pandas.ewmcorr¶
- pandas.ewmcorr(arg1, arg2=None, com=None, span=None, halflife=None, min_periods=0, freq=None, pairwise=None, how=None, ignore_na=False, adjust=True)¶
Exponentially-weighted moving correlation
Parameters: arg1 : Series, DataFrame, or ndarray
arg2 : Series, DataFrame, or ndarray, optional
if not supplied then will default to arg1 and produce pairwise output
com : float. optional
Center of mass: ,
span : float, optional
Specify decay in terms of span,
halflife : float, optional
Specify decay in terms of halflife,
min_periods : int, default 0
Minimum number of observations in window required to have a value (otherwise result is NA).
freq : None or string alias / date offset object, default=None
Frequency to conform to before computing statistic
adjust : boolean, default True
Divide by decaying adjustment factor in beginning periods to account for imbalance in relative weightings (viewing EWMA as a moving average)
how : string, default ‘mean’
Method for down- or re-sampling
ignore_na : boolean, default False
Ignore missing values when calculating weights; specify True to reproduce pre-0.15.0 behavior
pairwise : bool, default False
If False then only matching columns between arg1 and arg2 will be used and the output will be a DataFrame. If True then all pairwise combinations will be calculated and the output will be a Panel in the case of DataFrame inputs. In the case of missing elements, only complete pairwise observations will be used.
Returns: y : type of input argument
Notes
Either center of mass, span or halflife must be specified
EWMA is sometimes specified using a “span” parameter s, we have that the decay parameter is related to the span as
where c is the center of mass. Given a span, the associated center of mass is
So a “20-day EWMA” would have center 9.5.
- When adjust is True (default), weighted averages are calculated using weights
- (1-alpha)**(n-1), (1-alpha)**(n-2), ..., 1-alpha, 1.
- When adjust is False, weighted averages are calculated recursively as:
- weighted_average[0] = arg[0]; weighted_average[i] = (1-alpha)*weighted_average[i-1] + alpha*arg[i].
When ignore_na is False (default), weights are based on absolute positions. For example, the weights of x and y used in calculating the final weighted average of [x, None, y] are (1-alpha)**2 and 1 (if adjust is True), and (1-alpha)**2 and alpha (if adjust is False).
When ignore_na is True (reproducing pre-0.15.0 behavior), weights are based on relative positions. For example, the weights of x and y used in calculating the final weighted average of [x, None, y] are 1-alpha and 1 (if adjust is True), and 1-alpha and alpha (if adjust is False).
More details can be found at http://pandas.pydata.org/pandas-docs/stable/computation.html#exponentially-weighted-moment-functions