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    Gaussian process convolutions for Bayesian spatial classification

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    Author
    Best, John K.
    Chair
    Short, Margaret
    Committee
    Goddard, Scott
    Barry, Ron
    McIntyre, Julie
    Keyword
    Gaussian processes
    Spatial analysis (Statistics)
    Metadata
    Show full item record
    URI
    http://hdl.handle.net/11122/8031
    Abstract
    We compare three models for their ability to perform binary spatial classification. A geospatial data set consisting of observations that are either permafrost or not is used for this comparison. All three use an underlying Gaussian process. The first model considers this process to represent the log-odds of a positive classification (i.e. as permafrost). The second model uses a cutoff. Any locations where the process is positive are classified positively, while those that are negative are classified negatively. A probability of misclassification then gives the likelihood. The third model depends on two separate processes. The first represents a positive classification, while the second a negative classification. Of these two, the process with greater value at a location provides the classification. A probability of misclassification is also used to formulate the likelihood for this model. In all three cases, realizations of the underlying Gaussian processes were generated using a process convolution. A grid of knots (whose values were sampled using Markov Chain Monte Carlo) were convolved using an anisotropic Gaussian kernel. All three models provided adequate classifications, but the single and two-process models showed much tighter bounds on the border between the two states.
    Description
    Master's Project (M.S.) University of Alaska Fairbanks, 2016
    Date
    2016-05
    Type
    Master's Project
    Collections
    Mathematics and Statistics

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