Traditional approaches to supervised learning require a generous amount of labeled data for good generalization. While such annotation-heavy approaches have proven useful for some Natural Language Processing (NLP) tasks in high-resource languages (like English), they are unlikely to scale to languages where collecting labeled data is di cult and time-consuming. Translating supervision available in English is also not a viable solution, because developing a good machine translation system requires expensive to annotate resources which are not available for most languages. In this thesis, I argue that cross-lingual representations are an effective means of extending NLP tools to languages beyond English without resorting to generous amounts o...
Creating a language-independent meaning representation would benefit many cross-lingual NLP tasks. W...
In this paper, we explore a multilingual translation model with a cross-lingually shared layer that ...
Jiawei ZhaoCurrent machine translation techniques were developed using predominantly rich resource l...
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...
In the modern era of deep learning, developing natural language processing (NLP) systems require lar...
Thesis (Ph.D.)--University of Washington, 2022Modern NLP systems have been highly successful at a wi...
Abstract: The subject area of multilingual natural language processing (NLP) is concerned with the p...
NLP systems typically require support for more than one language. As different languages have differ...
State-of-the-art approaches to most Natural Language Processing (NLP) tasks have achieved near huma...
Addressing the cross-lingual variation of grammatical structures and meaning categorization is a key...
Large-scale annotated datasets are an indispensable ingredient of modern Natural Language Processing...
This article addresses the question of how to deal with text categorization when the set of document...
Cross-lingual Learning can help to bring state-of-the-art deep learning solutions to smaller languag...
∗ Both authors contributed equally Cross-language learning allows one to use training data from one ...
Creating a language-independent meaning representation would benefit many cross-lingual NLP tasks. W...
In this paper, we explore a multilingual translation model with a cross-lingually shared layer that ...
Jiawei ZhaoCurrent machine translation techniques were developed using predominantly rich resource l...
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...
In the modern era of deep learning, developing natural language processing (NLP) systems require lar...
Thesis (Ph.D.)--University of Washington, 2022Modern NLP systems have been highly successful at a wi...
Abstract: The subject area of multilingual natural language processing (NLP) is concerned with the p...
NLP systems typically require support for more than one language. As different languages have differ...
State-of-the-art approaches to most Natural Language Processing (NLP) tasks have achieved near huma...
Addressing the cross-lingual variation of grammatical structures and meaning categorization is a key...
Large-scale annotated datasets are an indispensable ingredient of modern Natural Language Processing...
This article addresses the question of how to deal with text categorization when the set of document...
Cross-lingual Learning can help to bring state-of-the-art deep learning solutions to smaller languag...
∗ Both authors contributed equally Cross-language learning allows one to use training data from one ...
Creating a language-independent meaning representation would benefit many cross-lingual NLP tasks. W...
In this paper, we explore a multilingual translation model with a cross-lingually shared layer that ...
Jiawei ZhaoCurrent machine translation techniques were developed using predominantly rich resource l...