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Incremental Learning for Classification of Unstructured Data Using Extreme Learning Machine

机译:使用极端学习机进行非结构化数据分类的增量学习

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摘要

Unstructured data are irregular information with no predefined data model. Streaming data which constantly arrives over time is unstructured, and classifying these data is a tedious task as they lack class labels and get accumulated over time. As the data keeps growing, it becomes difficult to train and create a model from scratch each time. Incremental learning, a self-adaptive algorithm uses the previously learned model information, then learns and accommodates new information from the newly arrived data providing a new model, which avoids the retraining. The incrementally learned knowledge helps to classify the unstructured data. In this paper, we propose a framework CUIL (Classification of Unstructured data using Incremental Learning) which clusters the metadata, assigns a label for each cluster and then creates a model using Extreme Learning Machine (ELM), a feed-forward neural network, incrementally for each batch of data arrived. The proposed framework trains the batches separately, reducing the memory resources, training time significantly and is tested with metadata created for the standard image datasets like MNIST, STL-10, CIFAR-10, Caltech101, and Caltech256. Based on the tabulated results, our proposed work proves to show greater accuracy and efficiency.
机译:非结构化数据是没有预定义数据模型的不规则信息。随着时间的推移不断到达的流数据是非结构化的,并且对这些数据进行分类是一种繁琐的任务,因为它们缺少类标签并随时间累积。随着数据不断增长,每次都难以训练并从头开始创建模型。增量学习,自适应算法使用先前学习的模型信息,然后学习并容纳来自新的数据提供新模型的新信息,这避免了再培训。逐步学习的知识有助于对非结构化数据进行分类。在本文中,我们提出了一个框架CUIL(使用增量学习的非结构化数据分类),它为元数据分配了每个群集的标签,然后使用极端学习机(ELM),逐步使用馈电神经网络来创建模型对于每批数据到达。所提出的框架分别列出批处理,减少了存储器资源,显着培训时间,并使用与MNIST,STL-10,CIFAR-10,CALTECH101和CALTECH256等标准图像数据集创建的元数据进行测试。根据制表的结果,我们拟议的工作证明表现出更高的准确性和效率。

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