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Neural Attentive Bag-of-Entities Model for Text Classification

About

This study proposes a Neural Attentive Bag-of-Entities model, which is a neural network model that performs text classification using entities in a knowledge base. Entities provide unambiguous and relevant semantic signals that are beneficial for capturing semantics in texts. We combine simple high-recall entity detection based on a dictionary, to detect entities in a document, with a novel neural attention mechanism that enables the model to focus on a small number of unambiguous and relevant entities. We tested the effectiveness of our model using two standard text classification datasets (i.e., the 20 Newsgroups and R8 datasets) and a popular factoid question answering dataset based on a trivia quiz game. As a result, our model achieved state-of-the-art results on all datasets. The source code of the proposed model is available online at https://github.com/wikipedia2vec/wikipedia2vec.

Ikuya Yamada, Hiroyuki Shindo• 2019

Related benchmarks

TaskDatasetResultRank
Text ClassificationR8 (test)
Accuracy97.1
56
Factoid Question AnsweringHistory factoid QA (test)
Accuracy94.9
25
Factoid Question AnsweringQuiz Bowl Literature category
Accuracy98.5
16
Text Classification20 Newsgroups by-date (test)
Accuracy86.8
12
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