Automated Neural Network Construction with Similarity Sensitive Evolutionary Algorithms

Haiman Tian, Shu‐Ching Chen, M. Shyu, S. Rubin
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引用次数: 4

Abstract

Deep learning has been successfully applied to a wide variety of tasks. It generates reusable knowledge that allows transfer learning to significantly impact more scientific research areas. However, there is no automatic way to build a new model that guarantees an adequate performance. In this paper, we propose an automated neural network construction framework to overcome the limitations found in current approaches using transfer learning. Currently, researchers spend much time and effort to understand the characteristics of the data when designing a new network model. Therefore, the proposed method leverages the strength in evolutionary algorithms to automate the search and optimization process. Similarities between the individuals are also considered during the cycled evolutionary process to avoid sticking to a local optimal. Overall, the experimental results effectively reach optimal solutions proving that a time-consuming task could also be done by an automated process that exceeds the human ability to select the best hyperparameters.
基于相似性敏感进化算法的自动神经网络构建
深度学习已经成功地应用于各种各样的任务。它产生可重用的知识,使迁移学习能够显著影响更多的科学研究领域。然而,没有一种自动的方法来构建保证足够性能的新模型。在本文中,我们提出了一个自动化的神经网络构建框架,以克服目前使用迁移学习方法的局限性。目前,研究人员在设计新的网络模型时,需要花费大量的时间和精力来了解数据的特征。因此,该方法利用了进化算法的优势,实现了搜索和优化过程的自动化。在循环进化过程中,个体之间的相似性也被考虑在内,以避免坚持局部最优。总的来说,实验结果有效地得到了最优解,证明了一项耗时的任务也可以通过自动化过程来完成,而自动化过程超出了人类选择最佳超参数的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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