Online marginalized linear stacked denoising autoencoders for learning from big data stream

Arif Budiman, M. I. Fanany, Chan Basaruddin
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引用次数: 4

Abstract

Big non-stationary data, which comes in gradual fashion or stream, is one important issue in the application of big data to train deep learning machines. In this paper, we focused on a unique variant of traditional autoencoder, which is called Marginalized Linear Stacked Denoising Autoencoder (MLSDA). MLSDA uses a simple linear model. It is faster and uses less number of parameters than the traditional SDA. It also takes advantages of convex optimization. It has better improvement in the bag of words feature representation. However, the traditional SDA with stochastic gradient descent has been more widely accepted in many applications. The stochastic gradient descent is naturally an online learning. It makes the traditional SDA more scalable for streaming big data. This paper proposes a simple modification of MLSDA. Our modification uses matrix multiplication concept for online learning. The experiment result showed the similar accuracy level compared with a batch version of MLSDA and using lower computation resources. The online MLSDA will improve the scalability of MLSDA for handling streaming big data that representing bag of words features for natural language processing, information retrieval, and computer vision.
面向大数据流学习的在线边缘线性堆叠去噪自编码器
大非平稳数据以渐进或流的形式出现,是应用大数据训练深度学习机器的一个重要问题。本文重点研究了传统自编码器的一种独特变体,即边缘线性堆叠去噪自编码器(MLSDA)。MLSDA使用一个简单的线性模型。它比传统的SDA更快,使用的参数数量更少。它还利用了凸优化的优点。在词包特征表示方面有较好的改进。然而,传统的随机梯度下降SDA在许多应用中得到了更广泛的接受。随机梯度下降法自然是一种在线学习。它使传统的SDA在流式大数据方面更具可扩展性。本文提出了对MLSDA的一种简单修改。我们的修改使用矩阵乘法的概念进行在线学习。实验结果表明,与批处理版本的MLSDA相比,该方法具有相似的精度水平,并且使用了更少的计算资源。在线MLSDA将提高MLSDA的可扩展性,以处理代表自然语言处理、信息检索和计算机视觉的词包特征的流大数据。
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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