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Impact of Gaussian Noise for Optimized Support Vector Machine Algorithm Applied to Medicare Payment on Raspberry Pi
2021
Informatica (Ljubljana, Tiskana izd.)
A relatively large dataset coupled with efficient but computationally slow machine learning algorithm poses a great deal of challenge for Internet of Things (IoT). On the contrary, Deep Learning Neural Networks (DLANNs) are known for good performances in terms of accuracy, but by nature are computationally intensive. Based on this argument, the purpose of this article is to apply a pipelined Support Vector Machine (SVM)) learning algorithm for benchmarking public health data using Internet of
doi:10.31449/inf.v45i4.3747
fatcat:keapl6kgsbd4pdp2ozbi7rveh4