Packages

class ARIMA extends Predictor with Error

The ARIMA class provides basic time series analysis capabilities for Auto- Regressive 'AR' Integrated 'I' Moving-Average 'MA' models. In an 'ARIMA(p, d, q)' model, 'p' and 'q' refer to the order of the Auto-Regressive and Moving-Average components of the model; 'd' refers to the order of differencing. ARIMA models are often used for forecasting. Given time series data stored in vector 'y', its next value 'y_t = y(t)' may be predicted based on prior values of 'y' and its noise:

y_t = c + Σ(φ_i y_t-i) + Σ(θ_i e_t-i) + e_t

where 'c' is a constant, 'φ' is the autoregressive coefficient vector, 'θ' is the moving-average coefficient vector, and 'e' is the noise vector. If 'd' > 0, then the time series must be differenced first before applying the above model. ------------------------------------------------------------------------------

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Instance Constructors

  1. new ARIMA(y: VectoD, t: VectoD, d: Int = 0)

    y

    the input vector (time series data)

    t

    the time vector

    d

    the order of Integration

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. val acf: VectorD
  5. final def asInstanceOf[T0]: T0
    Definition Classes
    Any
  6. val b: VectoD
    Attributes
    protected
    Definition Classes
    Predictor
  7. def build(x: MatriD, y: VectoD): Predictor
    Definition Classes
    Predictor
  8. def clone(): AnyRef
    Attributes
    protected[java.lang]
    Definition Classes
    AnyRef
    Annotations
    @native() @throws( ... )
  9. def coefficient: VectoD

    Return the vector of coefficient/parameter values.

    Return the vector of coefficient/parameter values.

    Definition Classes
    Predictor
  10. def diagnose(yy: VectoD): Unit

    Compute diagostics for the predictor.

    Compute diagostics for the predictor. Override to add more diagostics. Note, for 'mse' and 'rmse', 'sse' is divided by the number of instances 'm' rather than the degrees of freedom.

    yy

    the response vector

    Attributes
    protected
    Definition Classes
    Predictor
    See also

    en.wikipedia.org/wiki/Mean_squared_error

  11. def difference(): VectorD

    Difference the time series.

  12. def durbinLevinson: MatriD

    Apply the Durbin-Levinson Algorithm to iteratively compute the 'psi' matrix.

    Apply the Durbin-Levinson Algorithm to iteratively compute the 'psi' matrix. The last row of the matrix gives 'AR' coefficients.

    See also

    www.stat.tamu.edu/~suhasini/teaching673/time_series.pdf

  13. val e: VectoD
    Attributes
    protected
    Definition Classes
    Predictor
  14. final def eq(arg0: AnyRef): Boolean
    Definition Classes
    AnyRef
  15. def equals(arg0: Any): Boolean
    Definition Classes
    AnyRef → Any
  16. def est_ar(p_: Int = 1): VectoD

    Estimate the coefficient vector 'φ' for a 'p'th order Auto-Regressive 'AR(p)' model.

    Estimate the coefficient vector 'φ' for a 'p'th order Auto-Regressive 'AR(p)' model.

    x_t = φ_0 * x_t-1 + ... + φ_p-1 * x_t-p + e_t

    Uses the Durbin-Levinson Algorithm to determine the coefficients. The 'φ' vector is 'p'th row of 'psi' matrix (ignoring the first (0th) column).

    p_

    the order of the AR model

  17. def est_arma(p_: Int = 1, q_: Int = 1): (VectoD, VectoD)

    Estimate the coefficient vectors φ and θ for a ('p'th, 'q'th) order Auto-Regressive Moving-Average 'ARIMA(p, q)' model.

    Estimate the coefficient vectors φ and θ for a ('p'th, 'q'th) order Auto-Regressive Moving-Average 'ARIMA(p, q)' model.

    x_t = φ_0 * x_t-1 + ... + φ_p-1 * x_t-p + θ_0 * e_t-1 + ... + θ_q-1 * e_t-q + e_t

    p_

    the order of the AR part of the model

    q_

    the order of the MA part of the model

    See also

    www.math.kth.se/matstat/gru/sf2943/tsform.pdf

  18. def est_ma(q_: Int = 1): VectoD

    Estimate the coefficient vector 'θ' for a 'q'th order a Moving-Average 'MA(q)' model.

