Almost Linear Constant-Factor Sketching for $\ell_1$ and Logistic Regression
March 31, 2023 Β· Declared Dead Β· π International Conference on Learning Representations
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Authors
Alexander Munteanu, Simon Omlor, David Woodruff
arXiv ID
2304.00051
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.LG,
stat.ML
Citations
8
Venue
International Conference on Learning Representations
Last Checked
4 months ago
Abstract
We improve upon previous oblivious sketching and turnstile streaming results for $\ell_1$ and logistic regression, giving a much smaller sketching dimension achieving $O(1)$-approximation and yielding an efficient optimization problem in the sketch space. Namely, we achieve for any constant $c>0$ a sketching dimension of $\tilde{O}(d^{1+c})$ for $\ell_1$ regression and $\tilde{O}(ΞΌd^{1+c})$ for logistic regression, where $ΞΌ$ is a standard measure that captures the complexity of compressing the data. For $\ell_1$-regression our sketching dimension is near-linear and improves previous work which either required $Ξ©(\log d)$-approximation with this sketching dimension, or required a larger $\operatorname{poly}(d)$ number of rows. Similarly, for logistic regression previous work had worse $\operatorname{poly}(ΞΌd)$ factors in its sketching dimension. We also give a tradeoff that yields a $1+\varepsilon$ approximation in input sparsity time by increasing the total size to $(d\log(n)/\varepsilon)^{O(1/\varepsilon)}$ for $\ell_1$ and to $(ΞΌd\log(n)/\varepsilon)^{O(1/\varepsilon)}$ for logistic regression. Finally, we show that our sketch can be extended to approximate a regularized version of logistic regression where the data-dependent regularizer corresponds to the variance of the individual logistic losses.
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