作者
Paulo Gil, Hugo Martins, Fábio Januário
发表日期
2019/12
期刊
Artificial Intelligence Review
卷号
52
期号
4
页码范围
2411-2436
出版商
Springer Netherlands
简介
Detection and accommodation of outliers are crucial in a number of contexts, in which collected data from a given environment is subsequently used for assessing its running conditions or for data-based decision-making. Although a significant number of studies on this subject can be found in literature, a comprehensive empirical assessment in the context of local online detection in wireless sensor networks is still missing. The present work aims at filling this gap by offering an empirical evaluation of two state-of-the-art online detection methods. The first methodology is based on a Least Squares-Support Vector Machine technique, along with a sliding window-based learning algorithm, while the second approach relies on Principal Component Analysis and on the robust orthonormal projection approximation subspace tracking with rank-1 modification. The performance and implementability of these methods …
引用总数
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学术搜索中的文章
P Gil, H Martins, F Januário - Artificial Intelligence Review, 2019