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class ELM_3L1_4TS extends ELM_3L1 with ForecasterMat

The ELM_3L1_4TS class uses multiple regression to fit the lagged data. Lag columns ranging from 'lag1' (inclusive) to 'lag2' (exclusive) are added before delegating the problem to the Regression class. A constant term for intercept can be added (@see 'allForms' method) but must not include intercept (column of ones) in initial data matrix.

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  1. ELM_3L1_4TS
  2. ForecasterMat
  3. ELM_3L1
  4. PredictorMat
  5. Predictor
  6. Model
  7. Fit
  8. Error
  9. QoF
  10. AnyRef
  11. Any
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Instance Constructors

  1. new ELM_3L1_4TS(x_: MatriD, y: VectoD, nz: Int = -1, fname_: Strings = null, hparam: HyperParameter = Regression4TS.hp, f0: AFF = f_sigmoid, itran: FunctionV_2V = null)

    x_

    the initial data/input matrix (before lag term expansion)

    y

    the response/output vector

    nz

    the number of nodes in hidden layer (-1 => use default formula)

    fname_

    the feature/variable names

    hparam

    the hyper-parameters

    f0

    the activation function family for layers 1->2 (input to hidden)

    itran

    the inverse transformation function returns responses to original scale

Value Members

  1. final def !=(arg0: Any): Boolean
    Definition Classes
    AnyRef → Any
  2. final def ##(): Int
    Definition Classes
    AnyRef → Any
  3. final def ==(arg0: Any): Boolean
    Definition Classes
    AnyRef → Any
  4. def analyze(x_: MatriD = x, y_: VectoD = y, x_e: MatriD = x, y_e: VectoD = y): PredictorMat

    Analyze a dataset using this model using ordinary training with the 'train' method.

    Analyze a dataset using this model using ordinary training with the 'train' method.

    x_

    the training/full data/input matrix

    y_

    the training/full response/output vector

    x_e

    the test/full data/input matrix

    y_e

    the test/full response/output vector

    Definition Classes
    PredictorMatPredictor
  5. final def asInstanceOf[T0]: T0
    Definition Classes
    Any
  6. var b: VectoD
    Attributes
    protected
    Definition Classes
    PredictorMat
  7. def backwardElim(cols: Set[Int], index_q: Int = index_rSqBar, first: Int = 1): (Int, PredictorMat)

    Perform backward elimination to find the least predictive variable to remove from the existing model, returning the variable to eliminate, the new parameter vector and the new Quality of Fit (QoF).

    Perform backward elimination to find the least predictive variable to remove from the existing model, returning the variable to eliminate, the new parameter vector and the new Quality of Fit (QoF). May be called repeatedly.

    cols

    the columns of matrix x currently included in the existing model

    index_q

    index of Quality of Fit (QoF) to use for comparing quality

    first

    first variable to consider for elimination (default (1) assume intercept x_0 will be in any model)

    Definition Classes
    PredictorMat
    See also

    Fit for index of QoF measures.

  8. def backwardElimAll(index_q: Int = index_rSqBar, first: Int = 1, cross: Boolean = true): (Set[Int], MatriD)

    Perform backward elimination to find the least predictive variables to remove from the full model, returning the variables left and the new Quality of Fit (QoF) measures for all steps.

    Perform backward elimination to find the least predictive variables to remove from the full model, returning the variables left and the new Quality of Fit (QoF) measures for all steps.

    index_q

    index of Quality of Fit (QoF) to use for comparing quality

    first

    first variable to consider for elimination

    cross

    whether to include the cross-validation QoF measure

    Definition Classes
    PredictorMat
    See also

    Fit for index of QoF measures.

  9. def buildModel(x_cols: MatriD): ELM_3L1

    Build a sub-model that is restricted to the given columns of the data matrix.

    Build a sub-model that is restricted to the given columns of the data matrix.

    x_cols

    the columns that the new model is restricted to

    Definition Classes
    ELM_3L1PredictorMat
  10. def clone(): AnyRef
    Attributes
    protected[lang]
    Definition Classes
    AnyRef
    Annotations
    @throws( ... ) @native() @HotSpotIntrinsicCandidate()
  11. def compute_df_m(nz_: Int): Int

    Compute the degrees of freedom for the model (based on 'n, nz_, ny = 1').

