Task 2 -- Mandatory Tasks

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Revision as of 13:20, 23 October 2025 by Davrot (talk | contribs) (5)

Errors are an option…

2

Basic:

Scaled by divison max() for every individual frequency band:

3

without preparing the data via /= std:

with equalizing the power via /= std (obviously not the best idea in this case):

4

Phase Coherence

Spectral Coherence

5

Phase Coherence

Spectral Coherence

6

Don’t normalize the time series!


i.e. don’t do something like this:

data -= data.mean(axis=1, keepdims=True)
data /= data.std(axis=1, keepdims=True)

Otherwise you will not classify anything.

Scaled by divison max() for every individual frequency band (Bad times happen):

7

Don’t normalize the time series!


i.e. don’t do something like this:

data -= data.mean(axis=1, keepdims=True)
data /= data.std(axis=1, keepdims=True)

Otherwise you will not classify anything.