Emergence of heavy tails in homogenized stochastic gradient descent
Research output: Contribution to journal › Conference article › Contributed › peer-review
Contributors
Abstract
It has repeatedly been observed that loss minimization by stochastic gradient descent (SGD) leads to heavy-tailed distributions of neural network parameters. Here, we analyze a continuous diffusion approximation of SGD, called homogenized stochastic gradient descent, and show in a regularized linear regression framework that it leads to an asymptotically heavy-tailed parameter distribution, even though local gradient noise is Gaussian. We give explicit upper and lower bounds on the tail-index of the resulting parameter distribution and validate these bounds in numerical experiments. Moreover, the explicit form of these bounds enables us to quantify the interplay between optimization hyperparameters and the tail-index. Doing so, we contribute to the ongoing discussion on links between heavy tails and the generalization performance of neural networks as well as the ability of SGD to avoid suboptimal local minima.
Details
| Original language | English |
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| Pages (from-to) | 14066-14092 |
| Number of pages | 27 |
| Journal | Advances in Neural Information Processing Systems |
| Volume | 37 |
| Publication status | Published - 2024 |
| Peer-reviewed | Yes |
Conference
| Title | 38th Conference on Neural Information Processing Systems, |
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| Abbreviated title | NeurIPS 2024 |
| Conference number | 38 |
| Duration | 9 - 15 December 2024 |
| Website | |
| Location | Vancouver Convention Center & Online |
| City | Vancouver |
| Country | Canada |
External IDs
| ORCID | /0000-0003-0913-3363/work/192581534 |
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