2019
DOI: 10.48550/arxiv.1904.10753
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An Exploratory Analysis of Biased Learners in Soft-Sensing Frames

Aysun Urhan,
Burak Alakent

Abstract: Data driven soft sensor design has recently gained immense popularity, due to advances in sensory devices, and a growing interest in data mining. While partial least squares (PLS) is traditionally used in the process literature for designing soft sensors, the statistical literature has focused on sparse learners, such as Lasso and relevance vector machine (RVM), to solve the high dimensional data problem. In the current study, predictive performances of three regression techniques, PLS, Lasso and RVM were asse… Show more

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