This example is a realization of an process described by the model a Gaussian White noise process. An additive outlier with was added at time point , a temporary change outlier with was added at time point .
Outliers were artificially added to the outlier free series at time points (level shift with ) and (additive outlier with ), resulting in the outlier contaminated series . For both series, forecasts were determined for time points and compared with the actual values of the series.
import com.imsl.stat.*; import java.util.*; public class ARMAOutlierIdentificationEx3 { public static void main(String args[]) throws Exception { double resStdErr, aic; int[][] outlierStatistics; int numOutliers; int[] model = new int[4]; double constant; double[] ar, ma; int nForecast = 10; double[] outlierContaminatedForecast; double[] outlierFreeForecast; double[] probabilityLimits; double[] psiWeights; double[] outlierContaminatedSeries ={ 41.6699982,41.6699982,42.0752144,42.6123962,43.6161919,42.1932831, 43.1055450,44.3518715,45.3961258,45.0790215,41.8874397,40.2159805, 40.2447319,39.6208458,38.6873589,37.9272423,36.8718872,36.8310852, 37.4524879,37.3440933,37.9861374,40.3810501,41.3464622,42.6495285, 42.6096764,40.3134537,39.7971268,41.5401535,40.7160759,41.0363541, 41.8171883,42.4190292,43.0318832,43.9968109,44.0419617,44.3225212, 44.6082611,43.2199631,42.0419197,41.9679718,42.4926224,43.2091255, 43.2512283,41.2301674,40.1057358,40.4510574,41.5329170,41.5678177, 43.0090141,42.1592140,39.9234505,38.8394127,40.4319878,40.8679352, 41.4551926,41.9756317,43.9878922,46.5736389,45.5939293,42.4487762, 41.5325394,42.8830910,44.5771217,45.8541985,46.8249474,47.5686378, 46.6700745,45.4120026,43.2305107,42.7635345,43.7112923,42.0768661, 41.1835632,40.3352280,37.9761467,35.9550056,36.3212509,36.9925880, 37.2625008,37.0040665,38.5232544,39.4119797,41.8316803,43.7091446, 42.9381447,42.1066780,40.3771248,38.6518707,37.0550499,36.9447708, 38.1017685,39.4727097,39.8670387,39.3820763,38.2180786,37.7543488, 37.7265244,38.0290642,37.5531158,37.4685936,39.8233147,42.0480766, 42.4053535,43.0117416,44.1289330,45.0393829,45.1114540,45.0086479, 44.6560631,45.0278931,46.7830849,48.7649765,47.7991905,46.5339661, 43.3679199,41.6420822,41.2694893,41.5959740,43.5330009,43.3643608, 42.1471291,42.5552788,42.4521446,41.7629128,39.9476891,38.3217010, 40.5318718,42.8811569,44.4796944,44.6887932,43.1670265,41.2226143, 41.8330154,44.3721924,45.2697029,44.4174194,43.5068550,44.9793015, 45.0585403,43.2746620,40.3317070,40.3880501,40.2627106,39.6230278, 41.0305252,40.9262009,40.8326912,41.7084885,42.9038048,45.8650513, 46.5231590,47.9916115,47.8463135,46.5921936,45.8854408,45.9130440, 45.7450371,46.2964249,44.9394569,45.8141251,47.5284042,48.5527802, 48.3950577,47.8753052,45.8880005,45.7086983,44.6174774,43.5567932, 44.5891113,43.1778679,40.9405632,40.6206894,41.3330421,42.2759552, 42.4744949,43.0719833,44.2178459,43.8956337,44.1033440,45.6241455, 45.3724861,44.9167595,45.9180603,46.9077835,46.1666603,46.6013489, 46.6592331,46.7291603,47.1908340,45.9784355,45.1215782,45.6791115, 46.7379875,47.3036957,45.9968834,44.4669495,45.7734680,44.6315041, 42.9911766,46.3842583,43.7214432,43.5276833,41.3946495,39.7013168, 39.1033401,38.5292892,41.0096245,43.4535828,44.6525154,45.5725899, 46.2815285,45.2766647,45.3481712,45.5039482,45.6745682,44.0144806, 42.9305000,43.6785469,42.2500534,40.0007210,40.4477005,41.4432716, 42.0058670,42.9357758,45.6758842,46.8809929,46.8601494,47.0449791, 46.5420647,46.8939934,46.2963371,43.5479164,41.3864059,41.4046364, 42.3037987,43.6223717,45.8602371,47.3016396,46.8632469,45.4651413, 45.6275482,44.9968376,42.7558670,42.0218239,41.9883728,42.2571678, 44.3708687,45.7483635,44.8832512,44.7945862,44.8922577,44.7409401, 45.1726494,45.5686874,45.9946709,47.3151054,48.0654068,46.4817467, 42.8618279,42.4550323,42.5791168,43.4230957,44.7787971,43.8317108, 