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Evaluation of Latent Space Disentanglement in the Presence of Interdependent Attributes

2021-10-11Code Available0· sign in to hype

Karn N. Watcharasupat, Alexander Lerch

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Abstract

Controllable music generation with deep generative models has become increasingly reliant on disentanglement learning techniques. However, current disentanglement metrics, such as mutual information gap (MIG), are often inadequate and misleading when used for evaluating latent representations in the presence of interdependent semantic attributes often encountered in real-world music datasets. In this work, we propose a dependency-aware information metric as a drop-in replacement for MIG that accounts for the inherent relationship between semantic attributes.

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