    Estimate the coefficient vector 'θ' for a 'q'th order a Moving-Average 'MA(q)' model.

    x_t = θ_0 * e_t-1 + ... + θ_q-1 * e_t-q + e_t

    q_

    the order of the AR model

  19. def eval(yy: VectoD = y): Unit

    Compute the error and useful diagnostics.

    Compute the error and useful diagnostics.

    yy

    the response vector

    Definition Classes
    ARIMAPredictor
  20. def finalize(): Unit
    Attributes
    protected[java.lang]
    Definition Classes
    AnyRef
    Annotations
    @throws( classOf[java.lang.Throwable] )
  21. def fit: VectoD

    Return the quality of fit including 'sst', 'sse', 'mae', rmse' and 'rSq'.

    Return the quality of fit including 'sst', 'sse', 'mae', rmse' and 'rSq'. 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). Note that 'rSq' is the last or number 5 measure. Override to add more quality of fit measures.

    Definition Classes
    Predictor
  22. def fitLabels: Seq[String]

    Return the labels for the fit.

    Return the labels for the fit. Override when necessary.

    Definition Classes
    Predictor
  23. final def flaw(method: String, message: String): Unit
    Definition Classes
    Error
  24. def forecast_ar(steps: Int = 1): VectoD

    Produce the multi-step forecast for AR models.

  25. def forecast_arma(steps: Int = 1): VectoD

    Produce the one-step forecast for ARMA models

    Produce the one-step forecast for ARMA models

    steps

    the number of steps to forecast, must be at least one.

    See also

    ams.sunysb.edu/~zhu/ams586/Forecasting.pdf

  26. def forecast_ma(steps: Int = 1): VectoD

    Produce the one-step forecast for MA models

    Produce the one-step forecast for MA models

    steps

    the number of steps to forecast, must be at least one.

    See also

    ams.sunysb.edu/~zhu/ams586/Forecasting.pdf

  27. final def getClass(): Class[_]
    Definition Classes
    AnyRef → Any
    Annotations
    @native()
  28. def hannanRissanen(): VectoD

    Apply the Hannan-Rissanen Algorithm to estimate the 'ARMA(p, q)' coefficients.

    Apply the Hannan-Rissanen Algorithm to estimate the 'ARMA(p, q)' coefficients.

    See also

    halweb.uc3m.es/esp/Personal/personas/amalonso/esp/TSAtema9.pdf

  29. def hashCode(): Int
    Definition Classes
    AnyRef → Any
    Annotations
    @native()
  30. val index_rSq: Int
    Definition Classes
    Predictor
  31. final def isInstanceOf[T0]: Boolean
    Definition Classes
    Any
  32. val mae: Double
    Attributes
    protected
    Definition Classes
    Predictor
  33. def methodOfInnovations(): VectoD

    Apply the Method of Innovation to estimate coefficients for MA(q) model.

    Apply the Method of Innovation to estimate coefficients for MA(q) model.

    See also

    www.math.kth.se/matstat/gru/sf2943/tsform.pdf

    www.stat.berkeley.edu/~bartlett/courses/153-fall2010/lectures/10.pdf

  34. def metrics: Map[String, Any]

    Build a map of selected quality of fit measures/metrics.

    Build a map of selected quality of fit measures/metrics.

    Definition Classes
    Predictor
  35. val mse: Double
    Attributes
    protected
    Definition Classes
    Predictor
  36. val mu: Double
  37. final def ne(arg0: AnyRef): Boolean
    Definition Classes
    AnyRef
  38. final def notify(): Unit
    Definition Classes
    AnyRef
    Annotations
    @native()
  39. final def notifyAll(): Unit
    Definition Classes
    AnyRef
    Annotations
    @native()
  40. def obj_f(φθ: VectoD): Double

    Compute the objective function for MLE optimization.

    Compute the objective function for MLE optimization. FIX

    φθ

    a single vector of AR and MA coefficients

    See also

    halweb.uc3m.es/esp/Personal/personas/amalonso/esp/TSAtema9.pdf

  41. def optimize_MLE(): VectoD

    Apply the Hannan-Rissanen Algorithm first to estimate the 'ARIMA(p, q)' coefficients, then optimize the parameters using MLE.

    Apply the Hannan-Rissanen Algorithm first to estimate the 'ARIMA(p, q)' coefficients, then optimize the parameters using MLE. FIX

    See also

    halweb.uc3m.es/esp/Personal/personas/amalonso/esp/TSAtema9.pdf

  42. var pacf: VectoD
  43. def plotFunc(fVec: VectoD, name: String): Unit

    Plot a function, e.g., Auto-Correlation Function 'ACF', Partial Auto-Correlation Function 'PACF'.

