COMPUTATIONAL METHODS IN MACHINE LEARNING: TRANSPORT MODEL, HAAR WAVELET, DNA CLASSIFICATION, AND MRI
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Abstract
With the increasing amount of raw data generation produced every day, it
has become pertinent to develop new techniques for data representation, analyses,
and interpretation. Motivated by real-world applications, there is a trending interest
in techniques such as dimensionality reduction, wavelet decomposition, and
classication methods that allow for better understanding of data. This thesis details
the development of a new non-linear dimension reduction technique based on
transport model by advection. We provide a series of computational experiments,
and practical applications in hyperspectral images to illustrate the strength of our
algorithm. In wavelet decomposition, we construct a novel Haar approximation
technique for functions f in the Lp-space, 0 < p < 1, such that the approximants
have support contained in the support of f. Furthermore, a classification algorithm
to study tissue-specific deoxyribonucleic acids (DNA) is constructed using the support
vector machine. In magnetic resonance imaging, we provide an extension of
the T2-store-T2 magnetic resonance relaxometry experiment used in the analysis
of magnetization signal from 2 to N exchanging sites, where N >= 2.