Weight Initialization based Partial Training Algorithm for Fast Learning in Neural Network

Jung-Jae Kim, Min-Woo Ryu, S. Cha, Kuk-Hyun Cho
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引用次数: 0

Abstract

The classification problem is one of most important problems in Artificial Intelligence (AI) Research. Classification is used in various fields such as speech recognition, image classification, word prediction in text. Deep Neural Network (DNN) is the most commonly used for the classification. However, DNN requires a lot of learning time because of its deep network structure and lots of data. At this time, if a new feature or a new category class (new data) is added, the existing data on which learning has been completed is also re-learned. And the same learning time (very long time) as the previous learning time is needed. Therefore, in this paper, we proposes Weight Initialization-based Partial Training (WIPT) algorithm, that decompose the existing weight matrix through Singular Value Decomposition (SVD) and generate a latent matrix with information learned by the existing model. In order to increase the learning efficiency, we use a strategy of learning new features or classes by initializing newly added weights to appropriate values. Finally we verify the efficiency of the proposed algorithm by comparing it with the existing whole learning.
基于权值初始化的神经网络快速学习部分训练算法
分类问题是人工智能研究中的重要问题之一。分类应用于语音识别、图像分类、文本词预测等多个领域。深度神经网络(Deep Neural Network, DNN)是最常用的分类方法。然而,深度神经网络由于其深层网络结构和大量的数据,需要大量的学习时间。此时,如果添加了新的特征或新的类别类(新数据),那么已经完成学习的现有数据也会被重新学习。并且需要与之前的学习时间相同的学习时间(很长时间)。因此,本文提出了基于权重初始化的部分训练(WIPT)算法,该算法通过奇异值分解(SVD)对已有的权重矩阵进行分解,并利用已有模型学习到的信息生成潜在矩阵。为了提高学习效率,我们采用了一种策略,即通过初始化新添加的权值来学习新的特征或类。最后,通过与现有的整体学习算法进行比较,验证了所提算法的有效性。
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