未知的k近邻分类器

H. Khastavaneh, H. Ebrahimpour-Komleh, Amin Hanaee-Ahwaz
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引用次数: 0

摘要

未知感知在人脸识别等许多应用中是非常重要的。在一个典型的未知感知分类器中,一个“未知”标签被分配给奇怪的测试实例。本研究通过扩展已知的kNN分类器,提出了一种未知感知分类器UAkNN。在UAkNN中,未知感知是通过利用单个类实例之间的距离来实现的。这些距离及其相关统计数据用于确认kNN预测或将其更改为“未知”。基于Iris数据集,使用5倍交叉验证,平均准确率达到85%。实验结果表明,UAkNN在各种测试情况下都具有良好的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unknown aware k nearest neighbor classifier
Unknown awareness is very important for many applications such as face recognition. In a typical unknown aware classifier, an “unknown” label is assigned to strange test instances. This study proposes an unknown aware classifier known as UAkNN by extending the well-known kNN classifier. In UAkNN, unknown awareness is achieved by exploiting distances between instances of individual classes. These distances and their related statistics are used to confirm the kNN prediction or change it to “unknown”. Average accuracy of 85 percent based on the Iris dataset by using 5-fold cross validation has been achieved. Experimental results demonstrate that UAkNN is promising under various test situation.
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