Scaling Up Differentially Private LASSO Regularized Logistic Regression via Faster Frank-Wolfe Iterations
2023-10-30NeurIPS 2023Unverified0· sign in to hype
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To the best of our knowledge, there are no methods today for training differentially private regression models on sparse input data. To remedy this, we adapt the Frank-Wolfe algorithm for L_1 penalized linear regression to be aware of sparse inputs and to use them effectively. In doing so, we reduce the training time of the algorithm from O( T D S + T N S) to O(N S + T D D + T S^2), where T is the number of iterations and a sparsity rate S of a dataset with N rows and D features. Our results demonstrate that this procedure can reduce runtime by a factor of up to 2,200, depending on the value of the privacy parameter and the sparsity of the dataset.