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WorldCist'17 - 5th World Conference on Information Systems and Technologies

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Semantic Capture Analysis in Word Embedding Vectors using Convolutional Neural Network

The semantic relation detection among entities from unstructured text is an important task in automatic knowledge construction to discover new knowledge. Word embeddings have been successful in capturing semantic relations among entities in unstructured text. In this work we propose to use WordNet as a knowledge base to extract semantic relations among entities and measure how well word embeddings vectors capture semantic regularities by themselves, using state-of-art classification model to detect semantic relations. We present semantic relation capture f-measure score in word embedding vectors of 94.9\%, the semantic relations addressed in this work are taxonomic relations hypernym-hyponym and part-of relations holonym-meronym.

Author(s):

Raúl Navarro-Almanza    
Universidad Autónoma de Baja California
Mexico

Guillermo Licea    
Universidad Autónoma de Baja California
Mexico

Reyes Juárez-Ramírez    
Universidad Autónoma de Baja California
Mexico

Olivia Mendoza    
Universidad Autónoma de Baja California
Mexico

 

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