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[MRG] DOC updating changelog links on homepage #6901
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@@ -205,13 +205,13 @@ | |||
<h4>News</h4> | |||
<ul> | |||
<li><em>On-going development:</em> | |||
<a href="whats_new.html"><em>What's new</em> (Changelog)</a> | |||
<a href="/dev/whats_new.html"><em>What's new</em> (Changelog)</a> |
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I think it should be ../dev/whats_new.html
.
The best way to make sure would be if you could rebase on master. The CircleCI build was fixed and we could look at the generated doc in CircleCI.
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@lesteve In this case, /dev/whats_new.html
and ../dev/whats_new.html
are equivalent because ..
of stable/
is /
That being said, do you want me to change it to ../dev/whats_new.html
anyway? I don't see an advantage, but if you do I can update.
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I think you are right actually, /dev/whats_new.html
does work, not sure how I tested this originally.
The CircleCI build looks fine (although it doesn't test the /dev/whats_new.html
). +1 for merge.
LGTM |
… and documentation. Fixes #6862 (#6907) * Make KernelCenterer a _pairwise operation Replicate solution to 9a52077 except that `_pairwise` should always be `True` for `KernelCenterer` because it's supposed to receive a Gram matrix. This should make `KernelCenterer` usable in `Pipeline`s. Happy to add tests, just tell me what should be covered. * Adding test for PR #6900 * Simplifying imports and test * updating changelog links on homepage (#6901) * first commit * changed binary average back to macro * changed binomialNB to multinomialNB * emphasis on "higher return values are better..." (#6909) * fix typo in comment of hierarchical clustering (#6912) * [MRG] Allows KMeans/MiniBatchKMeans to use float32 internally by using cython fused types (#6846) * Fix sklearn.base.clone for all scipy.sparse formats (#6910) * DOC If git is not installed, need to catch OSError Fixes #6860 * DOC add what's new for clone fix * fix a typo in ridge.py (#6917) * pep8 * TST: Speed up: cv=2 This is a smoke test. Hence there is no point having cv=4 * Added support for sample_weight in linearSVR, including tests and documentation * Changed assert to assert_allclose and assert_almost_equal, reduced the test tolerance * Fixed pep8 violations and sampleweight format * rebased with upstream
… and documentation. Fixes scikit-learn#6862 (scikit-learn#6907) * Make KernelCenterer a _pairwise operation Replicate solution to scikit-learn@9a52077 except that `_pairwise` should always be `True` for `KernelCenterer` because it's supposed to receive a Gram matrix. This should make `KernelCenterer` usable in `Pipeline`s. Happy to add tests, just tell me what should be covered. * Adding test for PR scikit-learn#6900 * Simplifying imports and test * updating changelog links on homepage (scikit-learn#6901) * first commit * changed binary average back to macro * changed binomialNB to multinomialNB * emphasis on "higher return values are better..." (scikit-learn#6909) * fix typo in comment of hierarchical clustering (scikit-learn#6912) * [MRG] Allows KMeans/MiniBatchKMeans to use float32 internally by using cython fused types (scikit-learn#6846) * Fix sklearn.base.clone for all scipy.sparse formats (scikit-learn#6910) * DOC If git is not installed, need to catch OSError Fixes scikit-learn#6860 * DOC add what's new for clone fix * fix a typo in ridge.py (scikit-learn#6917) * pep8 * TST: Speed up: cv=2 This is a smoke test. Hence there is no point having cv=4 * Added support for sample_weight in linearSVR, including tests and documentation * Changed assert to assert_allclose and assert_almost_equal, reduced the test tolerance * Fixed pep8 violations and sampleweight format * rebased with upstream
… and documentation. Fixes scikit-learn#6862 (scikit-learn#6907) * Make KernelCenterer a _pairwise operation Replicate solution to scikit-learn@9a52077 except that `_pairwise` should always be `True` for `KernelCenterer` because it's supposed to receive a Gram matrix. This should make `KernelCenterer` usable in `Pipeline`s. Happy to add tests, just tell me what should be covered. * Adding test for PR scikit-learn#6900 * Simplifying imports and test * updating changelog links on homepage (scikit-learn#6901) * first commit * changed binary average back to macro * changed binomialNB to multinomialNB * emphasis on "higher return values are better..." (scikit-learn#6909) * fix typo in comment of hierarchical clustering (scikit-learn#6912) * [MRG] Allows KMeans/MiniBatchKMeans to use float32 internally by using cython fused types (scikit-learn#6846) * Fix sklearn.base.clone for all scipy.sparse formats (scikit-learn#6910) * DOC If git is not installed, need to catch OSError Fixes scikit-learn#6860 * DOC add what's new for clone fix * fix a typo in ridge.py (scikit-learn#6917) * pep8 * TST: Speed up: cv=2 This is a smoke test. Hence there is no point having cv=4 * Added support for sample_weight in linearSVR, including tests and documentation * Changed assert to assert_allclose and assert_almost_equal, reduced the test tolerance * Fixed pep8 violations and sampleweight format * rebased with upstream
Reference Issue
Fixes #6896
What does this implement/fix? Explain your changes.
changelog
links so that each one links to the correct portion of the pagechangelog
link to navigate to/dev/whats_new.html
Any other comments?