Learning beyond datasets: Knowledge Graph Augmented Neural Networks for Natural language Processing
Machine Learning has been the quintessential solution for many AI problems, but learning is still heavily dependent on the specific training data. Some learning models can be incorporated with a prior knowledge in the Bayesian set up, but these learning models do not have the ability to access any o...
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Zusammenfassung: | Machine Learning has been the quintessential solution for many AI problems,
but learning is still heavily dependent on the specific training data. Some
learning models can be incorporated with a prior knowledge in the Bayesian set
up, but these learning models do not have the ability to access any organised
world knowledge on demand. In this work, we propose to enhance learning models
with world knowledge in the form of Knowledge Graph (KG) fact triples for
Natural Language Processing (NLP) tasks. Our aim is to develop a deep learning
model that can extract relevant prior support facts from knowledge graphs
depending on the task using attention mechanism. We introduce a
convolution-based model for learning representations of knowledge graph entity
and relation clusters in order to reduce the attention space. We show that the
proposed method is highly scalable to the amount of prior information that has
to be processed and can be applied to any generic NLP task. Using this method
we show significant improvement in performance for text classification with
News20, DBPedia datasets and natural language inference with Stanford Natural
Language Inference (SNLI) dataset. We also demonstrate that a deep learning
model can be trained well with substantially less amount of labeled training
data, when it has access to organised world knowledge in the form of knowledge
graph. |
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DOI: | 10.48550/arxiv.1802.05930 |