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Evolving Unsupervised Deep Neural Networks for Learning Meaningful Representations

机译:不断发展的无监督深度神经网络,用于学习有意义的表示

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摘要

Deep learning (DL) aims at learning the meaningful representations. A meaningful representation gives rise to significant performance improvement of associated machine learning (ML) tasks by replacing the raw data as the input. However, optimal architecture design and model parameter estimation in DL algorithms are widely considered to be intractable. Evolutionary algorithms are much preferable for complex and nonconvex problems due to its inherent characteristics of gradient-free and insensitivity to the local optimal. In this paper, we propose a computationally economical algorithm for evolving unsupervised deep neural networks to efficiently learn meaningful representations, which is very suitable in the current big data era where sufficient labeled data for training is often expensive to acquire. In the proposed algorithm, finding an appropriate architecture and the initialized parameter values for an ML task at hand is modeled by one computational efficient gene encoding approach, which is employed to effectively model the task with a large number of parameters. In addition, a local search strategy is incorporated to facilitate the exploitation search for further improving the performance. Furthermore, a small proportion labeled data is utilized during evolution search to guarantee the learned representations to be meaningful. The performance of the proposed algorithm has been thoroughly investigated over classification tasks. Specifically, error classification rate on MNIST with 1.15% is reached by the proposed algorithm consistently, which is considered a very promising result against state-of-the-art unsupervised DL algorithms.
机译:深度学习(DL)旨在学习有意义的表示形式。通过替换原始数据作为输入,有意义的表示形式可以显着提高相关机器学习(ML)任务的性能。但是,广泛认为DL算法中的最佳体系结构设计和模型参数估计很棘手。演化算法由于其固有的无梯度特性和对局部最优的不敏感特性,因此非常适合复杂和非凸问题。在本文中,我们提出了一种计算经济的算法,用于发展无监督的深度神经网络以有效地学习有意义的表示,这非常适合当前的大数据时代,在该时代,用于训练的足够标记数据通常很昂贵。在提出的算法中,通过一种计算有效的基因编码方法,为手头的ML任务找到合适的架构和初始化的参数值,该方法可用于有效地对大量参数进行任务建模。此外,还结合了本地搜索策略,以方便漏洞利用搜索以进一步提高性能。此外,在进化搜索过程中会使用一小部分标记的数据,以确保学习的表示形式有意义。提出的算法的性能已经在分类任务上进行了深入研究。具体而言,所提出的算法始终达到MNIST上的错误分类率为1.15%的水平,与最先进的无监督DL算法相比,这被认为是非常有希望的结果。

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