Hierarchical attention networks have recently achieved remarkable performance for document classification in a given language. However, when multilingual document collections are considered, training such models separately for each language entails linear parameter growth and lack of cross-language transfer. Learning a single multilingual model with fewer parameters is therefore a challenging but potentially beneficial objective. To this end, we propose multilingual hierarchical attention networks for learning document structures, with shared encoders and/or attention mechanisms across languages, using multi-task learning and an aligned semantic space as input. We evaluate the proposed models on multilingual document classification with dis...
6th Italian Information Retrieval Workshop, Cagliari, ITA, 25-/05/2015 - 26/05/2015International aud...
[[abstract]]With the increasing amount of multilingual texts in the Internet, multilingual text retr...
Funnelling (Fun) is a method for cross-lingual text classification (CLC) based on a two-tier ensembl...
Cross-lingual document retrieval, which aims to take a query in one language to retrieve relevant do...
Thesis (Master's)--University of Washington, 2018Sometimes, annotating data for text classification ...
We investigate the problem of learning document classifiers in a multilingual setting, from collecti...
Associative networks are a connectionist language model with the ability to categorize large sets of...
[[abstract]]With the increasing amount of multilingual texts in the Internet, multilingual text retr...
Cross language classification is an important task in multilingual learning, where documents in diff...
This article addresses the question of how to deal with text categorization when the set of document...
Associative networks are a connectionist language model with the ability to categorize large sets of...
Text classification must sometimes be applied in a low-resource language with no labeled training da...
Collecting parallel sentences from nonparallel data is a long-standing natural language processing r...
Multilingual Neural Machine Translation (MNMT) trains a single NMT model that supports translation b...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
6th Italian Information Retrieval Workshop, Cagliari, ITA, 25-/05/2015 - 26/05/2015International aud...
[[abstract]]With the increasing amount of multilingual texts in the Internet, multilingual text retr...
Funnelling (Fun) is a method for cross-lingual text classification (CLC) based on a two-tier ensembl...
Cross-lingual document retrieval, which aims to take a query in one language to retrieve relevant do...
Thesis (Master's)--University of Washington, 2018Sometimes, annotating data for text classification ...
We investigate the problem of learning document classifiers in a multilingual setting, from collecti...
Associative networks are a connectionist language model with the ability to categorize large sets of...
[[abstract]]With the increasing amount of multilingual texts in the Internet, multilingual text retr...
Cross language classification is an important task in multilingual learning, where documents in diff...
This article addresses the question of how to deal with text categorization when the set of document...
Associative networks are a connectionist language model with the ability to categorize large sets of...
Text classification must sometimes be applied in a low-resource language with no labeled training da...
Collecting parallel sentences from nonparallel data is a long-standing natural language processing r...
Multilingual Neural Machine Translation (MNMT) trains a single NMT model that supports translation b...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
6th Italian Information Retrieval Workshop, Cagliari, ITA, 25-/05/2015 - 26/05/2015International aud...
[[abstract]]With the increasing amount of multilingual texts in the Internet, multilingual text retr...
Funnelling (Fun) is a method for cross-lingual text classification (CLC) based on a two-tier ensembl...