Progressive Ensemble Distillation: Building Ensembles for Efficient Inference

Abstract

We study the problem of progressive ensemble distillation: Given a large, pretrained teacher model g, we seek to decompose the model into smaller, low-inference cost student models fi, such that progressively evaluating additional models in this ensemble leads to improved predictions. The resulting ensemble allows for flexibly tuning accuracy vs. inference cost at runtime, which is useful for a number of applications in on-device inference. The method we propose, B-DISTIL , relies on an algorithmic procedure that uses function composition over intermediate activations to construct expressive ensembles with similar performance as g , but with smaller student models. We demonstrate the effectiveness of B-DISTIL by decomposing pretrained models across standard image, speech, and sensor datasets. We also provide theoretical guarantees in terms of convergence and generalization.

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