Importance attribution in neural networks by means of persistence
landscapes of time series
- URL: http://arxiv.org/abs/2302.03132v1
- Date: Mon, 6 Feb 2023 21:43:39 GMT
- Title: Importance attribution in neural networks by means of persistence
landscapes of time series
- Authors: Aina Ferr\`a, Carles Casacuberta, Oriol Pujol
- Abstract summary: We include a gating layer in the network's architecture that is able to identify the most relevant landscape levels for the classification task.
We reconstruct an approximate shape of the time series that gives insight into the classification decision.
- Score: 0.5156484100374058
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We propose and implement a method to analyze time series with a neural
network using a matrix of area-normalized persistence landscapes obtained
through topological data analysis. We include a gating layer in the network's
architecture that is able to identify the most relevant landscape levels for
the classification task, thus working as an importance attribution system.
Next, we perform a matching between the selected landscape functions and the
corresponding critical points of the original time series. From this matching
we are able to reconstruct an approximate shape of the time series that gives
insight into the classification decision. We test this technique with input
data from a dataset of electrocardiographic signals.
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