Adaptive Design Optimization as a Promising Tool for Reliable and Efficient Computational Fingerprinting

Mina Kwon1, Sang Ho Lee1,2, Woo-Young Ahn1,2
1Department of Psychology, Seoul National University, Seoul, Korea
2Department of Brain and Cognitive Sciences, Seoul National University, Seoul, Korea

Tài liệu tham khảo

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