A Survey on Multi-Objective Based Parameter Optimization for Deep Learning

IF 0.3 Q4 COMPUTER SCIENCE, THEORY & METHODS Computer Science-AGH Pub Date : 2023-10-01 DOI:10.7494/csci.2023.24.3.5479
Mrittika Chakraborty, Wreetbhas Pal, Sanghamitra Bandyopadhyay, Ujjwal Maulik
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Abstract

Deep learning models form one of the most powerful machine learning models for the extraction of important features. Most of the designs of deep neural models, i.e., the initialization of parameters, are still manually tuned. Hence, obtaining a model with high performance is exceedingly time-consuming and occasionally impossible. Optimizing the parameters of the deep networks, therefore, requires improved optimization algorithms with high convergence rates. The single objective-based optimization methods generally used are mostly time-consuming and do not guarantee optimum performance in allcases. Mathematical optimization problems containing multiple objective functions that must be optimized simultaneously fall under the category of multi-objective optimization sometimes referred to as Pareto optimization. Multi-objective optimization problems form one of the alternatives yet useful options for parameter optimization. However, this domain is a bit less explored. In this survey, we focus on exploring the effectiveness of multi-objective optimization strategies for parameter optimization in conjunction with deep neural networks. The case studies used in this study focus on how the twomethods are combined to provide valuable insights into the generation of predictions and analysis in multiple applications.
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基于多目标的深度学习参数优化研究综述
深度学习模型是提取重要特征的最强大的机器学习模型之一。大多数深度神经模型的设计,即参数的初始化,仍然是手动调整的。因此,获得具有高性能的模型非常耗时,有时甚至是不可能的。因此,优化深度网络的参数需要改进具有高收敛速度的优化算法。通常使用的基于单目标的优化方法大多是耗时的,并且不能保证在所有情况下的最佳性能。包含必须同时优化的多个目标函数的数学优化问题属于多目标优化的范畴,有时也称为帕累托优化。多目标优化问题是参数优化的一种有效选择。然而,这一领域的探索较少。在本研究中,我们重点探讨了与深度神经网络相结合的参数优化多目标优化策略的有效性。本研究中使用的案例研究侧重于如何将这两种方法结合起来,为在多种应用中生成预测和分析提供有价值的见解。
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来源期刊
Computer Science-AGH
Computer Science-AGH COMPUTER SCIENCE, THEORY & METHODS-
CiteScore
1.40
自引率
0.00%
发文量
18
审稿时长
20 weeks
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