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Weekly Report - 18/11/2016 #7

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amritbhanu opened this issue Oct 18, 2016 · 4 comments
Closed

Weekly Report - 18/11/2016 #7

amritbhanu opened this issue Oct 18, 2016 · 4 comments

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@amritbhanu
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DOING:

Running:

  • Does stability help classification? Tuned and untuned? Multigoal fscore and jaccard score
  • Heat Map with tags and topics for different datasets. (With tuning)
  • Tune svm and lda, just for fscore (kernel, C, degree, learning rate)

roadblocks:

  • Nothing yet

admin:

  • No
@amritbhanu amritbhanu added To Dos and removed To Dos labels Oct 18, 2016
@timm
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timm commented Oct 21, 2016

ok

@timm
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timm commented Oct 23, 2016

we need those charts on "tuning improves classification" as part of the icse replies

@amritbhanu
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on it

@amritbhanu
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Results:

  • Solid lines represents tuned results and dotted lines untuned.
  • tuning improves f2scores by minimum 25-30% than untuned settings.
  • tuning improves raw scores (jaccard) by minimum 80% and maximum of 200%

file

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