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-rw-r--r--numpy/ma/mstats.py38
1 files changed, 19 insertions, 19 deletions
diff --git a/numpy/ma/mstats.py b/numpy/ma/mstats.py
index 7dc5a7cc3..093215e30 100644
--- a/numpy/ma/mstats.py
+++ b/numpy/ma/mstats.py
@@ -33,9 +33,9 @@ __all__ = ['cov','meppf','plotting_positions','meppf','mquantiles',
def winsorize(data, alpha=0.2):
"""Returns a Winsorized version of the input array.
-
- The (alpha/2.) lowest values are set to the (alpha/2.)th percentile,
- and the (alpha/2.) highest values are set to the (1-alpha/2.)th
+
+ The (alpha/2.) lowest values are set to the (alpha/2.)th percentile,
+ and the (alpha/2.) highest values are set to the (1-alpha/2.)th
percentile.
Masked values are skipped.
@@ -44,7 +44,7 @@ def winsorize(data, alpha=0.2):
data : ndarray
Input data to Winsorize. The data is first flattened.
alpha : float
- Percentage of total Winsorization: alpha/2. on the left,
+ Percentage of total Winsorization: alpha/2. on the left,
alpha/2. on the right
"""
@@ -57,8 +57,8 @@ def winsorize(data, alpha=0.2):
#..............................................................................
def trim_both(data, proportiontocut=0.2, axis=None):
- """Trims the data by masking the int(trim*n) smallest and int(trim*n)
- largest values of data along the given axis, where n is the number
+ """Trims the data by masking the int(trim*n) smallest and int(trim*n)
+ largest values of data along the given axis, where n is the number
of unmasked values.
Parameters
@@ -66,11 +66,11 @@ def trim_both(data, proportiontocut=0.2, axis=None):
data : ndarray
Data to trim.
proportiontocut : float
- Percentage of trimming. If n is the number of unmasked values
+ Percentage of trimming. If n is the number of unmasked values
before trimming, the number of values after trimming is:
(1-2*trim)*n.
axis : int
- Axis along which to perform the trimming.
+ Axis along which to perform the trimming.
If None, the input array is first flattened.
Notes
@@ -99,7 +99,7 @@ def trim_both(data, proportiontocut=0.2, axis=None):
#..............................................................................
def trim_tail(data, proportiontocut=0.2, tail='left', axis=None):
- """Trims the data by masking int(trim*n) values from ONE tail of the
+ """Trims the data by masking int(trim*n) values from ONE tail of the
data along the given axis, where n is the number of unmasked values.
Parameters
@@ -107,16 +107,16 @@ def trim_tail(data, proportiontocut=0.2, tail='left', axis=None):
data : ndarray
Data to trim.
proportiontocut : float
- Percentage of trimming. If n is the number of unmasked values
- before trimming, the number of values after trimming is
+ Percentage of trimming. If n is the number of unmasked values
+ before trimming, the number of values after trimming is
(1-trim)*n.
tail : string
- Trimming direction, in ('left', 'right').
- If left, the ``proportiontocut`` lowest values are set to the
- corresponding percentile. If right, the ``proportiontocut``
+ Trimming direction, in ('left', 'right').
+ If left, the ``proportiontocut`` lowest values are set to the
+ corresponding percentile. If right, the ``proportiontocut``
highest values are used instead.
axis : int
- Axis along which to perform the trimming.
+ Axis along which to perform the trimming.
If None, the input array is first flattened.
Notes
@@ -158,7 +158,7 @@ def trim_tail(data, proportiontocut=0.2, tail='left', axis=None):
#..............................................................................
def trimmed_mean(data, proportiontocut=0.2, axis=None):
- """Returns the trimmed mean of the data along the given axis.
+ """Returns the trimmed mean of the data along the given axis.
Trimming is performed on both ends of the distribution.
Parameters
@@ -169,7 +169,7 @@ def trimmed_mean(data, proportiontocut=0.2, axis=None):
Proportion of the data to cut from each side of the data .
As a result, (2*proportiontocut*n) values are actually trimmed.
axis : int
- Axis along which to perform the trimming.
+ Axis along which to perform the trimming.
If None, the input array is first flattened.
"""
@@ -188,7 +188,7 @@ def trimmed_stde(data, proportiontocut=0.2, axis=None):
Proportion of the data to cut from each side of the data .
As a result, (2*proportiontocut*n) values are actually trimmed.
axis : int
- Axis along which to perform the trimming.
+ Axis along which to perform the trimming.
If None, the input array is first flattened.
Notes
@@ -222,7 +222,7 @@ median along the given axis.
data : ndarray
Data to trim.
axis : int
- Axis along which to perform the trimming.
+ Axis along which to perform the trimming.
If None, the input array is first flattened.
"""