Isolation kernel: the X factor in efficient and effective large scale online kernel learning

被引:0
|
作者
Kai Ming Ting
Jonathan R. Wells
Takashi Washio
机构
[1] Nanjing University,National Key Laboratory for Novel Software Technology
[2] Deakin University,School of Information Technology
[3] Osaka University,The Institute of Scientific and Industrial Research
来源
Data Mining and Knowledge Discovery | 2021年 / 35卷
关键词
Data dependent kernel; Online kernel learning; Kernel functional approximation; Large scale data mining;
D O I
暂无
中图分类号
学科分类号
摘要
Large scale online kernel learning aims to build an efficient and scalable kernel-based predictive model incrementally from a sequence of potentially infinite data points. Current state-of-the-art large scale online kernel learning focuses on improving efficiency. Two key approaches to gain efficiency through approximation are (1) limiting the number of support vectors, and (2) using an approximate feature map. They often employ a kernel with a feature map with intractable dimensionality. While these approaches can deal with large scale datasets efficiently, this outcome is achieved by compromising predictive accuracy because of the approximation. We offer an alternative approach that puts the kernel used at the heart of the approach. It focuses on creating a sparse and finite-dimensional feature map of a kernel called Isolation Kernel. Using this new approach, to achieve the above aim of large scale online kernel learning becomes extremely simple—simply use Isolation Kernel instead of a kernel having a feature map with intractable dimensionality. We show that, using Isolation Kernel, large scale online kernel learning can be achieved efficiently without sacrificing accuracy.
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收藏
页码:2282 / 2312
页数:30
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