43.6481781,42.4183960,41.8426285,43.3475227,44.4749908,46.3498306, 47.8599319,46.2449913,43.6044006,42.4563484,41.2715340,39.8492508, 39.9997292,41.4410820,42.9388237,42.5687332}; // Actual values of the outlier contaminated series for // t = 181,...,190 double[] exactForecastOutlierContaminatedSeries = { 42.6384087,41.7088661,43.9399033,45.4284401,44.4558411,45.1761856, 45.3489113,45.1892662, 46.3754730,45.6082802 }; // Actual values of the outlier free series for // t = 181,...,190. This are the values of the outlier contaminated // series - 2.5 double[] exactForecastOutlierFreeSeries = { 40.1384087,39.2088661,41.4399033,42.9284401,41.9558411,42.6761856, 42.8489113,42.6892662, 43.8754730,43.1082802 }; model[0] = 2; model[1] = 1; model[2] = 1; model[3] = 0; ARMAOutlierIdentification armaOutlier = new ARMAOutlierIdentification(outlierContaminatedSeries); armaOutlier.setRelativeError(1.0e-5); armaOutlier.compute(model); armaOutlier.computeForecasts(nForecast); numOutliers = armaOutlier.getNumberOfOutliers(); outlierStatistics = armaOutlier.getOutlierStatistics(); constant = armaOutlier.getConstant(); ar = armaOutlier.getAR(); ma = armaOutlier.getMA(); resStdErr = armaOutlier.getResidualStandardError(); aic = armaOutlier.getAIC(); outlierContaminatedForecast = armaOutlier.getForecast(); outlierFreeForecast = armaOutlier.getOutlierFreeForecast(); probabilityLimits = armaOutlier.getDeviations(); psiWeights = armaOutlier.getPsiWeights(); System.out.printf("%n%n ARMA parameters:%n"); System.out.printf(Locale.ENGLISH, "constant: %9.6f%n", constant); System.out.printf(Locale.ENGLISH, "ar[0]: %12.6f%n", ar[0]); System.out.printf(Locale.ENGLISH, "ar[1]: %12.6f%n", ar[1]); System.out.printf(Locale.ENGLISH, "ma[0]: %12.6f%n%n", ma[0]); System.out.printf("Number of outliers: %d%n%n", numOutliers); System.out.printf(" Outlier statistics:%n"); System.out.printf("Time point%8sOutlier type%n", " "); for (int i = 0; i < numOutliers; i++) System.out.printf("%10d%20d%n", outlierStatistics[i][0], outlierStatistics[i][1]); System.out.printf(Locale.ENGLISH, "%nRSE:%9.6f%n", resStdErr); System.out.printf(Locale.ENGLISH, "AIC:%12.6f%n%n", aic); System.out.printf("%5s* * * Forecast Table for outlier " + "contaminated series * * *%n%n", " "); System.out.printf("%10sExact%5sforecast%6slimits%9spsi%n", " ", " ", " ", " "); for (int i = 0; i < nForecast; i++) System.out.printf(Locale.ENGLISH, "%7s%8.4f%13.4f%12.4f%12.4f%n", " ", exactForecastOutlierContaminatedSeries[i], outlierContaminatedForecast[i], probabilityLimits[i], psiWeights[i]); System.out.printf("%n%n%5s* * * Forecast Table for outlier "+ "free series * * *%n%n", " "); System.out.printf("%10sExact%5sforecast%6slimits%9spsi%n", " ", " ", " ", " "); for (int i = 0; i < nForecast; i++) System.out.printf(Locale.ENGLISH, "%7s%8.4f%13.4f%12.4f%12.4f%n", " ", exactForecastOutlierFreeSeries[i], outlierFreeForecast[i], probabilityLimits[i], psiWeights[i]); } }
ARMA parameters: constant: 8.891421 ar[0]: 0.944052 ar[1]: -0.150404 ma[0]: -0.558928 Number of outliers: 2 Outlier statistics: Time point Outlier type 150 2 200 1 RSE: 1.004306 AIC: 1323.617443 * * * Forecast Table for outlier contaminated series * * * Exact forecast limits psi 42.6384 42.3158 1.9684 1.5030 41.7089 42.7933 3.5535 1.2685 43.9399 43.2822 4.3430 0.9715 45.4284 43.6718 4.7453 0.7263 44.4558 43.9662 4.9560 0.5396 45.1762 44.1854 5.0686 0.4002 45.3489 44.3482 5.1294 0.2966 45.1893 44.4688 5.1625 0.2198 46.3755 44.5582 5.1806 0.1629 45.6083 44.6245 5.1906 0.1207 * * * Forecast Table for outlier free series * * * Exact forecast limits psi 40.1384 40.5904 1.9684 1.5030 39.2089 41.0679 3.5535 1.2685 41.4399 41.5567 4.3430 0.9715 42.9284 41.9464 4.7453 0.7263 41.9558 42.2407 4.9560 0.5396 42.6762 42.4600 5.0686 0.4002 42.8489 42.6227 5.1294 0.2966 42.6893 42.7434 5.1625 0.2198 43.8755 42.8328 5.1806 0.1629 43.1083 42.8991 5.1906 0.1207Link to Java source.