LGOct 23, 2023

Scrap Your Schedules with PopDescent

arXiv:2310.14671v2h-index: 3
Originality Highly original
AI Analysis

This addresses hyperparameter optimization for machine learning practitioners, offering a robust alternative to schedule-based methods.

The paper tackles the problem of hyperparameter tuning in machine learning by proposing PopDescent, a progress-aware technique that uses memetic population-based search. Results show it converges faster and achieves test-loss values up to 18% lower than existing methods on standard vision tasks.

In contemporary machine learning workloads, numerous hyper-parameter search algorithms are frequently utilized to efficiently discover high-performing hyper-parameter values, such as learning and regularization rates. As a result, a range of parameter schedules have been designed to leverage the capability of adjusting hyper-parameters during training to enhance loss performance. These schedules, however, introduce new hyper-parameters to be searched and do not account for the current loss values of the models being trained. To address these issues, we propose Population Descent (PopDescent), a progress-aware hyper-parameter tuning technique that employs a memetic, population-based search. By merging evolutionary and local search processes, PopDescent proactively explores hyper-parameter options during training based on their performance. Our trials on standard machine learning vision tasks show that PopDescent converges faster than existing search methods, finding model parameters with test-loss values up to 18% lower, even when considering the use of schedules. Moreover, we highlight the robustness of PopDescent to its initial training parameters, a crucial characteristic for hyper-parameter search techniques.

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