Representing the semantics of words is a fundamental task in text processing. Several research studies have shown that text and knowledge bases (KBs) are complementary sources for word embedding learning. Most existing methods only consider relationships within word-pairs in the usage of KBs. We argue that the structural information of well-organized words within the KBs is able to convey more effective and stable knowledge in capturing semantics of words. In this paper, we propose a semantic structure-based word embedding method, and introduce concept convergence and word divergence to reveal semantic structures in the word embedding learning process. To assess the effectiveness of our method, we use WordNet for training and conduct extens...
Evaluating semantic similarity of texts is a task that assumes paramount importance in real-world ap...
Evaluating semantic similarity of texts is a task that assumes paramount importance in real-world ap...
Word embedding approaches increased the efficiency of natural language processing (NLP) tasks. Tradi...
Copyright © 2018, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rig...
Methods for representing the meaning of words in vector spaces purely using the information distribu...
Word embedding techniques in literature are mostly based on Bag of Words models where words that co-...
Abstract Background In the past few years, neural word embeddings have been widely used in text mini...
The semantic representation of words is a fundamental task in natural language processing and text m...
Text and Knowledge Bases are complementary sources of information. Given the success of distributed ...
Much recent work focuses on leveraging semantic lexicons like WordNet to enhance word representation...
Methods for learning word representations using large text corpora have received much attention late...
The existing word embedding techniques are mostly based on Bag of Words models where words that co-...
Neural network techniques are widely applied to obtain high-quality distributed representations of w...
Word embeddings have recently gained considerable popularity for modeling words in different Natural...
Determining semantic similarity between texts is important in many tasks in information retrieval su...
Evaluating semantic similarity of texts is a task that assumes paramount importance in real-world ap...
Evaluating semantic similarity of texts is a task that assumes paramount importance in real-world ap...
Word embedding approaches increased the efficiency of natural language processing (NLP) tasks. Tradi...
Copyright © 2018, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rig...
Methods for representing the meaning of words in vector spaces purely using the information distribu...
Word embedding techniques in literature are mostly based on Bag of Words models where words that co-...
Abstract Background In the past few years, neural word embeddings have been widely used in text mini...
The semantic representation of words is a fundamental task in natural language processing and text m...
Text and Knowledge Bases are complementary sources of information. Given the success of distributed ...
Much recent work focuses on leveraging semantic lexicons like WordNet to enhance word representation...
Methods for learning word representations using large text corpora have received much attention late...
The existing word embedding techniques are mostly based on Bag of Words models where words that co-...
Neural network techniques are widely applied to obtain high-quality distributed representations of w...
Word embeddings have recently gained considerable popularity for modeling words in different Natural...
Determining semantic similarity between texts is important in many tasks in information retrieval su...
Evaluating semantic similarity of texts is a task that assumes paramount importance in real-world ap...
Evaluating semantic similarity of texts is a task that assumes paramount importance in real-world ap...
Word embedding approaches increased the efficiency of natural language processing (NLP) tasks. Tradi...