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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Spectral Graph Optimization for Instance Reduction
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Spectral Graph Optimization for Instance Reduction

机译:频谱图优化以减少实例

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摘要

The operation of instance-based learning algorithms is based on storing a large set of prototypes in the system's database. However, such systems often experience issues with storage requirements, sensitivity to noise, and computational complexity, which result in high search and response times. In this brief, we introduce a novel framework that employs spectral graph theory to efficiently partition the dataset to border and internal instances. This is achieved by using a diverse set of border-discriminating features that capture the local friend and enemy profiles of the samples. The fused information from these features is then used via graph-cut modeling approach to generate the final dataset partitions of border and nonborder samples. The proposed method is referred to as the spectral instance reduction (SIR) algorithm. Experiments with a large number of datasets show that SIR performs competitively compared to many other reduction algorithms, in terms of both objectives of classification accuracy and data condensation.
机译:基于实例的学习算法的操作基于将大量原型存储在系统的数据库中。但是,这样的系统经常遇到存储要求,对噪声的敏感性以及计算复杂性的问题,这导致高的搜索和响应时间。在本文中,我们介绍了一种新颖的框架,该框架采用频谱图理论将数据集有效地划分为边界实例和内部实例。这是通过使用一组多样化的边界区分功能来实现的,这些功能可以捕获样本的本地朋友和敌人档案。然后,通过图形切割建模方法将这些特征的融合信息用于生成边界和非边界样本的最终数据集分区。所提出的方法称为频谱实例约简(SIR)算法。大量数据集的实验表明,在分类精度和数据压缩方面,SIR与许多其他归约算法相比具有竞争优势。

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