DAPPER: Performance Estimation of Domain Adaptation in Mobile Sensing

TAESIK GONG, School of Computing, KAIST, Republic of Korea YEWON KIM, School of Electrical Engineering, KAIST, Republic of Korea ADIBA ORZIKULOVA, School of Electrical Engineering, KAIST, Republic of Korea YUNXIN LIU, Institute for AI Industry Research (AIR), Tsinghua University, China SUNG JU HWANG, Graduate School of AI, KAIST and AITRICS, Republic of Korea JINWOO SHIN, Graduate School of AI, KAIST, Republic of Korea SUNG-JU LEE, School of Electrical Engineering, KAIST, Republic of Korea

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