Previously, researchers paid no attention to the creation of unambiguous morpheme embeddings independent from the corpus, while such information plays an important role in expressing the exact meanings of words for parataxis languages like Chinese. In this paper, after constructing the Chinese lexical and semantic ontology based on word-formation, we propose a novel approach to implanting the structured rational knowledge into distributed representation at morpheme level, naturally avoiding heavy disambiguation in the corpus. We design a template to create the instances as pseudo-sentences merely from the pieces of knowledge of morphemes built in the lexicon. To exploit hierarchical information and tackle the data sparseness problem, the in...
Semantic relations of different types have played an important role in wordnet, and have been widely...
Combined with neural language models, distributed word representations achieve significant advantage...
Representing the semantics of words is a fundamental task in text processing. Several research studi...
We propose cw2vec, a novel method for learning Chinese word embeddings. It is based on our observati...
Distributed word representations capture relational similarities by means of vec-tor arithmetics, gi...
In this paper we propose a novel word representation for Chinese based on a state-of-the-art word em...
Distributional Similarity has attracted considerable attention in the field of natural language proc...
Distributional Similarity has attracted considerable attention in the field of natural language proc...
A Chinese character embedded in different compound words may carry different meanings. In this paper...
The techniques of using neural networks to learn distributed word representations (i.e., word embedd...
Representation learning is a research area within machine learning and natural language processing (...
Summarization: In this thesis, motivated by evidences in psycholinguistics and cognition, we propose...
A semantic class is a collection of terms which share similar meaning. Knowing the semantic classes ...
Recent work has shown success in learning word embeddings with neural network language models (NNLM)...
A morphological family in Chinese is the set of compound words embedding a common morpheme. Self-org...
Semantic relations of different types have played an important role in wordnet, and have been widely...
Combined with neural language models, distributed word representations achieve significant advantage...
Representing the semantics of words is a fundamental task in text processing. Several research studi...
We propose cw2vec, a novel method for learning Chinese word embeddings. It is based on our observati...
Distributed word representations capture relational similarities by means of vec-tor arithmetics, gi...
In this paper we propose a novel word representation for Chinese based on a state-of-the-art word em...
Distributional Similarity has attracted considerable attention in the field of natural language proc...
Distributional Similarity has attracted considerable attention in the field of natural language proc...
A Chinese character embedded in different compound words may carry different meanings. In this paper...
The techniques of using neural networks to learn distributed word representations (i.e., word embedd...
Representation learning is a research area within machine learning and natural language processing (...
Summarization: In this thesis, motivated by evidences in psycholinguistics and cognition, we propose...
A semantic class is a collection of terms which share similar meaning. Knowing the semantic classes ...
Recent work has shown success in learning word embeddings with neural network language models (NNLM)...
A morphological family in Chinese is the set of compound words embedding a common morpheme. Self-org...
Semantic relations of different types have played an important role in wordnet, and have been widely...
Combined with neural language models, distributed word representations achieve significant advantage...
Representing the semantics of words is a fundamental task in text processing. Several research studi...