Publication | Open Access
An Information Geometry of Statistical Manifold Learning
28
Citations
32
References
2014
Year
Geometric LearningEngineeringMachine LearningData ScienceGeometryManifold LearningModel ComplexityManifold ModelingStatistical InferenceDimensionality ReductionNonlinear Dimensionality ReductionInformation Geometry
Manifold learning seeks low-dimensional representations of high-dimensional data. The main tactics have been exploring the geometry in an input data space and an output embedding space. We develop a manifold learning theory in a hypothesis space consisting of models. A model means a specific instance of a collection of points, e.g., the input data collectively or the output embedding collectively. The semi-Riemannian metric of this hypothesis space is uniquely derived in closed form based on the information geometry of probability distributions. There, manifold learning is interpreted as a trajectory of intermediate models. The volume of a continuous region reveals an amount of information. It can be measured to define model complexity and embedding quality. This provides deep unified perspectives of manifold learning theory.
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