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Chinese Word Segmentation

Chinese word segmentation is the task of splitting Chinese text (i.e. a sequence of Chinese characters) into words (Source: www.nlpprogress.com).

Papers

Showing 51100 of 244 papers

TitleStatusHype
MVP-BERT: Multi-Vocab Pre-training for Chinese BERT0
Exploring Word Segmentation and Medical Concept Recognition for Chinese Medical TextsCode0
Bidirectional LSTM-CRF Attention-based Model for Chinese Word Segmentation0
A More Efficient Chinese Named Entity Recognition base on BERT and Syntactic Analysis0
Segmenting Natural Language Sentences via Lexical Unit Analysis0
Multi-grained Chinese Word Segmentation with Weakly Labeled Data0
Towards Fast and Accurate Neural Chinese Word Segmentation with Multi-Criteria Learning0
Context-Aware Word Segmentation for Chinese Real-World Discourse0
MVP-BERT: Redesigning Vocabularies for Chinese BERT and Multi-Vocab Pretraining0
A Joint Multiple Criteria Model in Transfer Learning for Cross-domain Chinese Word Segmentation0
Pre-training with Meta Learning for Chinese Word Segmentation0
A Joint Model for Graph-based Chinese Dependency Parsing0
Approaching Neural Chinese Word Segmentation as a Low-Resource Machine Translation TaskCode0
Neural Graph Matching Networks for Chinese Short Text Matching0
Incorporating Uncertain Segmentation Information into Chinese NER for Social Media Text0
Unified Multi-Criteria Chinese Word Segmentation with BERT0
Integrating Boundary Assembling into a DNN Framework for Named Entity Recognition in Chinese Social Media Text0
A New Clustering neural network for Chinese word segmentation0
Neural Chinese Word Segmentation as Sequence to Sequence TranslationCode0
Attention Is All You Need for Chinese Word SegmentationCode0
BERT Meets Chinese Word Segmentation0
NE-LP: Normalized Entropy and Loss Prediction based Sampling for Active Learning in Chinese Word Segmentation on EHRs0
Investigating Self-Attention Network for Chinese Word SegmentationCode0
A Concise Model for Multi-Criteria Chinese Word Segmentation with Transformer EncoderCode0
PKUSEG: A Toolkit for Multi-Domain Chinese Word SegmentationCode0
Shrinking Japanese Morphological Analyzers With Neural Networks and Semi-supervised Learning0
A Seq-to-Seq Transformer Premised Temporal Convolutional Network for Chinese Word Segmentation0
A realistic and robust model for Chinese word segmentation0
Is Word Segmentation Necessary for Deep Learning of Chinese Representations?0
Neural Chinese Word Segmentation with Lexicon and Unlabeled Data via Posterior Regularization0
A Graph-based Model for Joint Chinese Word Segmentation and Dependency ParsingCode0
Toward Fast and Accurate Neural Chinese Word Segmentation with Multi-Criteria Learning0
Improving Cross-Domain Chinese Word Segmentation with Word EmbeddingsCode0
Glyce: Glyph-vectors for Chinese Character RepresentationsCode0
Chinese Word Segmentation: Another Decade Review (2007-2017)0
Robust Chinese Word Segmentation with Contextualized Word Representations0
Switch-LSTMs for Multi-Criteria Chinese Word Segmentation0
Hyperbolic Deep Learning for Chinese Natural Language Understanding0
Fast Neural Chinese Word Segmentation for Long Sentences0
Simplifying Neural Machine Translation with Addition-Subtraction Twin-Gated Recurrent NetworksCode0
Subword Encoding in Lattice LSTM for Chinese Word SegmentationCode0
Unsupervised Neural Word Segmentation for Chinese via Segmental Language ModelingCode0
Sanskrit Sandhi Splitting using seq2(seq)20
An Empirical Study of Machine Translation for the Shared Task of WMT180
Adversarial Transfer Learning for Chinese Named Entity Recognition with Self-Attention MechanismCode0
AISHELL-2: Transforming Mandarin ASR Research Into Industrial Scale0
State-of-the-art Chinese Word Segmentation with Bi-LSTMsCode0
Multiple Character Embeddings for Chinese Word Segmentation0
From Chinese Word Segmentation to Extraction of Constructions: Two Sides of the Same Algorithmic Coin0
Adaptive Multi-Task Transfer Learning for Chinese Word Segmentation in Medical TextCode0
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