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Geometry-Inspired Sampling Algorithms and Random Graphs- [electronic resource]
Geometry-Inspired Sampling Algorithms and Random Graphs - [electronic resource]
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Geometry-Inspired Sampling Algorithms and Random Graphs- [electronic resource]
자료유형  
 학위논문파일 국외
최종처리일시  
20240214100448
ISBN  
9798380381086
DDC  
004
저자명  
Yang, Elizabeth.
서명/저자  
Geometry-Inspired Sampling Algorithms and Random Graphs - [electronic resource]
발행사항  
[S.l.]: : University of California, Berkeley., 2023
발행사항  
Ann Arbor : : ProQuest Dissertations & Theses,, 2023
형태사항  
1 online resource(112 p.)
주기사항  
Source: Dissertations Abstracts International, Volume: 85-03, Section: B.
주기사항  
Advisor: Rao, Satish.
학위논문주기  
Thesis (Ph.D.)--University of California, Berkeley, 2023.
사용제한주기  
This item must not be sold to any third party vendors.
초록/해제  
요약High-dimensional expansion, a generalization of graph expansion to higher-order edges, has recently garnered significant attention in the theoretical computer science community for the additional boost they give in applications like error-correction and approximate sampling. In this thesis, we explore two problems related to high-dimensional expansion, using tools from the geometry of polynomials as well as high-dimensional convex geometry.First, we study approximate sampling from discrete distributions. The framework for sampling obtained from high-dimensional expansion provides both a natural set of random walks to use in MCMC algorithms, as well as a set of tools for their analysis. We show that the geometric properties (e.g. log-concavity) of a polynomial derived from the distribution allows us to speed up the implementations of these random walks.Next, we study a random graph model called the "random geometric graph," with an eventual goal of understanding its modeling capabilities as well as its high-dimensional expansion properties. Along the way, we prove new results about distinguishing the random geometric graph model from the Erdos-Renyi model, and develop a new geometric toolkit for analyzing these graphs.
일반주제명  
Computer science.
일반주제명  
Mathematics.
일반주제명  
Applied mathematics.
키워드  
High-dimensional expansion
키워드  
High-dimensional geometry
키워드  
Random graph
키워드  
Geometric properties
키워드  
Random walks
기타저자  
University of California, Berkeley Computer Science
기본자료저록  
Dissertations Abstracts International. 85-03B.
기본자료저록  
Dissertation Abstract International
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