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Papers/Representation Learning of Entities and Documents from Kno...

Representation Learning of Entities and Documents from Knowledge Base Descriptions

Ikuya Yamada, Hiroyuki Shindo, Yoshiyasu Takefuji

2018-06-08COLING 2018 8Text ClassificationRepresentation Learningtext-classificationGeneral ClassificationEntity Typing
PaperPDFCode(official)Code(official)

Abstract

In this paper, we describe TextEnt, a neural network model that learns distributed representations of entities and documents directly from a knowledge base (KB). Given a document in a KB consisting of words and entity annotations, we train our model to predict the entity that the document describes and map the document and its target entity close to each other in a continuous vector space. Our model is trained using a large number of documents extracted from Wikipedia. The performance of the proposed model is evaluated using two tasks, namely fine-grained entity typing and multiclass text classification. The results demonstrate that our model achieves state-of-the-art performance on both tasks. The code and the trained representations are made available online for further academic research.

Results

TaskDatasetMetricValueModel
Text ClassificationR8Accuracy96.7TextEnt-full
Text ClassificationR8F-measure91TextEnt-full
Text Classification20NEWSAccuracy84.5TextEnt-full
Text Classification20NEWSF-measure83.9TextEnt-full
Entity TypingFreebase FIGERAccuracy37.4TextEnt-full
Entity TypingFreebase FIGERBEP94.8TextEnt-full
Entity TypingFreebase FIGERMacro F184.2TextEnt-full
Entity TypingFreebase FIGERMicro F185.7TextEnt-full
Entity TypingFreebase FIGERP@193.2TextEnt-full
ClassificationR8Accuracy96.7TextEnt-full
ClassificationR8F-measure91TextEnt-full
Classification20NEWSAccuracy84.5TextEnt-full
Classification20NEWSF-measure83.9TextEnt-full

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