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Weightless Neural Networks for Open Set Recognition

机译:失重神经网络用于开放集识别

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摘要

Open set recognition is a classification-like task.lt is accomplished not only by the identification of observations which belong to targeted classes (i.e., the classes among those represented in the training sample which should be later recognized) but also by the rejection of inputs from other classes in the problem domain. The need for proper handling of elements of classes beyond those of interest is frequently ignored, even in works found in the literature. This leads to the improper development of learning systems, which may obtain misleading results when evaluated in their test beds, consequently failing to keep the performance level while facing some real challenge. The adaptation of a classifier for open set recognition is not always possible: the probabilistic premises most of them are built upon are not valid in a open-set setting. Still, this paper details how this was realized for WiSARD a weightless artificial neural network model. Such achievement was based on an elaborate distance-like computation this model provides and the definition of rejection thresholds during training. The proposed methodology was tested through a collection of experiments, with distinct backgrounds and goals. The results obtained confirm the usefulness of this tool for open set recognition.
机译:开放集识别是一种类似于分类的任务。不仅通过识别属于目标类别(即,训练样本中代表的类别应在以后识别的类别)的观察值,而且还通过拒绝输入来实现来自问题领域中的其他类别。甚至在文献中发现的作品中,也经常忽略对除感兴趣的类之外的其他类元素进行适当处理的需要。这导致学习系统开发不当,在测试平台上进行评估时可能会产生误导性的结果,从而在面对一些实际挑战的同时无法保持性能水平。分类器用于开放集识别的适应并非总是可行的:大多数概率基础都建立在开放式设置中无效。尽管如此,本文还是详细介绍了如何为WiSARD失重人工神经网络模型实现这一目标。这样的成就是基于该模型提供的精细的类似于距离的计算以及训练期间拒绝阈值的定义。通过一系列具有不同背景和目标的实验对提出的方法进行了测试。获得的结果证实了该工具对于开放集识别的有用性。

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