Statistical Topological Data Analysis - A Kernel Perspective

NeurIPS 2015 Roland KwittStefan HuberMarc NiethammerWeili LinUlrich Bauer

We consider the problem of statistical computations with persistence diagrams, a summary representation of topological features in data. These diagrams encode persistent homology, a widely used invariant in topological data analysis... (read more)

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