We present a character-based model for joint segmentation and POS tagging for Chinese. The bidirectional RNN-CRF architecture for general sequence tagging is adapted and applied with novel vector representations of Chinese characters that capture rich contextual information and sub-character level features. The proposed model is extensively evaluated and compared with a state-of-the-art tagger respectively on CTB5, CTB9 and UD Chinese. The experimental results indicate that our model is accurate and robust across datasets in different sizes, genres and annotation schemes. We obtain stateof-the-art performance on CTB5, achieving 94.38 F1-score for joint segmentation and POS tagging
In order to achieve state-of-the-art performance for part-of-speech(POS) tagging, the traditional sy...
In this paper, we propose a joint model for unsupervised Chinese word segmentation (CWS). Inspired b...
This thesis proposes an approach to generating n-gram features for Conditional Random Fields (CRFs) ...
We present a character-based model for joint segmentation and POS tagging for Chinese. The bidirecti...
This study explores the feasibility of perform-ing Chinese word segmentation (CWS) and POS tagging b...
Chinese word segmentation and part-of-speech tagging (S&T) are fundamental steps for more advanc...
Abstract Background Chinese word segmentation (CWS) and part-of-speech (POS) tagging are two fundame...
This paper describes the system that we use for Chinese segmentation task in the 3rd CIPS-SIGHAN bak...
From the perspective of structural linguistics, we explore paradigmatic and syntagmatic lexical rela...
Recent research usually models POS tag-ging as a sequential labeling problem, in which only local co...
Chinese word segmentation is a difficult, important and widely-studied sequence modeling problem. Th...
This article presents a new sequence labeling model named Context OVerlapping (COV) model, which exp...
We propose three improvements to ad-dress the drawbacks of state-of-the-art transition-based constit...
Abstract. This paper describes our system designed for the NLPCC 2015 shared task on Chinese word se...
Current character-based approaches are not robust for cross domain Chinese word segmentation. In thi...
In order to achieve state-of-the-art performance for part-of-speech(POS) tagging, the traditional sy...
In this paper, we propose a joint model for unsupervised Chinese word segmentation (CWS). Inspired b...
This thesis proposes an approach to generating n-gram features for Conditional Random Fields (CRFs) ...
We present a character-based model for joint segmentation and POS tagging for Chinese. The bidirecti...
This study explores the feasibility of perform-ing Chinese word segmentation (CWS) and POS tagging b...
Chinese word segmentation and part-of-speech tagging (S&T) are fundamental steps for more advanc...
Abstract Background Chinese word segmentation (CWS) and part-of-speech (POS) tagging are two fundame...
This paper describes the system that we use for Chinese segmentation task in the 3rd CIPS-SIGHAN bak...
From the perspective of structural linguistics, we explore paradigmatic and syntagmatic lexical rela...
Recent research usually models POS tag-ging as a sequential labeling problem, in which only local co...
Chinese word segmentation is a difficult, important and widely-studied sequence modeling problem. Th...
This article presents a new sequence labeling model named Context OVerlapping (COV) model, which exp...
We propose three improvements to ad-dress the drawbacks of state-of-the-art transition-based constit...
Abstract. This paper describes our system designed for the NLPCC 2015 shared task on Chinese word se...
Current character-based approaches are not robust for cross domain Chinese word segmentation. In thi...
In order to achieve state-of-the-art performance for part-of-speech(POS) tagging, the traditional sy...
In this paper, we propose a joint model for unsupervised Chinese word segmentation (CWS). Inspired b...
This thesis proposes an approach to generating n-gram features for Conditional Random Fields (CRFs) ...