Fit

scalation.modeling.Fit
See theFit companion trait
object Fit

The Fit companion object provides factory methods for assessing quality of fit for standard types of modeling techniques.

Attributes

Companion
trait
Graph
Supertypes
class Object
trait Matchable
class Any
Self type
Fit.type

Members list

Value members

Concrete methods

def help: String

Return the help string that describes the Quality of Fit (QoF) measures provided by the Fit trait. The QoF measures are divided into two groups: general and statistical (that often require degrees of freedom and/or log-likelihoods).

Return the help string that describes the Quality of Fit (QoF) measures provided by the Fit trait. The QoF measures are divided into two groups: general and statistical (that often require degrees of freedom and/or log-likelihoods).

Attributes

See also
def mae(y: VectorD, yp: VectorD, h: Int): Double

Return the Mean Absolute Error (MAE) for the forecasting model under test.

Return the Mean Absolute Error (MAE) for the forecasting model under test.

Value parameters

h

the forecasting horizon or stride (defaults to 1)

y

the given time-series (must be aligned with the forecast)

yp

the forecasted time-series

Attributes

def mae_n(y: VectorD, h: Int): Double

Return the Mean Absolute Error (MAE) for the Naive Model (simple random walk) with horizon/stride h. For comparison with the above method.

Return the Mean Absolute Error (MAE) for the Naive Model (simple random walk) with horizon/stride h. For comparison with the above method.

Value parameters

h

the forecasting horizon or stride (defaults to 1)

y

the given time-series

Attributes

def mase(y: VectorD, yp: VectorD, h: Int): Double

Return the Mean Absolute Scaled Error (MASE) for the given time-series. It is the ratio of MAE of the forecasting model under test and the MAE of the Naive Model (simple random walk).

Return the Mean Absolute Scaled Error (MASE) for the given time-series. It is the ratio of MAE of the forecasting model under test and the MAE of the Naive Model (simple random walk).

Value parameters

h

the forecasting horizon or stride (defaults to 1)

y

the given time-series (must be aligned with the forecast)

yp

the forecasted time-series

Attributes

def qofStatTable: Array[Statistic]

Create a table to store statistics for QoF measures, where each row corresponds to the statistics on a particular QoF measure, e.g., rSq.

Create a table to store statistics for QoF measures, where each row corresponds to the statistics on a particular QoF measure, e.g., rSq.

Attributes

def qofVector(fit: VectorD, cv_fit: Array[Statistic]): VectorD

Collect QoF results for a model and return them in a vector.

Collect QoF results for a model and return them in a vector.

Value parameters

cv_fit

the fit array of statistics for cross-validation (upon test sets)

fit

the fit vector with regard to the training set

Attributes

def smapeF(y: VectorD, yp: VectorD): Double

Return the symmetric Mean Absolute Percentage Error (sMAPE) score.

Return the symmetric Mean Absolute Percentage Error (sMAPE) score.

Value parameters

y

the given time-series (must be aligned with the forecast)

yp

the forecasted time-series

Attributes

def tallyQof(stats: Array[Statistic], qof: VectorD): Unit

Tally the current QoF measures into the statistical accumulators.

Tally the current QoF measures into the statistical accumulators.

Value parameters

qof

the current QoF measure vector

stats

the statistics table being updated

Attributes

Concrete fields

val MIN_FOLDS: Int
val N_QoF: Int
val qofVectorSize: Int