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arxiv: 1511.00871 · v1 · pith:W53KHS43new · submitted 2015-11-03 · 💻 cs.CV · cs.LG· stat.ML

Properties of the Sample Mean in Graph Spaces and the Majorize-Minimize-Mean Algorithm

classification 💻 cs.CV cs.LGstat.ML
keywords meansamplegraphspacesalgorithmalgorithmsgraphsmajorize-minimize-mean
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One of the most fundamental concepts in statistics is the concept of sample mean. Properties of the sample mean that are well-defined in Euclidean spaces become unwieldy or even unclear in graph spaces. Open problems related to the sample mean of graphs include: non-existence, non-uniqueness, statistical inconsistency, lack of convergence results of mean algorithms, non-existence of midpoints, and disparity to midpoints. We present conditions to resolve all six problems and propose a Majorize-Minimize-Mean (MMM) Algorithm. Experiments on graph datasets representing images and molecules show that the MMM-Algorithm best approximates a sample mean of graphs compared to six other mean algorithms.

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