In SciPy, what is 'slinear' interpolation?

I can't find an explanation in the documentation or anywhere online. What does 'slinear' stand for and what does it do?

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Looking at the source of `scipy/interpolate/interpolate.py`, `slinear` is a spline of order 1

``````if kind in ['zero', 'slinear', 'quadratic', 'cubic']:
order = {'nearest': 0, 'zero': 0,'slinear': 1,
kind = 'spline'
``````

...

``````if kind in ('linear', 'nearest'):
# Make a "view" of the y array that is rotated to the interpolation
# axis.
minval = 2
if kind == 'linear':
self._call = self._call_linear
elif kind == 'nearest':
self.x_bds = (x[1:] + x[:-1]) / 2.0
self._call = self._call_nearest
else:
minval = order + 1
self._call = self._call_spline
self._spline = splmake(x, y, order=order)
``````

Since the docs for `splmake` state:

``````def splmake(xk, yk, order=3, kind='smoothest', conds=None):
"""
Return a representation of a spline given data-points at internal knots
...
``````
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You beat me to it. I came up with the same conclusion. –  Nils Werner Jul 10 at 14:31
@NilsWerner Though if both of us had to resort to the source, it's a good indication that the docs are incomplete. –  Hooked Jul 10 at 14:38
When might one choose `slinear` over `linear`? A very brief test shows `linear` to be faster and returns the same result. –  Kyler Brown Jul 10 at 14:42
@Hooked, I have just posted a pull request to the main repo that fixes this oversight. –  Nils Werner Jul 10 at 14:49