Thursday, April 3, 2025

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2025-04-03 / 11:50 ~ 12:30
대학원생 세미나 - 대학원생 세미나: Coloring tournaments: Structures and algorithms 인쇄
by 김석범(카이스트 수리과학과 & 기초과학연구원 이산수학그룹)
Graph coloring is one of the central topics in graph theory, and there have been extensive studies about graph coloring and its variants. In this talk, we focus on the structural and algorithmic aspects of graph coloring together with their interplay. Specifically, we explain how local information on graphs can be transformed into global properties and how these can be used to investigate coloring problems from structural and algorithmic perspectives. We also introduce the notion of dicoloring, a variant of coloring defined for directed graphs, and present our recent work on dicoloring for a special type of directed graph called tournaments.
2025-04-04 / 14:00 ~ 16:00
IBS-KAIST 세미나 - 수리생물학: [Journal Club] Accurate predictions on small data with a tabular foundation model 인쇄
by 임동주(KAIST)
In this talk, we discuss the paper “Accurate predictions on small data with a tabular foundation model” by Noah Hollmann et al., Nature (2025).
2025-04-09 / 16:30 ~ 17:30
학과 세미나/콜로퀴엄 - 미분기하 세미나: 인쇄
by 서검교(숙명여자대학교)
Serrin’s overdetermined problem is a famous result in mathematics that deals with the uniqueness and symmetry of solutions to certain boundary value problems. It is called "overdetermined" because it has more boundary conditions than usually required to determine a solution, which leads to strong restrictions on the shape of the domain. In this talk, we discuss overdetermined boundary value problems in a Riemannian manifold and discuss a Serrin-type symmetry result to the solution to an overdetermined Steklov eigenvalue problem on a domain in a Riemannian manifold with nonnegative Ricci curvature and it will be discussed about an overdetermined problems with a nonconstant Neumann boundary condition in a warped product manifold.
2025-04-03 / 16:30 ~ 17:30
학과 세미나/콜로퀴엄 - 박사논문심사: 고차 시컨트 다양체의 정규성과 특이성 인쇄
by ()

2025-04-03 / 15:00 ~ 16:00
학과 세미나/콜로퀴엄 - 박사논문심사: 뤼나-뷔스트 이론의 관점으로 본 수반 다양체의 이차곡선 매개변수공간 인쇄
by ()

2025-04-08 / 16:00 ~ 17:00
SAARC 세미나 - SAARC 세미나: 인쇄
by 김승혁(한양대학교 수학과)
We present recent developments on the quantitative stability of the Sobolev inequalities, as well as the stability of critical points of their Euler–Lagrange equations.  In particular, we introduce our recent joint work with H. Chen (Hanyang University) and J. Wei (The Chinese University of Hong Kong) on the stability of the Yamabe problem, the fractional Lane–Emden equation for all possible orders, and the Brezis-Nirenberg problem.
2025-04-03 / 16:15 ~ 17:15
학과 세미나/콜로퀴엄 - 콜로퀴엄: 인쇄
by ()
TBD
2025-04-04 / 11:00 ~ 12:00
IBS-KAIST 세미나 - IBS-KAIST 세미나: 인쇄
by ()
The advent of single-cell transcriptomics has brought a greatly improved understanding of the heterogeneity of gene expression across cell types, with important applications in developmental biology and cancer research. Single-cell RNA sequencing datasets, which are based on tags called universal molecular identifiers, typically include a large number of zeroes. For such datasets, genes with even moderate expression may be poorly represented in sequencing count matrices. Standard pipelines often retain only a small subset of genes for further analysis, but we address the problem of estimating relative expression across the entire transcriptome by adopting a multivariate lognormal Poisson count model. We propose empirical Bayes estimation procedures to estimate latent cell-cell correlations, and to recover meaningful estimates for genes with low expression. For small groups of cells, an important sampling procedure uses the full cell-cell correlation structure and is computationally feasible. For larger datasets, we propose a gene-level shrinkage procedure that has favorable performance for datasets with approximately compound symmetric cell-cell correlation. A fast procedure that incorporates matrix approximations is also promising, and extensible to very large datasets. We apply our approaches to simulated and real datasets, and demonstrate favorable performance in comparisons to competing normalization approaches. We further illustrate the applications of our approach in downstream analyses, including cell-type clustering and identification.
Events for the 취소된 행사 포함 모두인쇄
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