranlation systems while avoiding limitations of atomic phrase vectors.

Tasks

Reproductions