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ERICA prediction #86

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edvardlindelof opened this issue Jul 5, 2017 · 2 comments
Open
5 tasks

ERICA prediction #86

edvardlindelof opened this issue Jul 5, 2017 · 2 comments
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@edvardlindelof
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edvardlindelof commented Jul 5, 2017

Stuff to do/ideas I want to try:

@edvardlindelof edvardlindelof self-assigned this Jul 5, 2017
edvardlindelof added a commit to edvardlindelof/ERICA-prediction that referenced this issue Jul 6, 2017
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edvardlindelof added a commit to edvardlindelof/ERICA-prediction that referenced this issue Jul 11, 2017
edvardlindelof added a commit to edvardlindelof/ERICA-prediction that referenced this issue Jul 11, 2017
edvardlindelof added a commit to edvardlindelof/ERICA-prediction that referenced this issue Jul 16, 2017
edvardlindelof added a commit to edvardlindelof/ERICA-prediction that referenced this issue Jul 26, 2017
edvardlindelof added a commit to edvardlindelof/ERICA-prediction that referenced this issue Jul 28, 2017
@edvardlindelof edvardlindelof added this to the ToDO milestone Aug 9, 2017
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edvardlindelof commented Aug 9, 2017

QLasso feature engineering notes

0809: categorical time-of-week feature is quite important in article (e.g. for one hospital using only time-of-week feature gives mse of 2700 while including all features gives 1700). I've gotten the training mse down only to 8000 but I think this is about NAL and not about the method
0811: time-of-week only gives training mse 8200 (testing mse 530-2700 in article). Including low-prio-patients-inqueue feature reduces it by 400 (300, 500 etc in article). Including not-so-detailed workload features reduces it by 100 (100, 700 etc in article). Including a bunch of rolling averages of the wait times reduces it by 100 (20ish in article). Including the not-so-detailed workload/capacity features reduces it by 35 (almost 0 in article)

ToDo improvements

  • changing the data aggregation to write data points only when low-prio patients arrive
  • much more detailed workload features e.g. number of mep-patients that have received triage but not met doctor

@edvardlindelof edvardlindelof modified the milestones: InProgress, ToDO Aug 9, 2017
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