Search Results for author: Stanislas Lauly

Found 10 papers, 1 papers with code

MT-GenEval: A Counterfactual and Contextual Dataset for Evaluating Gender Accuracy in Machine Translation

1 code implementation2 Nov 2022 Anna Currey, Maria Nădejde, Raghavendra Pappagari, Mia Mayer, Stanislas Lauly, Xing Niu, Benjamin Hsu, Georgiana Dinu

As generic machine translation (MT) quality has improved, the need for targeted benchmarks that explore fine-grained aspects of quality has increased.

counterfactual Ethics +3

Joint translation and unit conversion for end-to-end localization

no code implementations WS 2020 Georgiana Dinu, Prashant Mathur, Marcello Federico, Stanislas Lauly, Yaser Al-Onaizan

A variety of natural language tasks require processing of textual data which contains a mix of natural language and formal languages such as mathematical expressions.

Data Augmentation Translation

Does Neural Machine Translation Benefit from Larger Context?

no code implementations17 Apr 2017 Sebastien Jean, Stanislas Lauly, Orhan Firat, Kyunghyun Cho

We propose a neural machine translation architecture that models the surrounding text in addition to the source sentence.

Machine Translation Sentence +1

Document Neural Autoregressive Distribution Estimation

no code implementations18 Mar 2016 Stanislas Lauly, Yin Zheng, Alexandre Allauzen, Hugo Larochelle

We present an approach based on feed-forward neural networks for learning the distribution of textual documents.

Learning Multilingual Word Representations using a Bag-of-Words Autoencoder

no code implementations8 Jan 2014 Stanislas Lauly, Alex Boulanger, Hugo Larochelle

Recent work on learning multilingual word representations usually relies on the use of word-level alignements (e. g. infered with the help of GIZA++) between translated sentences, in order to align the word embeddings in different languages.

Document Classification General Classification +3

A Neural Autoregressive Topic Model

no code implementations NeurIPS 2012 Hugo Larochelle, Stanislas Lauly

We describe a new model for learning meaningful representations of text documents from an unlabeled collection of documents.

Representation Learning

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