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MINDS Seminar on Mathematical Data Science

기간 : 2024-03-26 ~ 2024-03-26
시간 : 17:00 ~ 18:00
개최 장소 : Math Bldg.404&Online streaming (Zoom)
개요
MINDS Seminar on Mathematical Data Science
분야Field
날짜Date 2024-03-26 ~ 2024-03-26 시간Time 17:00 ~ 18:00
장소Place Math Bldg.404&Online streaming (Zoom) 초청자Host
연사Speaker Jisu Kim 소속Affiliation Seoul National University
TOPIC MINDS Seminar on Mathematical Data Science
소개 및 안내사항Content

Title : Statistical Inference For Geometric and Topological Data

Speaker : Jisu Kim (Seoul National University)

Abstract :

Geometric and topological structures can aid statistics in several ways. In high dimensional statistics, geometric structures can be used to reduce dimensionality. High dimensional data entails the curse of dimensionality, which can be avoided if there are low dimensional geometric structures. On the other hand, geometric and topological structures also provide useful information. Structures may carry scientific meaning about the data and can be used as features to enhance supervised or unsupervised learning. In this talk, I will explore how statistical inference can be done on geometric and topological structures. First, given a manifold assumption, I will explore the minimax rate for estimating the dimension of the manifold. Second, also under the manifold assumption, I will explore the minimax rate for estimating the reach, which is a regularity quantity depicting how a manifold is smooth and far from self-intersecting. Third, I will investigate inference on cluster trees, which is a hierarchy tree of high-density clusters of a density function. Fourth, I will investigate inference on persistent homology, which quantifies salient topological features that appear at different resolutions of the data.

link : https://us06web.zoom.us/j/6888961076?pwd=ejYxN05jNmhUa25PU2JzSUJvQ1haQT09

학회명Field MINDS Seminar on Mathematical Data Science
날짜Date 2024-03-26 ~ 2024-03-26 시간Time 17:00 ~ 18:00
장소Place Math Bldg.404&Online streaming (Zoom) 초청자Host
소개 및 안내사항Content

Title : Statistical Inference For Geometric and Topological Data

Speaker : Jisu Kim (Seoul National University)

Abstract :

Geometric and topological structures can aid statistics in several ways. In high dimensional statistics, geometric structures can be used to reduce dimensionality. High dimensional data entails the curse of dimensionality, which can be avoided if there are low dimensional geometric structures. On the other hand, geometric and topological structures also provide useful information. Structures may carry scientific meaning about the data and can be used as features to enhance supervised or unsupervised learning. In this talk, I will explore how statistical inference can be done on geometric and topological structures. First, given a manifold assumption, I will explore the minimax rate for estimating the dimension of the manifold. Second, also under the manifold assumption, I will explore the minimax rate for estimating the reach, which is a regularity quantity depicting how a manifold is smooth and far from self-intersecting. Third, I will investigate inference on cluster trees, which is a hierarchy tree of high-density clusters of a density function. Fourth, I will investigate inference on persistent homology, which quantifies salient topological features that appear at different resolutions of the data.

link : https://us06web.zoom.us/j/6888961076?pwd=ejYxN05jNmhUa25PU2JzSUJvQ1haQT09

성명Field MINDS Seminar on Mathematical Data Science
날짜Date 2024-03-26 ~ 2024-03-26 시간Time 17:00 ~ 18:00
소속Affiliation Seoul National University 초청자Host
소개 및 안내사항Content

Title : Statistical Inference For Geometric and Topological Data

Speaker : Jisu Kim (Seoul National University)

Abstract :

Geometric and topological structures can aid statistics in several ways. In high dimensional statistics, geometric structures can be used to reduce dimensionality. High dimensional data entails the curse of dimensionality, which can be avoided if there are low dimensional geometric structures. On the other hand, geometric and topological structures also provide useful information. Structures may carry scientific meaning about the data and can be used as features to enhance supervised or unsupervised learning. In this talk, I will explore how statistical inference can be done on geometric and topological structures. First, given a manifold assumption, I will explore the minimax rate for estimating the dimension of the manifold. Second, also under the manifold assumption, I will explore the minimax rate for estimating the reach, which is a regularity quantity depicting how a manifold is smooth and far from self-intersecting. Third, I will investigate inference on cluster trees, which is a hierarchy tree of high-density clusters of a density function. Fourth, I will investigate inference on persistent homology, which quantifies salient topological features that appear at different resolutions of the data.

link : https://us06web.zoom.us/j/6888961076?pwd=ejYxN05jNmhUa25PU2JzSUJvQ1haQT09

성명Field MINDS Seminar on Mathematical Data Science
날짜Date 2024-03-26 ~ 2024-03-26 시간Time 17:00 ~ 18:00
호실Host 인원수Affiliation Jisu Kim
사용목적Affiliation 신청방식Host Seoul National University
소개 및 안내사항Content

Title : Statistical Inference For Geometric and Topological Data

Speaker : Jisu Kim (Seoul National University)

Abstract :

Geometric and topological structures can aid statistics in several ways. In high dimensional statistics, geometric structures can be used to reduce dimensionality. High dimensional data entails the curse of dimensionality, which can be avoided if there are low dimensional geometric structures. On the other hand, geometric and topological structures also provide useful information. Structures may carry scientific meaning about the data and can be used as features to enhance supervised or unsupervised learning. In this talk, I will explore how statistical inference can be done on geometric and topological structures. First, given a manifold assumption, I will explore the minimax rate for estimating the dimension of the manifold. Second, also under the manifold assumption, I will explore the minimax rate for estimating the reach, which is a regularity quantity depicting how a manifold is smooth and far from self-intersecting. Third, I will investigate inference on cluster trees, which is a hierarchy tree of high-density clusters of a density function. Fourth, I will investigate inference on persistent homology, which quantifies salient topological features that appear at different resolutions of the data.

link : https://us06web.zoom.us/j/6888961076?pwd=ejYxN05jNmhUa25PU2JzSUJvQ1haQT09

Admin Admin · 2024-03-25 09:35 · 조회 134
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