Sensor Data Air Pollution Prediction by Kernel Models

Published: 2016, Last Modified: 12 Jun 2025CCGrid 2016EveryoneRevisionsBibTeXCC BY-SA 4.0
Abstract: Kernel-based neural networks are popular machine learning approach with many successful applications. Regularization networks represent a their special subclass with solid theoretical background and a variety of learning possibilities. In this paper, we focus on single and multi-kernel units, in particular, we describe the architecture of a product unit network, and describe an evolutionary learning algorithm for setting its parameters including different kernels from a dictionary, and optimal split of inputs into individual products. The approach is tested on real-world data from calibration of air-pollution sensor networks, and the performance is compared to several different regression tools.
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