论文标题

用半监督的自组织地图进行深度分类

Deep Categorization with Semi-Supervised Self-Organizing Maps

论文作者

Braga, Pedro H. M., Medeiros, Heitor R., Bassani, Hansenclever F.

论文摘要

如今,随着技术的发展,每天都会生成越来越多的非结构化数据。但是,标记和组织它是一项痛苦的工作。标签是一项昂贵,耗时且艰巨的任务。它通常是手动完成的,它与将噪声和错误的错误合作进行了合作。因此,开发可以从标记和未标记数据中受益的智能模型非常重要。当前,无监督和半监督学习的工作仍被纯粹监督学习的成功所掩盖。但是,预计它们在从长远来看变得越来越重要。本文介绍了一个半监督模型,称为批处理半监督的自组织地图(批量SS-SOM),这是符合深度学习兴起的某些进步的扩展,例如深度学习,例如批次培训。结果表明,批处理SS-SOM是半监督分类和聚类的不错选择。即使有少数标记的样本,以及向无监督的数据显示,它在准确性和聚类误差方面的性能很好,并在传统图像分类基准数据集中传输学习方案中显示了竞争性的结果。

Nowadays, with the advance of technology, there is an increasing amount of unstructured data being generated every day. However, it is a painful job to label and organize it. Labeling is an expensive, time-consuming, and difficult task. It is usually done manually, which collaborates with the incorporation of noise and errors to the data. Hence, it is of great importance to developing intelligent models that can benefit from both labeled and unlabeled data. Currently, works on unsupervised and semi-supervised learning are still being overshadowed by the successes of purely supervised learning. However, it is expected that they become far more important in the longer term. This article presents a semi-supervised model, called Batch Semi-Supervised Self-Organizing Map (Batch SS-SOM), which is an extension of a SOM incorporating some advances that came with the rise of Deep Learning, such as batch training. The results show that Batch SS-SOM is a good option for semi-supervised classification and clustering. It performs well in terms of accuracy and clustering error, even with a small number of labeled samples, as well as when presented to unsupervised data, and shows competitive results in transfer learning scenarios in traditional image classification benchmark datasets.

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