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A review of various semi-supervised learning models with a deep learning and memory approach

机译:使用深度学习和记忆方法回顾各种半监督学习模型

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摘要

Based on data types, four learning methods have been presented to extract patterns from data: supervised, semi-supervised, unsupervised, and reinforcement. Regarding machine learning, labeled data are very hard to access, although unlabeled data are usually collected and accessed easily. On the other hand, in most projects, most of the data are unlabeled but some data are labeled. Therefore, semi-supervised learning is more practical and useful for solving most of the problems. Different semi-supervised learning models have been introduced such as iterative learning (self-training), generative models, graph-based methods, and vector-based techniques. In addition, deep neural networks are used to extract data features using a multilayer model. Various models of this method have been presented to deal with semi-supervised data such as deep generative, virtual adversarial, and Ladder models. In semi-supervised learning, labeled data can contribute significantly to accurate pattern extraction. Thus, they can result in better convergence by having greater effects on models. The aim of this paper was to analyze the available models of semi-supervised learning with an approach to deep learning. A research solution for future studies is to benefit from memory to increase such an effect. Memory-based neural networks are new models of neural networks which can be used in this area.
机译:基于数据类型,提出了四种学习方法来从数据中提取模式:有监督,半监督,无监督和增强。关于机器学习,尽管通常容易收集和访问未标记的数据,但是很难访问标记的数据。另一方面,在大多数项目中,大多数数据未标记,但有些数据被标记。因此,半监督学习对于解决大多数问题更为实用和有用。已经引入了不同的半监督学习模型,例如迭代学习(自我训练),生成模型,基于图的方法和基于矢量的技术。此外,深度神经网络用于使用多层模型提取数据特征。已经提出了该方法的各种模型来处理半监督数据,例如深度生成模型,虚拟对抗模型和阶梯模型。在半监督学习中,标记的数据可以极大地有助于准确的模式提取。因此,它们可以通过对模型产生更大的影响而导致更好的收敛性。本文的目的是使用深度学习方法分析可用的半监督学习模型。未来研究的研究解决方案是从记忆中受益,以增加这种效果。基于内存的神经网络是可以在该领域中使用的神经网络的新模型。

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