Free Statistics

of Irreproducible Research!

Author's title

Author*The author of this computation has been verified*
R Software Modulerwasp_arimaforecasting.wasp
Title produced by softwareARIMA Forecasting
Date of computationWed, 21 Dec 2016 19:08:54 +0100
Cite this page as followsStatistical Computations at FreeStatistics.org, Office for Research Development and Education, URL https://freestatistics.org/blog/index.php?v=date/2016/Dec/21/t1482344126wu3elao12p78mks.htm/, Retrieved Mon, 06 May 2024 12:21:59 +0000
Statistical Computations at FreeStatistics.org, Office for Research Development and Education, URL https://freestatistics.org/blog/index.php?pk=302456, Retrieved Mon, 06 May 2024 12:21:59 +0000
QR Codes:

Original text written by user:
IsPrivate?No (this computation is public)
User-defined keywords
Estimated Impact57
Family? (F = Feedback message, R = changed R code, M = changed R Module, P = changed Parameters, D = changed Data)
-       [ARIMA Forecasting] [Paper N2163] [2016-12-21 18:08:54] [3146b6c9a81fba6ba78c11f749c05198] [Current]
Feedback Forum

Post a new message
Dataseries X:
3719.8
3646.4
3644.6
3713.2
3708.4
3689.6
3652
3590.2
3549.6
3580.6
3599.8
3647
3693.8
3755.6
3832.6
3917.4
4004
4086
4108.8
4179.2
4210.6
4276.6
4361.2
4452
4496.4
4581.6
4694
4749
4790
4837
4915
4929.8
5058
5150
5240
5318
5397.2
5474.6
5500.8
5552
5637.8
5622.8
5633.8
5567.8
5522




Summary of computational transaction
Raw Input view raw input (R code)
Raw Outputview raw output of R engine
Computing time1 seconds
R ServerBig Analytics Cloud Computing Center

\begin{tabular}{lllllllll}
\hline
Summary of computational transaction \tabularnewline
Raw Input view raw input (R code)  \tabularnewline
Raw Outputview raw output of R engine  \tabularnewline
Computing time1 seconds \tabularnewline
R ServerBig Analytics Cloud Computing Center \tabularnewline
\hline
\end{tabular}
%Source: https://freestatistics.org/blog/index.php?pk=302456&T=0

[TABLE]
[ROW]
Summary of computational transaction[/C][/ROW] [ROW]Raw Input[/C] view raw input (R code) [/C][/ROW] [ROW]Raw Output[/C]view raw output of R engine [/C][/ROW] [ROW]Computing time[/C]1 seconds[/C][/ROW] [ROW]R Server[/C]Big Analytics Cloud Computing Center[/C][/ROW] [/TABLE] Source: https://freestatistics.org/blog/index.php?pk=302456&T=0

Globally Unique Identifier (entire table): ba.freestatistics.org/blog/index.php?pk=302456&T=0

As an alternative you can also use a QR Code:  

The GUIDs for individual cells are displayed in the table below:

Summary of computational transaction
Raw Input view raw input (R code)
Raw Outputview raw output of R engine
Computing time1 seconds
R ServerBig Analytics Cloud Computing Center







Univariate ARIMA Extrapolation Forecast
timeY[t]F[t]95% LB95% UBp-value(H0: Y[t] = F[t])P(F[t]>Y[t-1])P(F[t]>Y[t-s])P(F[t]>Y[33])
214210.6-------
224276.6-------
234361.2-------
244452-------
254496.4-------
264581.6-------
274694-------
284749-------
294790-------
304837-------
314915-------
324929.8-------
335058-------
34515050584932.11565183.88440.0760.510.5
35524050584879.97265236.02740.02250.155610.5
36531850584839.96185276.03820.00970.050910.5
375397.250584806.23125309.76880.00410.021510.5
385474.650584776.51395339.48610.00190.00910.99950.5
395500.850584749.64745366.35260.00240.0040.98970.5
40555250584724.94125391.05880.00180.00460.96550.5
415637.850584701.94515414.05497e-040.00330.92990.5
425622.850584680.34685435.65320.00170.00130.87430.5
435633.850584659.91865456.08140.00230.00270.75930.5
445567.850584640.48875475.51130.00830.00340.72640.5
45552250584621.92365494.07640.01850.0110.50.5

