Contemporary approaches to natural language processing are predominantly based on statistical machine learning from large amounts of text, which has been manually annotated with the linguistic structure of interest. However, such complete supervision is currently only available for the world's major languages, in a limited number of domains and for a limited range of tasks. As an alternative, this dissertation considers methods for linguistic structure prediction that can make use of incomplete and cross-lingual supervision, with the prospect of making linguistic processing tools more widely available at a lower cost. An overarching theme of this work is the use of structured discriminative latent variable models for learning with indirect ...
Cross-lingual text classification is the task of assigning labels to observed documents in a label-s...
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...
Contemporary approaches to natural language processing are predominantly based on statistical machin...
We describe a method for prediction of linguistic structure in a language for which only unlabeled d...
A major part of natural language processing now depends on the use of text data to build linguistic ...
Addressing the cross-lingual variation of grammatical structures and meaning categorization is a key...
Discovering the structure of natural language sentences by semi-supervised methods Rudolf Rosa In th...
It has been established that incorporating word cluster features derived from large unlabeled corpor...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
Cross-lingual models trained on source language tasks possess the capability to directly transfer to...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
Cross-lingual text classification is the task of assigning labels to observed documents in a label-sc...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
State-of-the-art approaches to most Natural Language Processing (NLP) tasks have achieved near huma...
Cross-lingual text classification is the task of assigning labels to observed documents in a label-s...
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...
Contemporary approaches to natural language processing are predominantly based on statistical machin...
We describe a method for prediction of linguistic structure in a language for which only unlabeled d...
A major part of natural language processing now depends on the use of text data to build linguistic ...
Addressing the cross-lingual variation of grammatical structures and meaning categorization is a key...
Discovering the structure of natural language sentences by semi-supervised methods Rudolf Rosa In th...
It has been established that incorporating word cluster features derived from large unlabeled corpor...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
Cross-lingual models trained on source language tasks possess the capability to directly transfer to...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
Cross-lingual text classification is the task of assigning labels to observed documents in a label-sc...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
State-of-the-art approaches to most Natural Language Processing (NLP) tasks have achieved near huma...
Cross-lingual text classification is the task of assigning labels to observed documents in a label-s...
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...