Many NLP and IR applications require semantic classification knowledge of words. However, manually constructing semantic classes is a time-consuming and labor-intensive task. In this paper, we present an algorithm for induction of Chinese semantic classes from natural language text based on coordinate patterns. First, several coordinate patterns are proposed to harvest high-quality coordinate instance. Second, an iterative clustering process is used to cluster words into semantic classes. The clustering process mainly used coordinate relation between words. Experiment results show that the proposed approach performs relatively well and achieves 53.2% in terms of precision. Finally, a thesaurus containing about 15000 Chinese words is generat...
Deep semantic parsing is the key to understand sentence meaning. This paper integrates some Chinese ...
In this paper, we attempt to automatically annotate the Penn Chinese Treebank with semantic dependen...
AbstractData mining has become crucial in modern science and industry. Data mining problems raise in...
A semantic class is a collection of terms which share similar meaning. Knowing the semantic classes ...
In this paper, we introduce a kind of descriptive structure, the deep coordinate structure, which un...
A Chinese character embedded in different compound words may carry different meanings. In this paper...
Recent studies on word sense induction (WSI) mainly concentrate on European languages, Chinese word ...
In this paper, we propose a soft-decision, unsupervised clus-tering algorithm that generates semanti...
[[abstract]]WordNet-like databases have become crucial sources for lexical semantic studies and comp...
In this paper, an unsupervised semantic class induction algorithm is proposed that is based on the p...
We propose cw2vec, a novel method for learning Chinese word embeddings. It is based on our observati...
Automatic identification of coordinate structure is a challenging task for sentence analysis in natu...
Semantic relations of different types have played an important role in wordnet, and have been widely...
Chinese texts are character-based, not word-based, and there is no boundary mark between words in Ch...
Lexical semantic information plays an important role in supervised dependency parsing. In this paper...
Deep semantic parsing is the key to understand sentence meaning. This paper integrates some Chinese ...
In this paper, we attempt to automatically annotate the Penn Chinese Treebank with semantic dependen...
AbstractData mining has become crucial in modern science and industry. Data mining problems raise in...
A semantic class is a collection of terms which share similar meaning. Knowing the semantic classes ...
In this paper, we introduce a kind of descriptive structure, the deep coordinate structure, which un...
A Chinese character embedded in different compound words may carry different meanings. In this paper...
Recent studies on word sense induction (WSI) mainly concentrate on European languages, Chinese word ...
In this paper, we propose a soft-decision, unsupervised clus-tering algorithm that generates semanti...
[[abstract]]WordNet-like databases have become crucial sources for lexical semantic studies and comp...
In this paper, an unsupervised semantic class induction algorithm is proposed that is based on the p...
We propose cw2vec, a novel method for learning Chinese word embeddings. It is based on our observati...
Automatic identification of coordinate structure is a challenging task for sentence analysis in natu...
Semantic relations of different types have played an important role in wordnet, and have been widely...
Chinese texts are character-based, not word-based, and there is no boundary mark between words in Ch...
Lexical semantic information plays an important role in supervised dependency parsing. In this paper...
Deep semantic parsing is the key to understand sentence meaning. This paper integrates some Chinese ...
In this paper, we attempt to automatically annotate the Penn Chinese Treebank with semantic dependen...
AbstractData mining has become crucial in modern science and industry. Data mining problems raise in...