\begin{tabular}{lllllllll}
\hline
Univariate ARIMA Extrapolation Forecast \tabularnewline
time & Y[t] & F[t] & 95% LB & 95% UB & p-value(H0: Y[t] = F[t]) & P(F[t]>Y[t-1]) & P(F[t]>Y[t-s]) & P(F[t]>Y[33]) \tabularnewline
21 & 4210.6 & - & - & - & - & - & - & - \tabularnewline
22 & 4276.6 & - & - & - & - & - & - & - \tabularnewline
23 & 4361.2 & - & - & - & - & - & - & - \tabularnewline
24 & 4452 & - & - & - & - & - & - & - \tabularnewline
25 & 4496.4 & - & - & - & - & - & - & - \tabularnewline
26 & 4581.6 & - & - & - & - & - & - & - \tabularnewline
27 & 4694 & - & - & - & - & - & - & - \tabularnewline
28 & 4749 & - & - & - & - & - & - & - \tabularnewline
29 & 4790 & - & - & - & - & - & - & - \tabularnewline
30 & 4837 & - & - & - & - & - & - & - \tabularnewline
31 & 4915 & - & - & - & - & - & - & - \tabularnewline
32 & 4929.8 & - & - & - & - & - & - & - \tabularnewline
33 & 5058 & - & - & - & - & - & - & - \tabularnewline
34 & 5150 & 5058 & 4932.1156 & 5183.8844 & 0.076 & 0.5 & 1 & 0.5 \tabularnewline
35 & 5240 & 5058 & 4879.9726 & 5236.0274 & 0.0225 & 0.1556 & 1 & 0.5 \tabularnewline
36 & 5318 & 5058 & 4839.9618 & 5276.0382 & 0.0097 & 0.0509 & 1 & 0.5 \tabularnewline
37 & 5397.2 & 5058 & 4806.2312 & 5309.7688 & 0.0041 & 0.0215 & 1 & 0.5 \tabularnewline
38 & 5474.6 & 5058 & 4776.5139 & 5339.4861 & 0.0019 & 0.0091 & 0.9995 & 0.5 \tabularnewline
39 & 5500.8 & 5058 & 4749.6474 & 5366.3526 & 0.0024 & 0.004 & 0.9897 & 0.5 \tabularnewline
40 & 5552 & 5058 & 4724.9412 & 5391.0588 & 0.0018 & 0.0046 & 0.9655 & 0.5 \tabularnewline
41 & 5637.8 & 5058 & 4701.9451 & 5414.0549 & 7e-04 & 0.0033 & 0.9299 & 0.5 \tabularnewline
42 & 5622.8 & 5058 & 4680.3468 & 5435.6532 & 0.0017 & 0.0013 & 0.8743 & 0.5 \tabularnewline
43 & 5633.8 & 5058 & 4659.9186 & 5456.0814 & 0.0023 & 0.0027 & 0.7593 & 0.5 \tabularnewline
44 & 5567.8 & 5058 & 4640.4887 & 5475.5113 & 0.0083 & 0.0034 & 0.7264 & 0.5 \tabularnewline
45 & 5522 & 5058 & 4621.9236 & 5494.0764 & 0.0185 & 0.011 & 0.5 & 0.5 \tabularnewline
\hline
\end{tabular}
%Source: https://freestatistics.org/blog/index.php?pk=302456&T=1