    Compute the degrees of freedom for the model (based on 'n, nz_, ny = 1'). Rough extimate based on total number of parameters - 1.

    nz_

    the number of nodes in the hidden layer

    Definition Classes
    ELM_3L1
  12. def corrMatrix(xx: MatriD = x): MatriD

    Return the correlation matrix for the columns in data matrix 'xx'.

    Return the correlation matrix for the columns in data matrix 'xx'.

    xx

    the data matrix shose correlation matrix is sought

    Definition Classes
    PredictorMatPredictor
  13. def crossValidate(k: Int = 10, rando: Boolean = true): Array[Statistic]
    Definition Classes
    PredictorMat
  14. val df_m: Int
    Definition Classes
    ELM_3L1
  15. def diagnose(e: VectoD, yy: VectoD, yp: VectoD, w: VectoD = null, ym_: Double = noDouble): Unit

    Diagnose the health of the model by computing the Quality of Fit (QoF) measures, from the error/residual vector and the predicted & actual responses.

    Diagnose the health of the model by computing the Quality of Fit (QoF) measures, from the error/residual vector and the predicted & actual responses. For some models the instances may be weighted.

    e

    the m-dimensional error/residual vector (yy - yp)

    yy

    the actual response/output vector to use (test/full)

    yp

    the predicted response/output vector (test/full)

    w

    the weights on the instances (defaults to null)

    ym_

    the mean of the actual response/output vector to use (training/full)

    Definition Classes
    FitQoF
    See also

    Regression_WLS

  16. var e: VectoD
    Attributes
    protected
    Definition Classes
    PredictorMat
  17. final def eq(arg0: AnyRef): Boolean
    Definition Classes
    AnyRef
  18. def equals(arg0: Any): Boolean
    Definition Classes
    AnyRef → Any
  19. def eval(ym: Double, yy: VectoD, yf: VectoD): ELM_3L1_4TS

    Compute the error (difference between actual and forecasted) and useful diagnostics for the test dataset.

    Compute the error (difference between actual and forecasted) and useful diagnostics for the test dataset.

    ym

    the mean of the actual response/output vector (full/training)

    yy

    the actual response/output vector (full/testing)

    yf

    the forecasted response/output vector (full/testing)

    Definition Classes
    ELM_3L1_4TSPredictorMat
  20. def eval(x_e: MatriD = x, y_e: VectoD = y): PredictorMat

    Compute the error (difference between actual and predicted) and useful diagnostics for the test dataset.

    Compute the error (difference between actual and predicted) and useful diagnostics for the test dataset.

    x_e

    the test/full data/input matrix (defualts to full x)

    y_e

    the test/full response/output vector (defualts to full y)

    Definition Classes
    PredictorMatModel
  21. def f_(z: Double): String

    Format a double value.

    Format a double value.

    z

    the double value to format

    Definition Classes
    QoF
  22. def fit: VectoD

    Return the Quality of Fit (QoF) measures corresponding to the labels given above in the 'fitLabel' method.

    Return the Quality of Fit (QoF) measures corresponding to the labels given above in the 'fitLabel' method. Note, if 'sse > sst', the model introduces errors and the 'rSq' may be negative, otherwise, R^2 ('rSq') ranges from 0 (weak) to 1 (strong). Override to add more quality of fit measures.

    Definition Classes
    FitQoF
  23. def fitLabel: Seq[String]

    Return the labels for the Quality of Fit (QoF) measures.

    Return the labels for the Quality of Fit (QoF) measures. Override to add additional QoF measures.

    Definition Classes
    FitQoF
  24. def fitMap: Map[String, String]

    Build a map of quality of fit measures (use of LinkedHashMap makes it ordered).

    Build a map of quality of fit measures (use of LinkedHashMap makes it ordered).

