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NTIS 바로가기IEEE access : practical research, open solutions, v.8, 2020년, pp.42261 - 42269
Lin, Sung-Chiang (National Taipei University of Education, Taipei, Taiwan) , Chen, Chih-Jou (National Penghu University of Science and Technology, Penghu, Taiwan) , Lee, Tsung-Ju (Feng Chia University, Taichung, Taiwan)
With the widespread adoption of Internet connected devices and the application of Internet of Things (IoT), more and more research efforts focusing on using machine learning techniques in recognizing activities from IoT sensors, especially in solving multi-label classification problems. Without cons...
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