[TABLE]
[ROW][C]Univariate ARIMA Extrapolation Forecast[/C][/ROW]
[ROW][C]time[/C][C]Y[t][/C][C]F[t][/C][C]95% LB[/C][C]95% UB[/C][C]p-value(H0: Y[t] = F[t])[/C][C]P(F[t]>Y[t-1])[/C][C]P(F[t]>Y[t-s])[/C][C]P(F[t]>Y[33])[/C][/ROW]
[ROW][C]21[/C][C]4210.6[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][/ROW]
[ROW][C]22[/C][C]4276.6[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][/ROW]
[ROW][C]23[/C][C]4361.2[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][/ROW]
[ROW][C]24[/C][C]4452[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][/ROW]
[ROW][C]25[/C][C]4496.4[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][/ROW]
[ROW][C]26[/C][C]4581.6[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][/ROW]
[ROW][C]27[/C][C]4694[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][/ROW]
[ROW][C]28[/C][C]4749[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][/ROW]
[ROW][C]29[/C][C]4790[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][/ROW]
[ROW][C]30[/C][C]4837[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][/ROW]
[ROW][C]31[/C][C]4915[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][/ROW]
[ROW][C]32[/C][C]4929.8[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][/ROW]
[ROW][C]33[/C][C]5058[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][C]-[/C][/ROW]
[ROW][C]34[/C][C]5150[/C][C]5058[/C][C]4932.1156[/C][C]5183.8844[/C][C]0.076[/C][C]0.5[/C][C]1[/C][C]0.5[/C][/ROW]
[ROW][C]35[/C][C]5240[/C][C]5058[/C][C]4879.9726[/C][C]5236.0274[/C][C]0.0225[/C][C]0.1556[/C][C]1[/C][C]0.5[/C][/ROW]
[ROW][C]36[/C][C]5318[/C][C]5058[/C][C]4839.9618[/C][C]5276.0382[/C][C]0.0097[/C][C]0.0509[/C][C]1[/C][C]0.5[/C][/ROW]
[ROW][C]37[/C][C]5397.2[/C][C]5058[/C][C]4806.2312[/C][C]5309.7688[/C][C]0.0041[/C][C]0.0215[/C][C]1[/C][C]0.5[/C][/ROW]
[ROW][C]38[/C][C]5474.6[/C][C]5058[/C][C]4776.5139[/C][C]5339.4861[/C][C]0.0019[/C][C]0.0091[/C][C]0.9995[/C][C]0.5[/C][/ROW]
[ROW][C]39[/C][C]5500.8[/C][C]5058[/C][C]4749.6474[/C][C]5366.3526[/C][C]0.0024[/C][C]0.004[/C][C]0.9897[/C][C]0.5[/C][/ROW]
[ROW][C]40[/C][C]5552[/C][C]5058[/C][C]4724.9412[/C][C]5391.0588[/C][C]0.0018[/C][C]0.0046[/C][C]0.9655[/C][C]0.5[/C][/ROW]
[ROW][C]41[/C][C]5637.8[/C][C]5058[/C][C]4701.9451[/C][C]5414.0549[/C][C]7e-04[/C][C]0.0033[/C][C]0.9299[/C][C]0.5[/C][/ROW]
[ROW][C]42[/C][C]5622.8[/C][C]5058[/C][C]4680.3468[/C][C]5435.6532[/C][C]0.0017[/C][C]0.0013[/C][C]0.8743[/C][C]0.5[/C][/ROW]
[ROW][C]43[/C][C]5633.8[/C][C]5058[/C][C]4659.9186[/C][C]5456.0814[/C][C]0.0023[/C][C]0.0027[/C][C]0.7593[/C][C]0.5[/C][/ROW]
[ROW][C]44[/C][C]5567.8[/C][C]5058[/C][C]4640.4887[/C][C]5475.5113[/C][C]0.0083[/C][C]0.0034[/C][C]0.7264[/C][C]0.5[/C][/ROW]
[ROW][C]45[/C][C]5522[/C][C]5058[/C][C]4621.9236[/C][C]5494.0764[/C][C]0.0185[/C][C]0.011[/C][C]0.5[/C][C]0.5[/C][/ROW]
[/TABLE]
Source: https://freestatistics.org/blog/index.php?pk=302456&T=1

Globally Unique Identifier (entire table): ba.freestatistics.org/blog/index.php?pk=302456&T=1

As an alternative you can also use a QR Code:  

The GUIDs for individual cells are displayed in the table below:

Univariate ARIMA Extrapolation Forecast
timeY[t]F[t]95% LB95% UBp-value(H0: Y[t] = F[t])P(F[t]>Y[t-1])P(F[t]>Y[t-s])P(F[t]>Y[33])
214210.6-------
224276.6-------
234361.2-------
244452-------
254496.4-------
264581.6-------
274694-------
284749-------
294790-------
304837-------
314915-------
324929.8-------
335058-------
34515050584932.11565183.88440.0760.510.5
35524050584879.97265236.02740.02250.155610.5
36531850584839.96185276.03820.00970.050910.5
375397.250584806.23125309.76880.00410.021510.5
385474.650584776.51395339.48610.00190.00910.99950.5
395500.850584749.64745366.35260.00240.0040.98970.5
40555250584724.94125391.05880.00180.00460.96550.5
415637.850584701.94515414.05497e-040.00330.92990.5
425622.850584680.34685435.65320.00170.00130.87430.5
435633.850584659.91865456.08140.00230.00270.75930.5
445567.850584640.48875475.51130.00830.00340.72640.5
45552250584621.92365494.07640.01850.0110.50.5