    Definition Classes
    QoF
  25. final def flaw(method: String, message: String): Unit
    Definition Classes
    Error
  26. var fname: Strings
    Attributes
    protected
    Definition Classes
    PredictorMat
  27. def forecast(xe: MatriD, t: Int, h: Int = 1): Double

    Produce a forecast for 'h' steps ahead into the future.

    Produce a forecast for 'h' steps ahead into the future. Note: the forecasts for time 't = 0, ... , h-1' will be duplicates.

    xe

    the relevant expanded data matrix

    t

    the time for the forecast

    h

    the forecasting horizon, number of steps ahead to produce forecast

    Definition Classes
    ELM_3L1_4TSForecasterMat
  28. def forecastAll(xe: MatriD = null, h: Int = 1): VectoD

    Forecast values for all time points using 1 through 'h'-steps ahead forecasts.

    Forecast values for all time points using 1 through 'h'-steps ahead forecasts. Return a vector of forecasts for all time points.

    xe

    the relevant (optionally expanded) input/data matrix

    h

    the forecasting horizon, number of steps ahead to produce forecasts

    Definition Classes
    ForecasterMat
  29. def forwardSel(cols: Set[Int], index_q: Int = index_rSqBar): (Int, PredictorMat)

    Perform forward selection to find the most predictive variable to add the existing model, returning the variable to add and the new model.

    Perform forward selection to find the most predictive variable to add the existing model, returning the variable to add and the new model. May be called repeatedly.

    cols

    the columns of matrix x currently included in the existing model

    index_q

    index of Quality of Fit (QoF) to use for comparing quality

    Definition Classes
    PredictorMatPredictor
    See also

    Fit for index of QoF measures.

  30. def forwardSelAll(index_q: Int = index_rSqBar, cross: Boolean = true): (Set[Int], MatriD)

    Perform forward selection to find the most predictive variables to have in the model, returning the variables added and the new Quality of Fit (QoF) measures for all steps.

    Perform forward selection to find the most predictive variables to have in the model, returning the variables added and the new Quality of Fit (QoF) measures for all steps.

    index_q

    index of Quality of Fit (QoF) to use for comparing quality

    cross

    whether to include the cross-validation QoF measure

    Definition Classes
    PredictorMat
    See also

    Fit for index of QoF measures.

  31. final def getClass(): Class[_]
    Definition Classes
    AnyRef → Any
    Annotations
    @native() @HotSpotIntrinsicCandidate()
  32. def getX: MatriD

    Return the 'used' data matrix 'x'.

    Return the 'used' data matrix 'x'. Mainly for derived classes where 'x' is expanded from the given columns in 'x_', e.g., QuadRegression add squared columns.

    Definition Classes
    PredictorMatPredictor
  33. def getY: VectoD

    Return the 'used' response vector 'y'.

    Return the 'used' response vector 'y'. Mainly for derived classes where 'y' is transformed, e.g., TranRegression, Regression4TS.

    Definition Classes
    PredictorMatPredictor
  34. def hashCode(): Int
    Definition Classes
    AnyRef → Any
    Annotations
    @native() @HotSpotIntrinsicCandidate()
  35. def help: String

    Return the help string that describes the Quality of Fit (QoF) measures provided by the Fit class.

    Return the help string that describes the Quality of Fit (QoF) measures provided by the Fit class. Override to correspond to 'fitLabel'.

    Definition Classes
    FitQoF
  36. def hparameter: HyperParameter

    Return the hyper-parameters.

    Return the hyper-parameters.

    Definition Classes
    PredictorMatModel
  37. final def isInstanceOf[T0]: Boolean
    Definition Classes
    Any
  38. val itran: FunctionV_2V
    Definition Classes
    ELM_3L1
  39. val k: Int
    Attributes
    protected
    Definition Classes
    PredictorMat
  40. def ll(ms: Double = mse0, s2: Double = sig2e, m2: Int = m): Double

    The log-likelihood function times -2.

