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A survey of the usages of deep learning for natural language processing
Over the last several years, the field of natural language processing has been propelled
forward by an explosion in the use of deep learning models. This article provides a brief …
forward by an explosion in the use of deep learning models. This article provides a brief …
Grammar as a foreign language
Syntactic constituency parsing is a fundamental problem in naturallanguage processing
which has been the subject of intensive researchand engineering for decades. As a result …
which has been the subject of intensive researchand engineering for decades. As a result …
A survey of syntactic-semantic parsing based on constituent and dependency structures
M Zhang - Science China Technological Sciences, 2020 - Springer
Syntactic and semantic parsing has been investigated for decades, which is one primary
topic in the natural language processing community. This article aims for a brief survey on …
topic in the natural language processing community. This article aims for a brief survey on …
Is one annotation enough?-a data-centric image classification benchmark for noisy and ambiguous label estimation
High-quality data is necessary for modern machine learning. However, the acquisition of
such data is difficult due to noisy and ambiguous annotations of humans. The aggregation of …
such data is difficult due to noisy and ambiguous annotations of humans. The aggregation of …
Structured training for neural network transition-based parsing
We present structured perceptron training for neural network transition-based dependency
parsing. We learn the neural network representation using a gold corpus augmented by a …
parsing. We learn the neural network representation using a gold corpus augmented by a …
Dependency parsing as head selection
Conventional graph-based dependency parsers guarantee a tree structure both during
training and inference. Instead, we formalize dependency parsing as the problem of …
training and inference. Instead, we formalize dependency parsing as the problem of …
Semi-supervised domain adaptation for dependency parsing
During the past decades, due to the lack of sufficient labeled data, most studies on cross-
domain parsing focus on unsupervised domain adaptation, assuming there is no target …
domain parsing focus on unsupervised domain adaptation, assuming there is no target …
[PDF][PDF] Parsing as language modeling
E Charniak - Proceedings of the 2016 Conference on Empirical …, 2016 - aclanthology.org
We recast syntactic parsing as a language modeling problem and use recent advances in
neural network language modeling to achieve a new state of the art for constituency Penn …
neural network language modeling to achieve a new state of the art for constituency Penn …
[PDF][PDF] Probabilistic graph-based dependency parsing with convolutional neural network
This paper presents neural probabilistic parsing models which explore up to thirdorder
graph-based parsing with maximum likelihood training criteria. Two neural network …
graph-based parsing with maximum likelihood training criteria. Two neural network …
Word-context character embeddings for chinese word segmentation
Neural parsers have benefited from automatically labeled data via dependency-context
word embeddings. We investigate training character embeddings on a word-based context …
word embeddings. We investigate training character embeddings on a word-based context …