Abnormality Detecting Deep Belief Network

M. Sharma, D. Sheet, P. Biswas
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引用次数: 9

Abstract

Abnormality detection is useful in reducing the amount of data to be processed manually by directing attention to the specific portion of data. However, selections of suitable features are important for the success of an abnormality detection system. Designing and selecting appropriate features are time-consuming, requires expensive domain knowledge and human labor. Further, it is very challenging to represent high-level concepts of abnormality in terms of raw input. Most of the existing abnormality detection system use handcrafted feature detector and are based on shallow architecture. In this work, we explore Deep Belief Network for abnormality detection and simultaneously, compared the performance of classic neural network in terms of features learned and accuracy of detecting the abnormality. Further, we explore the set of features learn by each layer of the deep architecture. We also provide a simple and fast mechanism to visualize the feature at the higher layer. Further, the effect of different activation function on abnormality detection is also compared. We observed that deep learning based approach can be used for detecting an abnormality. It has better performance compare to classical neural network in separating distinct as well as almost similar data.
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异常检测深度信念网络
通过将注意力集中在数据的特定部分,异常检测有助于减少需要手工处理的数据量。然而,选择合适的特征对于异常检测系统的成功至关重要。设计和选择合适的特征非常耗时,需要昂贵的领域知识和人力。此外,用原始输入来表示异常的高级概念非常具有挑战性。现有的异常检测系统大多采用手工制作的特征检测器,并且基于浅层结构。在这项工作中,我们探索了深度信念网络用于异常检测,同时比较了经典神经网络在特征学习和异常检测准确率方面的表现。此外,我们还探讨了深度体系结构的每一层学习到的特征集。我们还提供了一种简单而快速的机制来在更高层对特征进行可视化。此外,还比较了不同激活函数对异常检测的影响。我们观察到基于深度学习的方法可以用于检测异常。与经典神经网络相比,它在分离不同数据和几乎相似的数据方面具有更好的性能。
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