    The log-likelihood function times -2. Override as needed.

    ms

    raw Mean Squared Error

    s2

    MLE estimate of the population variance of the residuals

    Definition Classes
    Fit
    See also

    www.stat.cmu.edu/~cshalizi/mreg/15/lectures/06/lecture-06.pdf

    www.wiley.com/en-us/Introduction+to+Linear+Regression+Analysis%2C+5th+Edition-p-9780470542811 Section 2.11

  41. val m: Int
    Attributes
    protected
    Definition Classes
    PredictorMat
  42. val modelConcept: URI

    An optional reference to an ontological concept

    An optional reference to an ontological concept

    Definition Classes
    Model
  43. def modelName: String

    An optional name for the model (or modeling technique)

    An optional name for the model (or modeling technique)

    Definition Classes
    Model
  44. def mse_: Double

    Return the mean of squares for error (sse / df._2).

    Return the mean of squares for error (sse / df._2). Must call diagnose first.

    Definition Classes
    Fit
  45. val n: Int
    Attributes
    protected
    Definition Classes
    PredictorMat
  46. final def ne(arg0: AnyRef): Boolean
    Definition Classes
    AnyRef
  47. final def notify(): Unit
    Definition Classes
    AnyRef
    Annotations
    @native() @HotSpotIntrinsicCandidate()
  48. final def notifyAll(): Unit
    Definition Classes
    AnyRef
    Annotations
    @native() @HotSpotIntrinsicCandidate()
  49. def parameter: VectoD

    Return the vector of parameter/coefficient values.

    Return the vector of parameter/coefficient values.

    Definition Classes
    PredictorMatModel
  50. def parameters: VectoD

    Return the parameters 'b'.

    Return the parameters 'b'. Since the 'a' weights are fixed, only return 'b'.

    Definition Classes
    ELM_3L1
  51. def predict(v: MatriD = x): VectoD

    Given an input matrix 'v', predict the output/response matrix 'f(v)'.

    Given an input matrix 'v', predict the output/response matrix 'f(v)'.

    v

    the input matrix

    Definition Classes
    ELM_3L1PredictorMatPredictor
  52. def predict(v: VectoD): Double

    Given a new input vector 'v', predict the output/response vector 'f(v)'.

    Given a new input vector 'v', predict the output/response vector 'f(v)'.

    v

    the new input vector

    Definition Classes
    ELM_3L1PredictorMatPredictor
  53. def predict(z: VectoI): Double

    Given a new discrete data/input vector 'z', predict the 'y'-value of 'f(z)'.

    Given a new discrete data/input vector 'z', predict the 'y'-value of 'f(z)'.

    z

    the vector to use for prediction

    Definition Classes
    Predictor
  54. def report: String

    Return a basic report on the trained model.

    Return a basic report on the trained model.

    Definition Classes
    PredictorMatModel
    See also

    'summary' method for more details

  55. def resetDF(df_update: PairD): Unit

    Reset the degrees of freedom to the new updated values.

    Reset the degrees of freedom to the new updated values. For some models, the degrees of freedom is not known until after the model is built.

    df_update

    the updated degrees of freedom (model, error)

    Definition Classes
    Fit
  56. def residual: VectoD

    Return the vector of residuals/errors.

    Return the vector of residuals/errors.

    Definition Classes
    PredictorMatPredictor
  57. def reverse(a: MatriD): MatriD

    Return a matrix that is in reverse row order of the given matrix 'a'.

    Return a matrix that is in reverse row order of the given matrix 'a'.

    a

    the given matrix

    Definition Classes
    PredictorMat
  58. var sig2e: Double
    Attributes
    protected
    Definition Classes
    Fit
  59. def stepRegressionAll(index_q: Int = index_rSqBar, cross: Boolean = true): (Set[Int], MatriD)

    Perform stepwise regression to find the most predictive variables to have in the model, returning the variables left and the new Quality of Fit (QoF) measures for all steps.

    Perform stepwise regression to find the most predictive variables to have in the model, returning the variables left and the new Quality of Fit (QoF) measures for all steps. At each step it calls 'forwardSel' and 'backwardElim' and takes the best of the two actions. Stops when neither action yields improvement.

    index_q

    index of Quality of Fit (QoF) to use for comparing quality

    cross

    whether to include the cross-validation QoF measure

    Definition Classes
    PredictorMat
    See also

    Fit for index of QoF measures.

