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@LinGinQiu
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What does this implement/fix? Explain your changes

impelement the wrapper for paper Mitigating Data Imbalance in Time Series Classification Based on Counterfactual Minority Samples Augmentation. Original code from https://github.com/WangLei-CQU/CFAMG
A easy quick test can be do in tsml_eval/_wip/rt/transformations/collection/imbalance/_cfam.py

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@MatthewMiddlehurst
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Hi @LinGinQiu any updates for this? otherwise I will merge. Feel free to do so yourself also if you dont make any changes to any experiments or evaluation files.

@LinGinQiu
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Hi @LinGinQiu any updates for this? otherwise I will merge. Feel free to do so yourself also if you dont make any changes to any experiments or evaluation files.

Yeah, this is the implementation of CFAM. I think it can be merged since there are no further updates planned. However, @TonyBagnall mentioned that he will review it.

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2 participants