Title :
Deep learning of knowledge graph embeddings for semantic parsing of Twitter dialogs
Author :
Heck, Larry ; Hongzhao Huang
Abstract :
This paper presents a novel method to learn neural knowledge graph embeddings. The embeddings are used to compute semantic relatedness in a coherence-based semantic parser. The approach learns embeddings directly from structured knowledge representations. A deep neural network approach known as Deep Structured Semantic Modeling (DSSM) is used to scale the approach to learn neural embeddings for all of the concepts (pages) of Wikipedia. Experiments on Twitter dialogs show a 23.6% reduction in semantic parsing errors compared to the state-of-the-art unsupervised approach.
Keywords :
learning (artificial intelligence); natural language processing; neural nets; social networking (online); DSSM approach; Twitter dialogs; Wikipedia; coherence-based semantic parser; deep learning; deep neural network approach; deep structured semantic modeling; neural embedding learning; neural knowledge graph embeddings; semantic parsing; semantic parsing error reduction; semantic relatedness; Electronic publishing; Encyclopedias; Internet; Semantics; Speech processing; Vectors; Twitter; deep learning; dialog; semantic parsing;
Conference_Titel :
Signal and Information Processing (GlobalSIP), 2014 IEEE Global Conference on
Conference_Location :
Atlanta, GA
DOI :
10.1109/GlobalSIP.2014.7032187