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Efficient Model Selection for Moisture Ratio Removal of Seaweed Using Hybrid Of Sparse And Robust Regression Analysis
2021
Pakistan Journal of Statistics and Operation Research
The Internet of things ((IoT) consisted of physical devices networks such as sensors, home appliances, electronics, and software's. It enables us to collect and exchange data in several fields. After data collection from IoT, variable selection is considered a major problem because many variables are involved in real life datasets. The current study focused on large data analysis of the problem of model selection, including interaction terms. The dataset used in this study is taken from solar
doi:10.18187/pjsor.v17i3.3641
fatcat:tg4hfvzf7vbybnbxllggtraney