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Improving Generalization for Abstract Reasoning Tasks Using Disentangled Feature Representations

About

In this work we explore the generalization characteristics of unsupervised representation learning by leveraging disentangled VAE's to learn a useful latent space on a set of relational reasoning problems derived from Raven Progressive Matrices. We show that the latent representations, learned by unsupervised training using the right objective function, significantly outperform the same architectures trained with purely supervised learning, especially when it comes to generalization.

Xander Steenbrugge, Sam Leroux, Tim Verbelen, Bart Dhoedt• 2018

Related benchmarks

TaskDatasetResultRank
Abstract ReasoningPGM Attribute Pairs (val)
Accuracy70.1
5
Abstract ReasoningPGM Attribute Pairs (test)
Accuracy36.8
5
Abstract ReasoningPGM Triples (test)
Accuracy24.6
5
Abstract ReasoningPGM Triple Pairs (test)
Accuracy43.6
5
Abstract ReasoningPGM Neutral (val)
Accuracy64.8
5
Abstract ReasoningPGM Neutral (test)
Accuracy64.2
5
Abstract ReasoningPGM Triple Pairs (val)
Accuracy64.6
5
Abstract ReasoningPGM Triples (val)
Accuracy59.5
5
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