Geometric algorithms for interpretable manifold learning
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Koelle, Samson Jonathan
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Abstract
This thesis proposes several algorithms in the area of interpretable unsupervised learning.Chapters 3 and 4 introduce a sparse convex regression approach for identifying local diffeomor-
phisms from a dictionary of interpretable functions. In Chapter 3, this algorithm makes use
of an embedding learned by a manifold learning algorithm, while in Chapter 4, this algorithm
is applied without the use of a precomputed embedding. Chapter 5 then introduces a set of
alternative algorithms that avoid issues stemming from sparse regression, characterizes the
tangent space version of this algorithm as identifying isometries when available, and gives
a two-stage algorithm combining this approach with the computational advantages of the
algorithms in Chapters 3 and 4. Finally, Chapter 6 gives an alternate tangent space estimator
based on a learned embedding, and uses this as an initial estimator to tackle the related
gradient estimation problem. Together, these approaches provide a toolbox of methods for
computing and associating gradient information to learn descriptive parameterizations of
data manifolds.
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Thesis (Ph.D.)--University of Washington, 2022
