基于元启发式和启发式算法的人工神经网络权重优化实例研究

Victor Stany Rozario, P. Sutradhar
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摘要

本文介绍了用于深度神经网络优化的元启发式算法和启发式算法。如今,人工智能和最常用的深度学习方法都越来越受欢迎,因此我们需要更快的优化策略来找到未来活动的结果。神经网络优化采用粒子群优化、反向传播(BP)、弹性传播(Rprop)和遗传算法(GA)对不同的数据集进行数值分析,并相互比较,找出哪种算法更能通过减少训练损失来找到最优解。本文介绍了遗传算法和仿生粒子群算法。此外,本文还介绍了弹性传播算法和传统反向传播算法。元启发式算法GA和PSO是一种更高层次的公式和问题独立技术,可用于各种挑战。启发式算法的特性具有非常具体的特征,这些特征随问题的不同而变化。详细介绍了传统的基于反向传播(BP)的优化方法、粒子群优化方法和弹性传播(Rprop)方法,并详细介绍了如何将这些方法应用于人工深度神经网络优化。通过对多个数据集的数值模拟,证明了元启发式算法粒子群优化和遗传算法比传统的启发式算法如反向传播和弹性传播具有更好的性能。
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In-Depth Case Study on Artificial Neural Network Weights Optimization Using Meta-Heuristic and Heuristic Algorithmic Approach
The Meta-heuristic and Heuristic algorithms that have been introduced for deep neural network optimization is in this paper. Artificial Intelligence, and also the most used Deep Learning methods are all growing in popularity these days, thus we need faster optimization strategies for finding the results of future activities. Neural Network Optimization with Particle Swarm Optimization, Backpropagation (BP), Resilient Propagation (Rprop), and Genetic Algorithm (GA) is used for numerical analysis of different datasets and comparing each other to find out which algorithms work better for finding optimal solutions by reducing training loss. Genetic algorithm and also bio-inspired Particle Swarm Optimization is introduced in this paper. Besides, Resilient Propagation and Conventional Backpropagation algorithms which are application-specific algorithms have also been introduced. Meta-heuristic algorithms GA and PSO are a higher-level formula and problem-independent technique that may be used to a diverse number of challenges. The characteristic of Heuristic algorithms has extremely specific features that vary depending on the problem. The conventional Backpropagation (BP) based optimization, the Particle Swarm Optimization methodology, and Resilient Propagation (Rprop) are all fully presented, and how to apply these procedures in Artificial Deep Neural networks Optimization is also thoroughly described. Applied numerical simulation over several datasets proves that the Meta-heuristic algorithm Particle Swarm Optimization and also Genetic Algorithm performs better than the conventional heuristic algorithm like Backpropagation and Resilient Propagation.
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