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Modeling Hierarchical Structures with Continuous Recursive Neural Networks

A continuous relaxation of Recursive Neural Networks, CRvNN, outperforms traditional models in both synthetic and real-world natural language processing tasks by inducing latent structure without surrogate gradients or reinforcement learning.

Year
2021
Venue
arXiv 2021
Authors
2
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arxiv.org/abs/2106.06038ARXIV-DEFAULT
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Abstract

Recursive Neural Networks (RvNNs), which compose sequences according to their underlying hierarchical syntactic structure, have performed well in several natural language processing tasks compared to similar models without structural biases. However, traditional RvNNs are incapable of inducing the latent structure in a plain text sequence on their own. Several extensions have been proposed to overcome this limitation. Nevertheless, these extensions tend to rely on surrogate gradients or reinforcement learning at the cost of higher bias or variance. In this work, we propose Continuous Recursive Neural Network (CRvNN) as a backpropagation-friendly alternative to address the aforementioned limitations. This is done by incorporating a continuous relaxation to the induced structure. We demonstrate that CRvNN achieves strong performance in challenging synthetic tasks such as logical inference and ListOps. We also show that CRvNN performs comparably or better than prior latent structure models on real-world tasks such as sentiment analysis and natural language inference.

Authors

2