Rolling out text analytics applications or individual components thereof to multiple input languages of interest requires scalable workflows and architectures that do not rely on manual annotation efforts or language-specific re-engineering per target language. These scalability challenges aggravate even further if specialized technical domains are targeted in multiple languages. In recent work, it has been shown that cross-lingual projection of sentiment models in deep learning frameworks based on bilingual sentiment embeddings (BLSE) is feasible without any annotated data in the target language, capitalizing on monolingual embeddings and a bilingual translation dictionary only (Barnes et al., 2018). We use their framework and apply it to ...
This paper investigates the significance of analyzing language preferences in personalized sentiment...
The unified framework for multi-language sentiment analysis is a vital aspect of understanding cust...
Deep learning methods have shown to be particularly effective in inferring the sentiment polarity of...
Sentiment analysis benefits from large, hand-annotated resources in order to train and test machine ...
We describe the use of linguistic linked data to support a cross-lingual transfer framework for sent...
markdownabstract__Abstract__ Many sentiment analysis methods rely on sentiment lexicons, containi...
Cross-lingual sentiment classification aims to leverage the rich sentiment resources in one language...
Many sentiment analysis methods rely on sentiment lexicons, containing words and their associated se...
Many sentiment analysis methods rely on sentiment lexicons, containing words and their associated se...
Sentiment analysis is currently a very dynamic field in Computational Linguistics. Research herein h...
The digitalization of almost all aspects of our everyday lives has led to unprecedented amounts of d...
Sentiment Analysis is a task that aims to calculate the polarity of text automatically. While some l...
Word embeddings represent words in a numeric space so that semantic relations between words are repr...
Identifying sentiment in a low-resource language is essential for understanding opinions internation...
We propose the creation and use of a multilingual parallel news corpus annotated with opinion toward...
This paper investigates the significance of analyzing language preferences in personalized sentiment...
The unified framework for multi-language sentiment analysis is a vital aspect of understanding cust...
Deep learning methods have shown to be particularly effective in inferring the sentiment polarity of...
Sentiment analysis benefits from large, hand-annotated resources in order to train and test machine ...
We describe the use of linguistic linked data to support a cross-lingual transfer framework for sent...
markdownabstract__Abstract__ Many sentiment analysis methods rely on sentiment lexicons, containi...
Cross-lingual sentiment classification aims to leverage the rich sentiment resources in one language...
Many sentiment analysis methods rely on sentiment lexicons, containing words and their associated se...
Many sentiment analysis methods rely on sentiment lexicons, containing words and their associated se...
Sentiment analysis is currently a very dynamic field in Computational Linguistics. Research herein h...
The digitalization of almost all aspects of our everyday lives has led to unprecedented amounts of d...
Sentiment Analysis is a task that aims to calculate the polarity of text automatically. While some l...
Word embeddings represent words in a numeric space so that semantic relations between words are repr...
Identifying sentiment in a low-resource language is essential for understanding opinions internation...
We propose the creation and use of a multilingual parallel news corpus annotated with opinion toward...
This paper investigates the significance of analyzing language preferences in personalized sentiment...
The unified framework for multi-language sentiment analysis is a vital aspect of understanding cust...
Deep learning methods have shown to be particularly effective in inferring the sentiment polarity of...