Much recent work focuses on leveraging semantic lexicons like WordNet to enhance word representation learning (WRL) and achieves promising performance on many NLP tasks. However, most existing methods might have limitations because they require high-quality, manually created, semantic lexicons or linguistic structures. In this paper, we propose to leverage semantic knowledge automatically mined from web structured data to enhance WRL. We first construct a semantic similarity graph, which is referred as semantic knowledge, based on a large collection of semantic lists extracted from the web using several pre-defined HTML tag patterns. Then we introduce an efficient joint word representation learning model to capture semantics from both seman...
This paper investigates the determination of semantic similarity by the incorporation of structural ...
This paper investigates the determination of semantic similarity by the incorporation of structural ...
This paper investigates the determination of semantic similarity by the incorporation of structural ...
Methods for learning word representations using large text corpora have received much attention late...
Representing the semantics of words is a fundamental task in text processing. Several research studi...
Attributes of words and relations between two words are central to numerous tasks in Artificial Inte...
Text and Knowledge Bases are complementary sources of information. Given the success of distributed ...
Copyright © 2018, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rig...
Representation learning is a research area within machine learning and natural language processing (...
Word embeddings have recently gained considerable popularity for modeling words in different Natural...
The past decade has seen the emergence of web-scale structured and linked semantic knowledge resourc...
Open-text semantic parsers are designed to interpret any statement in natural language by inferring ...
Methods for representing the meaning of words in vector spaces purely using the information distribu...
We propose a novel methodology for extracting semantic similarity knowledge from semi-structured sou...
This paper investigates the determination of semantic similarity by the incorporation of structural ...
This paper investigates the determination of semantic similarity by the incorporation of structural ...
This paper investigates the determination of semantic similarity by the incorporation of structural ...
This paper investigates the determination of semantic similarity by the incorporation of structural ...
Methods for learning word representations using large text corpora have received much attention late...
Representing the semantics of words is a fundamental task in text processing. Several research studi...
Attributes of words and relations between two words are central to numerous tasks in Artificial Inte...
Text and Knowledge Bases are complementary sources of information. Given the success of distributed ...
Copyright © 2018, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rig...
Representation learning is a research area within machine learning and natural language processing (...
Word embeddings have recently gained considerable popularity for modeling words in different Natural...
The past decade has seen the emergence of web-scale structured and linked semantic knowledge resourc...
Open-text semantic parsers are designed to interpret any statement in natural language by inferring ...
Methods for representing the meaning of words in vector spaces purely using the information distribu...
We propose a novel methodology for extracting semantic similarity knowledge from semi-structured sou...
This paper investigates the determination of semantic similarity by the incorporation of structural ...
This paper investigates the determination of semantic similarity by the incorporation of structural ...
This paper investigates the determination of semantic similarity by the incorporation of structural ...
This paper investigates the determination of semantic similarity by the incorporation of structural ...