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.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Text Classification | R8 (test) | Accuracy97.1 | 56 | |
| Factoid Question Answering | History factoid QA (test) | Accuracy94.9 | 25 | |
| Factoid Question Answering | Quiz Bowl Literature category | Accuracy98.5 | 16 | |
| Text Classification | 20 Newsgroups by-date (test) | Accuracy86.8 | 12 |