8000 LogisticRegression see also should include LogisticRegressionCV · Issue #9995 · scikit-learn/scikit-learn · GitHub
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jnothman opened this issue Oct 24, 2017 · 0 comments · Fixed by #10022
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LogisticRegression see also should include LogisticRegressionCV #9995

jnothman opened this issue Oct 24, 2017 · 0 comments · Fixed by #10022
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Documentation good first issue Easy with clear instructions to resolve help wanted

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@jnothman
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See also section is in the class docstring but lacks this obvious reference. The reference should be reciprocal, and it might be worth checking other CV estimators for similar cross-references

@jnothman jnothman added Documentation good first issue Easy with clear instructions to resolve help wanted labels Oct 24, 2017
srajanpaliwal added a commit to srajanpaliwal/scikit-learn that referenced this issue Oct 26, 2017
…onCV(scikit-learn#9995)

  -  Added reference to LogisticRegressionCV in LogisticRegression.
  -  Added reference to OrthogonalMatchingPursuitCV in OrthogonalMatchingPursuit.
  -  Added references for ElasticNetCV, MultiTaskElasticNet, MultiTaskLasso.
  -  Cross-referenced RFE and RFECV in each others docstring.
  -  Cross-referenced CalibratedClassifierCV in _CalibrationClassifier
  -  Added reference to LassoLarsIC in docstring of LassoLars.
  -  Added description to references in See also section of Ridge, RidgeClassifier.
srajanpaliwal added a commit to srajanpaliwal/scikit-learn that referenced this issue Oct 27, 2017
…onCV(scikit-learn#9995)

  -  Added reference to LogisticRegressionCV in LogisticRegression.
  -  Added reference to OrthogonalMatchingPursuitCV in OrthogonalMatchingPursuit.
  -  Added references for ElasticNetCV, MultiTaskElasticNet, MultiTaskLasso.
  -  Cross-referenced RFE and RFECV in each others docstring.
  -  Cross-referenced CalibratedClassifierCV in _CalibrationClassifier
  -  Added reference to LassoLarsIC in docstring of LassoLars.
  -  Added description to references in See also section of Ridge, RidgeClassifier.
donigian added a commit to donigian/scikit-learn that referenced this issue Oct 28, 2017
…cs/donigian-update-contribution-guidelines

* 'master' of github.com:scikit-learn/scikit-learn: (23 commits)
  fixes scikit-learn#10031: fix attribute name and shape in documentation (scikit-learn#10033)
  [MRG+1] add changelog entry for fixed and merged PR scikit-learn#10005 issue scikit-learn#9633 (scikit-learn#10025)
  [MRG] Fix LogisticRegression see also should include LogisticRegressionCV(scikit-learn#9995) (scikit-learn#10022)
  [MRG + 1] Labels of clustering should start at 0 or -1 if noise (scikit-learn#10015)
  MAINT Remove redundancy in scikit-learn#9552 (scikit-learn#9573)
  [MRG+1] correct comparison in GaussianNB for 'priors' (scikit-learn#10005)
  [MRG + 1] ENH add check_inverse in FunctionTransformer (scikit-learn#9399)
  [MRG] FIX bug in nested set_params usage (scikit-learn#9999)
  [MRG+1] Fix LOF and Isolation benchmarks (scikit-learn#9798)
  [MRG + 1] Fix negative inputs checking in mean_squared_log_error (scikit-learn#9968)
  DOC Fix typo (scikit-learn#9996)
  DOC Fix typo: x axis -> y axis (scikit-learn#9985)
  improve example plot_forest_iris.py (scikit-learn#9989)
  [MRG+1] Deprecate pooling_func unused parameter in AgglomerativeClustering (scikit-learn#9875)
  DOC update news
  DOC Fix three typos in manifold documentation (scikit-learn#9990)
  DOC add missing dot in docstring
  DOC Add what's new for 0.19.1 (scikit-learn#9983)
  Improve readability of outlier detection example. (scikit-learn#9973)
  DOC: Fixed typo (scikit-learn#9977)
  ...
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