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The Impact of Negative Sampling on Contrastive Structured World Models

24 July 2021
Ondrej Biza
Elise van der Pol
Thomas Kipf
    DRLOffRL
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Abstract

World models trained by contrastive learning are a compelling alternative to autoencoder-based world models, which learn by reconstructing pixel states. In this paper, we describe three cases where small changes in how we sample negative states in the contrastive loss lead to drastic changes in model performance. In previously studied Atari datasets, we show that leveraging time step correlations can double the performance of the Contrastive Structured World Model. We also collect a full version of the datasets to study contrastive learning under a more diverse set of experiences.

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