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Chris Quirk

Researcher at Microsoft

Publications -  135
Citations -  6855

Chris Quirk is an academic researcher from Microsoft. The author has contributed to research in topics: Machine translation & Phrase. The author has an hindex of 36, co-authored 135 publications receiving 6306 citations.

Papers
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Proceedings ArticleDOI

Unsupervised construction of large paraphrase corpora: exploiting massively parallel news sources

TL;DR: Investigation of unsupervised techniques for acquiring monolingual sentence-level paraphrases from a corpus of temporally and topically clustered news articles collected from thousands of web-based news sources shows that edit distance data is cleaner and more easily-aligned than the heuristic data.
Proceedings ArticleDOI

Dependency Treelet Translation: Syntactically Informed Phrasal SMT

TL;DR: An efficient decoder is described and it is shown that using these tree-based models in combination with conventional SMT models provides a promising approach that incorporates the power of phrasal SMT with the linguistic generality available in a parser.
Journal ArticleDOI

Cross-Sentence N-ary Relation Extraction with Graph LSTMs

TL;DR: A general relation extraction framework based on graph long short-term memory networks (graph LSTMs) that can be easily extended to cross-sentence n-ary relation extraction is explored, demonstrating its effectiveness with both conventional supervised learning and distant supervision.
Proceedings Article

Monolingual Machine Translation for Paraphrase Generation

TL;DR: Human evaluation shows that this SMT system outperforms baseline paraphrase generation techniques and, in a departure from previous work, offers better coverage and scalability than the current best-of-breed paraphrasing approaches.
Proceedings Article

Joint Language and Translation Modeling with Recurrent Neural Networks

TL;DR: This work presents a joint language and translation model based on a recurrent neural network which predicts target words based on an unbounded history of both source and target words which shows competitive accuracy compared to the traditional channel model features.