Kernel method for persistence diagrams via kernel embedding and weight factor

12 Jun 2017  ·  Genki Kusano, Kenji Fukumizu, Yasuaki Hiraoka ·

Topological data analysis is an emerging mathematical concept for characterizing shapes in multi-scale data. In this field, persistence diagrams are widely used as a descriptor of the input data, and can distinguish robust and noisy topological properties. Nowadays, it is highly desired to develop a statistical framework on persistence diagrams to deal with practical data. This paper proposes a kernel method on persistence diagrams. A theoretical contribution of our method is that the proposed kernel allows one to control the effect of persistence, and, if necessary, noisy topological properties can be discounted in data analysis. Furthermore, the method provides a fast approximation technique. The method is applied into several problems including practical data in physics, and the results show the advantage compared to the existing kernel method on persistence diagrams.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Graph Classification NEURON-Average PWGK Accuracy 62.80 # 5
Graph Classification NEURON-BINARY PWGK Accuracy 80.1 # 5
Graph Classification NEURON-MULTI PWGK Accuracy 45.5 # 4

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