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Poster
in
Workshop: Mathematics of Modern Machine Learning (M3L)

Variational Classification

Shehzaad Dhuliawala · Mrinmaya Sachan · Carl Allen


Abstract:

We present variational classification (VC), a latent variable generalisation of neural network softmax classification under cross-entropy loss. Our approach provides a novel probabilistic interpretation of the highly familiar softmax classification model, to which it relates comparably to variational vs deterministic autoencoders. We derive a training objective based on the evidence lower bound (ELBO) that is non-trivial to optimize, and an adversarial approach to maximise it. We reveal an inherent inconsistency within softmax classification that VC addresses, while also allowing flexible choices of distributions in the latent space in place of assumptions implicit in standard softmax classifiers. Empirical evaluation demonstrates that VC maintains accuracy while improving properties such as calibration and adversarial robustness, particularly under distribution shift and low data settings. This work brings new theoretical insight to modern machine learning practice.

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