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Loss Function Optimization Using Taylor Series Expansion

机译:泰勒系列扩展的损耗功能优化

摘要

A process for optimizing loss functions includes progressively building better sets of parameters for loss functions represented as multivariate Taylor expansions in accordance with an iterative process. The optimization process is built upon CMA-ES. At each generation (i.e., each CMA-ES iteration), a new set of candidate parameter vectors is sampled. These candidate parameter vectors are sampled from a multivariate Gaussian distribution representation that is modeled by the CMA-ES covariance matrix and the current mean vector. The candidates are then each evaluated by training a model (neural network) using the candidates and determining a fitness value for each candidate against a validation data set.
机译:优化损耗函数的过程包括逐步构建用于根据迭代过程表示为多变量泰勒扩展的损耗函数的更好的参数。优化过程建立在CMA-es之上。在每代(即,每个CMA-ES迭代),采样一组新的候选参数向量。这些候选参数向量被从由CMA-ES协方差矩阵和当前平均载体建模的多变量高斯分布表示采样。然后,通过使用候选者训练模型(神经网络)来评估候选者,并根据验证数据集确定每个候选的适当度值。

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