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PRODID:-//Biomedical Mathematics Group - ECPv6.15.20//NONSGML v1.0//EN
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METHOD:PUBLISH
X-WR-CALNAME:Biomedical Mathematics Group
X-ORIGINAL-URL:https://www.ibs.re.kr/bimag
X-WR-CALDESC:Events for Biomedical Mathematics Group
REFRESH-INTERVAL;VALUE=DURATION:PT1H
X-Robots-Tag:noindex
X-PUBLISHED-TTL:PT1H
BEGIN:VTIMEZONE
TZID:Asia/Seoul
BEGIN:STANDARD
TZOFFSETFROM:+0900
TZOFFSETTO:+0900
TZNAME:KST
DTSTART:20240101T000000
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END:VTIMEZONE
BEGIN:VEVENT
DTSTART;TZID=Asia/Seoul:20251229T163000
DTEND;TZID=Asia/Seoul:20251229T183000
DTSTAMP:20260430T164418
CREATED:20251224T001444Z
LAST-MODIFIED:20251224T001528Z
UID:12049-1767025800-1767033000@www.ibs.re.kr
SUMMARY:Distribution shift in machine learning: robustness\, invariance\, and a causal view - Wooseok Ha
DESCRIPTION:Classical machine learning models are typically trained under the assumption that the training (source) and test (target) data are drawn from the same distribution. However\, real-world data are rarely clean or consistent\, and distribution shifts between the source and target domains are ubiquitous. Despite its importance\, addressing distribution shifts is highly difficult. The fundamental challenge is that the problem is mathematically ill-posed: shifts can occur in many different forms\, and no single method can handle all of them. While numerous algorithms have been proposed in recent years to solve distribution shifts\, most are empirical-driven and lack solid foundations. In this talk\, I will provide a broad overview of approaches to address distribution shift based on invariance and distributional robustness\, and explain how these methods are intrinsically connected to a causal perspective. In particular\, I will show why it is crucial to carefully formulate assumptions that relate the source and target domains for reliable generalization\, and how assumptions grounded in the causal system enable the analysis of algorithms under both unsupervised and semi-supervised settings.
URL:https://www.ibs.re.kr/bimag/event/distribution-shift-in-machine-learning-robustness-invariance-and-a-causal-view-wooseok-ha/
LOCATION:B232 Seminar Room\, IBS\, 55 Expo-ro Yuseong-gu\, Daejeon\, Daejeon\, 34126\, Korea\, Republic of
CATEGORIES:Biomedical Mathematics Seminar
ORGANIZER;CN="Jae Kyoung Kim":MAILTO:jaekkim@kaist.ac.kr
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=Asia/Seoul:20251230T150000
DTEND;TZID=Asia/Seoul:20251230T160000
DTSTAMP:20260430T164418
CREATED:20251224T001705Z
LAST-MODIFIED:20251224T001718Z
UID:12052-1767106800-1767110400@www.ibs.re.kr
SUMMARY:Expanding the Data Analysis Toolkit: Explainable AI\, Causal Learning\, and Time-Series Foundation Models - Daeil Jang
DESCRIPTION:Recent advances in data science have expanded the scope of data analysis beyond prediction accuracy toward interpretability\, causal understanding\, and generalizable learning across complex data structures. This lecture introduces three emerging methodological approaches that can be directly leveraged in modern data analysis workflows. \nFirst\, the lecture presents explainable artificial intelligence (XAI) techniques\, focusing on SHAP and its extension to time-series explainability\, to illustrate how model predictions can be decomposed into meaningful variable- and time-specific contributions. Second\, it introduces machine-learning and deep-learning–based causal inference models\, highlighting how these methods move beyond association to estimate intervention effects and heterogeneous impacts while maintaining interpretability. Third\, the lecture explores recent time-series foundation models—such as Lag-LLaMA and TabPFN-based approaches—that enable transferable learning across diverse time-series tasks with minimal task-specific training. \nRather than treating these approaches as isolated research trends\, this lecture frames them as complementary analytical tools that address key questions in data analysis: What drives model predictions? What would change under intervention? And how can models generalize across time and settings? Through this integrated perspective\, the lecture aims to provide practical insight into how these three methods can be applied to real-world data analysis and inspire new research and application opportunities.
URL:https://www.ibs.re.kr/bimag/event/expanding-the-data-analysis-toolkit-explainable-ai-causal-learning-and-time-series-foundation-models-daeil-jang/
LOCATION:B232 Seminar Room\, IBS\, 55 Expo-ro Yuseong-gu\, Daejeon\, Daejeon\, 34126\, Korea\, Republic of
CATEGORIES:Biomedical Mathematics Seminar
ORGANIZER;CN="Jae Kyoung Kim":MAILTO:jaekkim@kaist.ac.kr
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=Asia/Seoul:20251230T160000
DTEND;TZID=Asia/Seoul:20251230T170000
DTSTAMP:20260430T164418
CREATED:20251224T001815Z
LAST-MODIFIED:20251229T112942Z
UID:12054-1767110400-1767114000@www.ibs.re.kr
SUMMARY:Rationalizing Therapeutics: Mathematical Insights into Drug and Cell Therapy Development - Seokjoo Chae
DESCRIPTION:Mathematical modeling provides essential quantitative insights that accelerate drug and cell therapy development. In this presentation\, we utilize kinetic frameworks to optimize the design of molecular glues by elucidating their biophysical determinants and identify a key target for NK cell-mediated immunotherapy through systematic data analysis. Collectively\, we demonstrate how mathematical strategies can effectively guide and advance the development of next-generation therapeutics.
URL:https://www.ibs.re.kr/bimag/event/rationalizing-therapeutics-mathematical-insights-into-drug-and-cell-therapy-development-seokjoo-chae/
LOCATION:B232 Seminar Room\, IBS\, 55 Expo-ro Yuseong-gu\, Daejeon\, Daejeon\, 34126\, Korea\, Republic of
CATEGORIES:Biomedical Mathematics Seminar
ORGANIZER;CN="Jae Kyoung Kim":MAILTO:jaekkim@kaist.ac.kr
END:VEVENT
END:VCALENDAR