statsmodels.tsa.holtwinters.SimpleExpSmoothing¶
-
class
statsmodels.tsa.holtwinters.
SimpleExpSmoothing
(endog, initialization_method=None, initial_level=None)[source]¶ Simple Exponential Smoothing
- Parameters
- endogarray_like
The time series to model.
- initialization_method
str
,optional
Method for initialize the recursions. One of:
None
‘estimated’
‘heuristic’
‘legacy-heuristic’
‘known’
None defaults to the pre-0.12 behavior where initial values are passed as part of
fit
. If any of the other values are passed, then the initial values must also be set when constructing the model. If ‘known’ initialization is used, then initial_level must be passed, as well as initial_trend and initial_seasonal if applicable. Default is ‘estimated’. “legacy-heuristic” uses the same values that were used in statsmodels 0.11 and earlier.- initial_level
float
,optional
The initial level component. Required if estimation method is “known”. If set using either “estimated” or “heuristic” this value is used. This allows one or more of the initial values to be set while deferring to the heuristic for others or estimating the unset parameters.
See also
ExponentialSmoothing
Exponential smoothing with trend and seasonal components.
Holt
Exponential smoothing with a trend component.
Notes
This is a full implementation of the simple exponential smoothing as per [1]. SimpleExpSmoothing is a restricted version of
ExponentialSmoothing
.References
- 1
Hyndman, Rob J., and George Athanasopoulos. Forecasting: principles and practice. OTexts, 2014.
- Attributes
endog_names
Names of endogenous variables.
exog_names
The names of the exogenous variables.
Methods
fit
([smoothing_level, optimized, …])Fit the model
fix_params
(values)Temporarily fix parameters for estimation.
from_formula
(formula, data[, subset, drop_cols])Create a Model from a formula and dataframe.
hessian
(params)The Hessian matrix of the model.
information
(params)Fisher information matrix of model.
initial_values
([initial_level, …])Compute initial values used in the exponential smoothing recursions.
Initialize (possibly re-initialize) a Model instance.
loglike
(params)Log-likelihood of model.
predict
(params[, start, end])In-sample and out-of-sample prediction.
score
(params)Score vector of model.
Methods
fit
([smoothing_level, optimized, …])Fit the model
fix_params
(values)Temporarily fix parameters for estimation.
from_formula
(formula, data[, subset, drop_cols])Create a Model from a formula and dataframe.
hessian
(params)The Hessian matrix of the model.
information
(params)Fisher information matrix of model.
initial_values
([initial_level, …])Compute initial values used in the exponential smoothing recursions.
Initialize (possibly re-initialize) a Model instance.
loglike
(params)Log-likelihood of model.
predict
(params[, start, end])In-sample and out-of-sample prediction.
score
(params)Score vector of model.
Properties
Names of endogenous variables.
The names of the exogenous variables.