    Plot a function, e.g., Auto-Correlation Function 'ACF', Partial Auto-Correlation Function 'PACF'.

    fVec

    the vector given function values

    name

    the name of the function

  44. def predict(t: VectoD): Double

    For the last time points in vector 't', predict the value of 'y = f(t)'.

    For the last time points in vector 't', predict the value of 'y = f(t)'.

    t

    the time-vector indicating time points to forecast

    Definition Classes
    ARIMAPredictor
  45. def predict(z: VectoI): Double

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

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

    z

    the vector to use for prediction

    Definition Classes
    Predictor
  46. def predictAll: VectoD

    For all the time points, predict all the values of 'y = f(t)'.

  47. def predict_ar(transBack: Boolean = true): VectoD

    Return a vector that is the predictions of a 'p'th order Auto-Regressive 'AR(p)' model.

    Return a vector that is the predictions of a 'p'th order Auto-Regressive 'AR(p)' model.

    transBack

    flag that determines whether to return the predicted values in the original scale

  48. def predict_arma(transBack: Boolean = true): VectoD

    Return a vector that is the predictions of a ('p'th, 'q'th) order Auto-Regressive Moving-Average 'ARMA(p, q)' model.

    Return a vector that is the predictions of a ('p'th, 'q'th) order Auto-Regressive Moving-Average 'ARMA(p, q)' model.

    transBack

    flag that determines whether to return the predicted values in the original scale

  49. def predict_ma(transBack: Boolean = true): VectoD

    Return a vector of predictions of an MA model and update the residuals

    Return a vector of predictions of an MA model and update the residuals

    transBack

    flag that determines whether to return the predicted values in the original scale

  50. val rSq: Double
    Attributes
    protected
    Definition Classes
    Predictor
  51. def residual: VectoD

    Return the vector of residuals/errors.

    Return the vector of residuals/errors.

    Definition Classes
    Predictor
  52. val rmse: Double
    Attributes
    protected
    Definition Classes
    Predictor
  53. def setPQ(p_: Int, q_: Int): Unit

    Set values for 'p' and 'q'.

    Set values for 'p' and 'q'.

    p_

    the order of the AR part of the model

    q_

    the order of the MA part of the model

  54. def smooth(l: Int): VectoD

    Smooth the 'y' vector by taking the 'l'th order moving average.

    Smooth the 'y' vector by taking the 'l'th order moving average.

    l

    the number of points to average

  55. val sse: Double
    Attributes
    protected
    Definition Classes
    Predictor
  56. val ssr: Double
    Attributes
    protected
    Definition Classes
    Predictor
  57. val sst: Double
    Attributes
    protected
    Definition Classes
    Predictor
  58. final def synchronized[T0](arg0: ⇒ T0): T0
    Definition Classes
    AnyRef
  59. def toString(): String
    Definition Classes
    AnyRef → Any
  60. def train(yy: VectoD = y): ARIMA

    Train/fit an ARIMA model to times the series data.

    Train/fit an ARIMA model to times the series data. Must call setPQ first.

    yy

    the response vector to work with

    Definition Classes
    ARIMAPredictor
  61. def transformBack(xp: VectoD): VectoD

    Transform the predictions/fitted values of a differenced time series back to the original scale.

    Transform the predictions/fitted values of a differenced time series back to the original scale.

    xp

    the vector of predictions/fitted values of a differenced time series

    See also

    stats.stackexchange.com/questions/32634/difference-time-series-before-arima-or-within-arima

  62. def transformBack_f(xf: VectoD): VectoD

    Transform the forecasted values of a differenced time series back to the original scale.

    Transform the forecasted values of a differenced time series back to the original scale.

    xf

    the vector of forecasted values of a differenced time series

    See also

    stats.stackexchange.com/questions/32634/difference-time-series-before-arima-or-within-arima

  63. final def wait(): Unit
    Definition Classes
    AnyRef
    Annotations
    @throws( ... )
  64. final def wait(arg0: Long, arg1: Int): Unit
    Definition Classes
    AnyRef
    Annotations
    @throws( ... )
  65. final def wait(arg0: Long): Unit
    Definition Classes
    AnyRef
    Annotations
    @native() @throws( ... )

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