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Multiclass Classification: assert num_classes >=2 #2205
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Not to completely derail what should otherwise be a simple fix, but... This brings up the question of how we want to handle different forms of classification/semantic segmentation:
Torchmetrics originally had a single class for We should decide whether we want We could definitely still add such an assertion for now and change it to |
As you point out, binary etc are args torchmetrics accepts, so I think it makes sense to have this functionality with the existing task |
Just waiting for clarity on whether torchmetrics is planning on supporting the old metrics forever before deciding, but I was leaning towards that too. |
Looks like I misinterpreted, both are supported. Is there anything special we need to do in our trainers to support binary and multilabel, or do we literally just need to pass different |
Summary
Both segmentation and object detection require that the background be included and there is currently a note on these args:
num_classes: Number of prediction classes (including the background)
. Considering every dataaset must have at least 1 class, the min value of num_classes is 2. I propose adding an assertion, to prevent people (like myself!) from forgetting this and settingnum_classes=1
for datasets with a single class.Rationale
This config error has happened to me several times, and can pass silently
Implementation
I suppose we add validation to the BaseTask init
Alternatives
No response
Additional information
No response
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