We propose a new model for learning bilingual word representations from non-parallel document-aligned data. Following the recent advances in word representation learning, our model learns dense real-valued word vectors, that is, bilingual word embeddings (BWEs). Unlike prior work on inducing BWEs which heavily relied on parallel sentence-aligned corpora and/or readily available translation resources such as dictionaries, the article reveals that BWEs may be learned solely on the basis of document-aligned comparable data without any additional lexical resources nor syntactic information. We present a comparison of our approach with previous state-of-the-art models for learning bilingual word representations from comparable data that rely on ...
Proceedings of the 17th International Conference on Intelligent Text Processing and Computational Li...
We present a probabilistic model that si-multaneously learns alignments and dis-tributed representat...
Thesis (Master's)--University of Washington, 2018In an emergency, machine translation systems can be...
We propose a new model for learning bilingual word representations from non-parallel document-aligne...
We propose a new model for learning bilingual word representations from non-parallel document-aligne...
We propose a simple yet effective approach to learning bilingual word embeddings (BWEs) from non-par...
Building bilingual lexica from non-parallel data is a long-standing natural language processing rese...
This chapter introduces a strategy for the automatic extraction of multilingual collocation equivale...
We propose a new unified framework for monolingual (MoIR) and cross-lingual information retrieval (C...
Bilingual language models (Bi-LMs) refer to language models that are modeled using both source and t...
Recent work in learning bilingual repre-sentations tend to tailor towards achiev-ing good performanc...
One of the notable developments in current natural language processing is the practical efficacy of ...
We introduce bilingual word embeddings: semantic embeddings associated across two languages in the c...
A machine-readable bilingual dictionary plays a crucial role in many natural language processing tas...
Distributed representations of meaning are a natural way to encode covariance relationships between ...
Proceedings of the 17th International Conference on Intelligent Text Processing and Computational Li...
We present a probabilistic model that si-multaneously learns alignments and dis-tributed representat...
Thesis (Master's)--University of Washington, 2018In an emergency, machine translation systems can be...
We propose a new model for learning bilingual word representations from non-parallel document-aligne...
We propose a new model for learning bilingual word representations from non-parallel document-aligne...
We propose a simple yet effective approach to learning bilingual word embeddings (BWEs) from non-par...
Building bilingual lexica from non-parallel data is a long-standing natural language processing rese...
This chapter introduces a strategy for the automatic extraction of multilingual collocation equivale...
We propose a new unified framework for monolingual (MoIR) and cross-lingual information retrieval (C...
Bilingual language models (Bi-LMs) refer to language models that are modeled using both source and t...
Recent work in learning bilingual repre-sentations tend to tailor towards achiev-ing good performanc...
One of the notable developments in current natural language processing is the practical efficacy of ...
We introduce bilingual word embeddings: semantic embeddings associated across two languages in the c...
A machine-readable bilingual dictionary plays a crucial role in many natural language processing tas...
Distributed representations of meaning are a natural way to encode covariance relationships between ...
Proceedings of the 17th International Conference on Intelligent Text Processing and Computational Li...
We present a probabilistic model that si-multaneously learns alignments and dis-tributed representat...
Thesis (Master's)--University of Washington, 2018In an emergency, machine translation systems can be...