Domain-adaptation-based active ensemble learning for improving chemical sensor array performance

Sensors and Actuators A: Physical - Tập 357 - Trang 114411 - 2023
Jia Yan1, Ruihong Sun1, Tao Liu2, Shukai Duan3
1College of Artificial Intelligence, Southwest University, Chongqing, 400715, China
2School of Microelectronics and Communication Engineering, Chongqing University, Chongqing, 400044, China
3Brain-Inspired Computing & Intelligent Control of Chongqing Key Lab, Chongqing, 400715, China

Tài liệu tham khảo

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