A neural language model trained on a text corpus can be used to induce distributed representations of words, such that similar words end up with similar representations. If the corpus is multilingual, the same model can be used to learn distributed representations of languages, such that similar languages end up with similar representations. We show that this holds even when the multilingual corpus has been translated into English, by picking up the faint signal left by the source languages. However, just as it is a thorny problem to separate semantic from syntactic similarity in word representations, it is not obvious what type of similarity is captured by language representations. We investigate correlations and causal relationships betwe...
A review of empirical work suggests that the lexical representations of a bilingual’s two languages ...
This study extended cross-language semantic decoding (based on a concept’s fMRI signature) to the de...
As an initial effort to identify universal and language-specific factors that influence the behavior...
A neural language model trained on a text corpus can be used to induce distributed representations o...
A neural language model trained on a text corpus can be used to induce distributed representations o...
Neural language models learn word representations that capture rich linguistic and conceptual inform...
Multilingual representations have mostly been evaluated based on their performance on specific tasks...
We study the role of the second language in bilingual word embeddings in monolingual semantic evalu...
Several researchers have put forward models of bilingual lexical representation based on extensions ...
Recent work has shown that neural models can be successfully trained on multiple languages simultane...
Representation learning is a research area within machine learning and natural language processing (...
The focus of this presentation is the following observation: words that are phonetically similar acr...
Assessing the semantic similarity between sentences in different languages is challenging. We approa...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
A review of empirical work suggests that the lexical representations of a bilingual’s two languages ...
This study extended cross-language semantic decoding (based on a concept’s fMRI signature) to the de...
As an initial effort to identify universal and language-specific factors that influence the behavior...
A neural language model trained on a text corpus can be used to induce distributed representations o...
A neural language model trained on a text corpus can be used to induce distributed representations o...
Neural language models learn word representations that capture rich linguistic and conceptual inform...
Multilingual representations have mostly been evaluated based on their performance on specific tasks...
We study the role of the second language in bilingual word embeddings in monolingual semantic evalu...
Several researchers have put forward models of bilingual lexical representation based on extensions ...
Recent work has shown that neural models can be successfully trained on multiple languages simultane...
Representation learning is a research area within machine learning and natural language processing (...
The focus of this presentation is the following observation: words that are phonetically similar acr...
Assessing the semantic similarity between sentences in different languages is challenging. We approa...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
A review of empirical work suggests that the lexical representations of a bilingual’s two languages ...
This study extended cross-language semantic decoding (based on a concept’s fMRI signature) to the de...
As an initial effort to identify universal and language-specific factors that influence the behavior...