用于人工结构分类的快速稀疏高斯过程学习

Hang Zhou, D. Suter
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引用次数: 5

摘要

信息向量机(IVM)是一种高效、快速的稀疏高斯过程(GP)主动学习方法。它大大降低了GP分类的计算成本,使GP学习接近实时性。我们将IVM应用于人工结构分类(一个两类问题)。我们的工作包括调查具有不同活动数据点的IVM的性能,以及不同选择GP内核的影响。已经获得了令人满意的结果,表明该方法保持了完整的GP分类性能,但速度明显更快(由于使用了整个训练数据点的子集)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast Sparse Gaussian Processes Learning for Man-Made Structure Classification
Informative Vector Machine (IVM) is an efficient fast sparse Gaussian process's (GP) method previously suggested for active learning. It greatly reduces the computational cost of GP classification and makes the GP learning close to real time. We apply IVM for man-made structure classification (a two class problem). Our work includes the investigation of the performance of IVM with varied active data points as well as the effects of different choices of GP kernels. Satisfactory results have been obtained, showing that the approach keeps full GP classification performance and yet is significantly faster (by virtue if using a subset of the whole training data points).
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