From Adaptive Query Release to Machine Unlearning
Enayat Ullah, Raman Arora

TL;DR
This paper develops efficient algorithms for machine unlearning by formalizing it as an adaptive query release problem, providing improved guarantees for stochastic convex optimization and extending to dynamic data streams.
Contribution
It introduces novel unlearning algorithms for structured query classes, improving guarantees for stochastic convex optimization and generalizing to dynamic data streams.
Findings
Efficient unlearning algorithms for linear and prefix-sum query classes.
Improved risk bounds for unlearning in stochastic convex optimization.
Dimension-independent rates for generalized linear models.
Abstract
We formalize the problem of machine unlearning as design of efficient unlearning algorithms corresponding to learning algorithms which perform a selection of adaptive queries from structured query classes. We give efficient unlearning algorithms for linear and prefix-sum query classes. As applications, we show that unlearning in many problems, in particular, stochastic convex optimization (SCO), can be reduced to the above, yielding improved guarantees for the problem. In particular, for smooth Lipschitz losses and any , our results yield an unlearning algorithm with excess population risk of with unlearning query (gradient) complexity , where is the model dimensionality and is the initial number of samples. For non-smooth Lipschitz losses, we give an…
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Taxonomy
TopicsStochastic Gradient Optimization Techniques · Machine Learning and Algorithms · Sparse and Compressive Sensing Techniques
