基于高斯过程的对话行为分类神经网络超参数优化

Franck Dernoncourt, Ji Young Lee
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引用次数: 26

摘要

基于人工神经网络(ANNs)的系统在许多自然语言处理任务中取得了最先进的成果。虽然人工神经网络不需要人工设计的特征,但人工神经网络有许多超参数需要优化。超参数的选择显著影响模型的性能。然而,人工神经网络的超参数通常是通过手动、网格或随机搜索来选择的,这要么需要专家经验,要么计算成本很高。最近基于贝叶斯优化的方法使用高斯过程(GPs)是一种更系统的方法来自动确定最优或接近最优的机器学习超参数。使用先前发表的ANN模型产生最先进的对话行为分类结果,我们证明使用GP优化超参数进一步改善了结果,并且与随机搜索相比将计算时间减少了4倍。因此,它是一种有用的技术来调整人工神经网络模型,以获得NLP任务的最佳性能。
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Optimizing neural network hyperparameters with Gaussian processes for dialog act classification
Systems based on artificial neural networks (ANNs) have achieved state-of-the-art results in many natural language processing tasks. Although ANNs do not require manually engineered features, ANNs have many hyperparameters to be optimized. The choice of hyperparameters significantly impacts models' performances. However, the ANN hyperparameters are typically chosen by manual, grid, or random search, which either requires expert experiences or is computationally expensive. Recent approaches based on Bayesian optimization using Gaussian processes (GPs) is a more systematic way to automatically pinpoint optimal or near-optimal machine learning hyperparameters. Using a previously published ANN model yielding state-of-the-art results for dialog act classification, we demonstrate that optimizing hyperparameters using GP further improves the results, and reduces the computational time by a factor of 4 compared to a random search. Therefore it is a useful technique for tuning ANN models to yield the best performances for NLP tasks.
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