Hi Everyone!
I am trying to figure out how to ungroup the frequency from 6-10 days to 6 times 7 times 8 times 9 times.
Hey LeoM
Afaik, currently there is no direct way to customize the buckets generated by the frequency metric in the event segmentation chart. The 6-10 days bucket is auto generated by this chart.
This could be a good feature idea and you can try putting this in front of the Product Team by submitting the request in here.
A long shot approach will be to try creating user segments with actual event count in the time bound interval using the in each clause. But I suspect this may come with some caveats and you might not be able to create the exact interpretation as the frequency metric.
Hope this helps.
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