  60. def summary: String

    Compute and return summary diagostics for the regression model.

    Compute and return summary diagostics for the regression model.

    Definition Classes
    PredictorMat
  61. def summary(b: VectoD, stdErr: VectoD, vf: VectoD, show: Boolean = false): String

    Produce a summary report with diagnostics for each predictor 'x_j' and the overall quality of fit.

    Produce a summary report with diagnostics for each predictor 'x_j' and the overall quality of fit.

    b

    the parameters/coefficients for the model

    vf

    the Variance Inflation Factors (VIFs)

    show

    flag indicating whether to print the summary

    Definition Classes
    Fit
  62. final def synchronized[T0](arg0: ⇒ T0): T0
    Definition Classes
    AnyRef
  63. def test(modelName: String, doPlot: Boolean = true): Unit

    Test the model on the full dataset (i.e., train and evaluate on full dataset).

    Test the model on the full dataset (i.e., train and evaluate on full dataset).

    modelName

    the name of the model being tested

    doPlot

    whether to plot the actual vs. predicted response

    Definition Classes
    Predictor
  64. def toString(): String
    Definition Classes
    AnyRef → Any
  65. def train(x_: MatriD = x, y_: VectoD = y): ELM_3L1

    Given training data 'x_' and 'y_', with parameters 'a' fixed, fit parameters 'b'.

    Given training data 'x_' and 'y_', with parameters 'a' fixed, fit parameters 'b'. Use matrix factorization in Regression to find optimal values for the parameters/weights 'b'.

    x_

    the training/full data/input matrix

    y_

    the training/full response/output vector

    Definition Classes
    ELM_3L1PredictorMatModel
  66. def train2(x_: MatriD = x, y_: VectoD = y): PredictorMat

    Train a predictive model 'y_ = f(x_) + e' where 'x_' is the data/input matrix and 'y_' is the response/output vector.

    Train a predictive model 'y_ = f(x_) + e' where 'x_' is the data/input matrix and 'y_' is the response/output vector. These arguments default to the full dataset 'x' and 'y', but may be restricted to a training dataset. Training involves estimating the model parameters 'b'. The 'train2' method should work like the 'train' method, but should also optimize hyper-parameters (e.g., shrinkage or learning rate). Only implementing classes needing this capability should implement this method.

    x_

    the training/full data/input matrix (defaults to full x)

    y_

    the training/full response/output vector (defaults to full y)

    Definition Classes
    PredictorMat
  67. def vif(skip: Int = 1): VectoD

    Compute the Variance Inflation Factor 'VIF' for each variable to test for multi-collinearity by regressing 'x_j' against the rest of the variables.

    Compute the Variance Inflation Factor 'VIF' for each variable to test for multi-collinearity by regressing 'x_j' against the rest of the variables. A VIF over 10 indicates that over 90% of the variance of 'x_j' can be predicted from the other variables, so 'x_j' may be a candidate for removal from the model. Note: override this method to use a superior regression technique.

    skip

    the number of columns of x at the beginning to skip in computing VIF

    Definition Classes
    PredictorMat
  68. final def wait(arg0: Long, arg1: Int): Unit
    Definition Classes
    AnyRef
    Annotations
    @throws( ... )
  69. final def wait(arg0: Long): Unit
    Definition Classes
    AnyRef
    Annotations
    @throws( ... ) @native()
  70. final def wait(): Unit
    Definition Classes
    AnyRef
    Annotations
    @throws( ... )
  71. val x: MatriD
    Attributes
    protected
    Definition Classes
    PredictorMat
  72. val y: VectoD
    Attributes
    protected
    Definition Classes
    PredictorMat

Deprecated Value Members

  1. def finalize(): Unit
    Attributes
    protected[lang]
    Definition Classes
    AnyRef
    Annotations
    @throws( classOf[java.lang.Throwable] ) @Deprecated
    Deprecated

Inherited from ForecasterMat

Inherited from ELM_3L1

Inherited from PredictorMat

Inherited from Predictor

Inherited from Model

Inherited from Fit

Inherited from Error

Inherited from QoF

Inherited from AnyRef

Inherited from Any

Ungrouped