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세미나

우수 논문 발표 세미나 개최 : Masked Time Series Modeling with Seasonal-Trend Decomposition for Time Series Forecasting

Date
2025-10-01 10:30:00
Lecturer
서현우
Venue
Online(Zoom)
📑Abstract: 

Recently, masked time-series modeling has been proposed to effectively model temporal dependencies for forecasting by reconstructing masked segments from unmasked ones. However, since the semantic information in time series is involved in intricate temporal variations generated by multiple time series components, simply masking a raw time series ignores the inherent semantic structure, which may cause MTM to learn spurious temporal patterns present in the raw data. To capture distinct temporal semantics, we show that masked modeling techniques should address entangled patterns through a decomposition approach. Specifically, we propose ST-MTM, a masked time-series modeling framework with seasonal-trend decomposition, which includes a novel masking method for the seasonal-trend components that incorporates different temporal variations from each component. ST-MTM uses a period masking strategy for seasonal components to produce multiple masked seasonal series based on inherent multi-periodicity and a sub-series masking strategy for trend components to mask temporal regions that share similar variations. The proposed masking method presents an effective pre-training task for learning intricate temporal variations and dependencies. Additionally, ST-MTM introduces a contrastive learning task to support masked modeling by enhancing contextual consistency among multiple masked seasonal representations. Experimental results show that our proposed ST-MTM achieves consistently superior forecasting performance compared to existing masked modeling, contrastive learning, and supervised forecasting methods.

 
⚡연사정보: 
서현우는 울산과학기술원(UNIST) 산업공학과에서 석·박사 통합과정을 밟고 있으며임치현 교수님의 지도 아래 시계열 데이터 분석자기지도 학습기반(Foundation) 모델 연구에 주력하고 있습니다현재는 조지아공과대학교(Georgia Tech) 여운홍 교수님의 Bio-Interfaced Translational Nanoengineering 연구그룹에서 방문연구원으로 활동하며바이오 센서와 인공지능 시스템의 융합을 통한 바이오 인터페이스 개발 연구와 생체신호 시계열에 특화된 인공지능 개발 연구를 수행하고 있습니다.
Hyunwoo Seo is pursuing an integrated M.S.–Ph.D. program in the Department of Industrial Engineering at Ulsan National Institute of Science and Technology (UNIST), under the supervision of Prof. Chi-Hyoun Lim. His research focuses on time-series data analysis, self-supervised learning, and foundation models. He is currently a visiting researcher at the Bio-Interfaced Translational Nanoengineering group at Georgia Tech, where he is conducting research on the integration of biosensors with artificial intelligence systems, as well as developing AI methods specialized for biomedical time-series signals.