Hyperparameter Optimization of LSTM Network Models through Genetic Algorithm

N. Gorgolis, I. Hatzilygeroudis, Z. Istenes, Lazlo-Grad Gyenne
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引用次数: 24

Abstract

Next word prediction is an important problem in the domain of NLP, hence in modern artificial intelligence. It draws both scientific and industrial interest, as it consists the core of many processes, like autocorrection, text generation, review prediction etc. Currently, the most efficient and common approach used is classification, using artificial neural networks (ANNs). One of the main drawbacks of ANNs is fine – tuning their hyperparameters, a procedure which is essential to the performance of the model. On the other hand, the approaches usually used for fine – tuning are either computationally unaffordable (e.g. grid search) or of uncertain efficiency (e.g. trial & error). As a response to the above, through the current paper is presented a simple genetic algorithm approach, which is used for the hyperparameter tuning of a common language model and it achieves tuning efficiency without following an exhaustive search.
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基于遗传算法的LSTM网络模型超参数优化
下一个词预测是自然语言处理领域的一个重要问题,因此也是现代人工智能中的一个重要问题。它吸引了科学界和工业界的兴趣,因为它包括许多过程的核心,如自动纠错、文本生成、评论预测等。目前,最有效和最常用的方法是使用人工神经网络(ann)进行分类。人工神经网络的主要缺点之一是对其超参数进行微调,这一过程对模型的性能至关重要。另一方面,通常用于微调的方法要么在计算上负担不起(例如网格搜索),要么效率不确定(例如试错)。作为对上述问题的回应,本文提出了一种简单的遗传算法方法,用于公共语言模型的超参数调优,该方法无需穷举搜索即可达到调优效率。
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