Graduate Thesis Or Dissertation
Stokes, Gauss, and Bayes walk into a bar... 公开 Deposited
https://scholar.colorado.edu/concern/graduate_thesis_or_dissertations/gq67jr16q
- Abstract
- This thesis consists of three distinct projects. The first is a study of microbial aggregate fragmentation, in which we develop a dynamical model of aggregate deformation and breakage and use it to obtain a post-fragmentation density function. The second and third projects deal with dimensionality reduction in machine learning problems. In the second project, we derive a one-pass sparsified Gaussian mixture model to perform clustering analysis on high-dimensional streaming data. The model estimates parameters in dense space while storing and performing computations in a compressed space. In the final project, we build an expert system classifier with a Bayesian network for use on high-volume streaming data. Our approach is specialized to reduce the number of observations while obtaining sufficient labeled training data in a regime of extreme class-imbalance and expensive oracle queries.
- Creator
- Date Issued
- 2019
- Academic Affiliation
- Advisor
- Committee Member
- Degree Grantor
- Commencement Year
- Subject
- 最新修改
- 2019-11-15
- Resource Type
- 权利声明
- Language