LGCVNEMLMay 27, 2019

Improved Training Speed, Accuracy, and Data Utilization Through Loss Function Optimization

arXiv:1905.11528v387 citations
Originality Incremental advance
AI Analysis

This work addresses the need for more efficient and accurate neural network training, offering a novel dimension to AutoML, though it is incremental as it extends existing metalearning techniques to loss functions.

The paper tackled the problem of optimizing neural network loss functions through metalearning, resulting in improved training speed, lower test error, and reduced data requirements on image classification tasks.

As the complexity of neural network models has grown, it has become increasingly important to optimize their design automatically through metalearning. Methods for discovering hyperparameters, topologies, and learning rate schedules have lead to significant increases in performance. This paper shows that loss functions can be optimized with metalearning as well, and result in similar improvements. The method, Genetic Loss-function Optimization (GLO), discovers loss functions de novo, and optimizes them for a target task. Leveraging techniques from genetic programming, GLO builds loss functions hierarchically from a set of operators and leaf nodes. These functions are repeatedly recombined and mutated to find an optimal structure, and then a covariance-matrix adaptation evolutionary strategy (CMA-ES) is used to find optimal coefficients. Networks trained with GLO loss functions are found to outperform the standard cross-entropy loss on standard image classification tasks. Training with these new loss functions requires fewer steps, results in lower test error, and allows for smaller datasets to be used. Loss-function optimization thus provides a new dimension of metalearning, and constitutes an important step towards AutoML.

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The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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