Univariate ARIMA Extrapolation Forecast Performance
time% S.E.PEMAPEsMAPESq.EMSERMSEScaledEMASE
340.01270.01790.01790.0188464001.61761.6176
350.0180.03470.02630.02673312420794144.20123.20012.4089
360.0220.04890.03380.03456760036396190.77744.57163.1298
370.02540.06280.04110.0421115056.6456061.16236.77245.96423.8384
380.02840.07610.04810.0495173555.5679560.04282.06397.32514.5357
390.03110.08050.05350.0552196071.8498978.6733314.60887.78585.0774
400.03360.0890.05860.0606244036119701.1486345.97858.68615.5929
410.03590.10280.06410.0666336168.04146759.51383.09210.19476.1682
420.03810.10040.06810.071318999.04165897.2356407.30489.93096.5862
430.04020.10220.07150.0746331545.64182462.076427.155810.12446.9401
440.04210.09160.07340.0766259896.04189501.5273435.31778.96397.124
450.0440.0840.07420.0775215296191651.0667437.77978.15867.2103

\begin{tabular}{lllllllll}
\hline
Univariate ARIMA Extrapolation Forecast Performance \tabularnewline
time & % S.E. & PE & MAPE & sMAPE & Sq.E & MSE & RMSE & ScaledE & MASE \tabularnewline
34 & 0.0127 & 0.0179 & 0.0179 & 0.018 & 8464 & 0 & 0 & 1.6176 & 1.6176 \tabularnewline
35 & 0.018 & 0.0347 & 0.0263 & 0.0267 & 33124 & 20794 & 144.2012 & 3.2001 & 2.4089 \tabularnewline
36 & 0.022 & 0.0489 & 0.0338 & 0.0345 & 67600 & 36396 & 190.7774 & 4.5716 & 3.1298 \tabularnewline
37 & 0.0254 & 0.0628 & 0.0411 & 0.0421 & 115056.64 & 56061.16 & 236.7724 & 5.9642 & 3.8384 \tabularnewline
38 & 0.0284 & 0.0761 & 0.0481 & 0.0495 & 173555.56 & 79560.04 & 282.0639 & 7.3251 & 4.5357 \tabularnewline
39 & 0.0311 & 0.0805 & 0.0535 & 0.0552 & 196071.84 & 98978.6733 & 314.6088 & 7.7858 & 5.0774 \tabularnewline
40 & 0.0336 & 0.089 & 0.0586 & 0.0606 & 244036 & 119701.1486 & 345.9785 & 8.6861 & 5.5929 \tabularnewline
41 & 0.0359 & 0.1028 & 0.0641 & 0.0666 & 336168.04 & 146759.51 & 383.092 & 10.1947 & 6.1682 \tabularnewline
42 & 0.0381 & 0.1004 & 0.0681 & 0.071 & 318999.04 & 165897.2356 & 407.3048 & 9.9309 & 6.5862 \tabularnewline
43 & 0.0402 & 0.1022 & 0.0715 & 0.0746 & 331545.64 & 182462.076 & 427.1558 & 10.1244 & 6.9401 \tabularnewline
44 & 0.0421 & 0.0916 & 0.0734 & 0.0766 & 259896.04 & 189501.5273 & 435.3177 & 8.9639 & 7.124 \tabularnewline
45 & 0.044 & 0.084 & 0.0742 & 0.0775 & 215296 & 191651.0667 & 437.7797 & 8.1586 & 7.2103 \tabularnewline
\hline
\end{tabular}
%Source: https://freestatistics.org/blog/index.php?pk=302456&T=2

[TABLE]
[ROW][C]Univariate ARIMA Extrapolation Forecast Performance[/C][/ROW]
[ROW][C]time[/C][C]% S.E.[/C][C]PE[/C][C]MAPE[/C][C]sMAPE[/C][C]Sq.E[/C][C]MSE[/C][C]RMSE[/C][C]ScaledE[/C][C]MASE[/C][/ROW]
[ROW][C]34[/C][C]0.0127[/C][C]0.0179[/C][C]0.0179[/C][C]0.018[/C][C]8464[/C][C]0[/C][C]0[/C][C]1.6176[/C][C]1.6176[/C][/ROW]
[ROW][C]35[/C][C]0.018[/C][C]0.0347[/C][C]0.0263[/C][C]0.0267[/C][C]33124[/C][C]20794[/C][C]144.2012[/C][C]3.2001[/C][C]2.4089[/C][/ROW]
[ROW][C]36[/C][C]0.022[/C][C]0.0489[/C][C]0.0338[/C][C]0.0345[/C][C]67600[/C][C]36396[/C][C]190.7774[/C][C]4.5716[/C][C]3.1298[/C][/ROW]
[ROW][C]37[/C][C]0.0254[/C][C]0.0628[/C][C]0.0411[/C][C]0.0421[/C][C]115056.64[/C][C]56061.16[/C][C]236.7724[/C][C]5.9642[/C][C]3.8384[/C][/ROW]
[ROW][C]38[/C][C]0.0284[/C][C]0.0761[/C][C]0.0481[/C][C]0.0495[/C][C]173555.56[/C][C]79560.04[/C][C]282.0639[/C][C]7.3251[/C][C]4.5357[/C][/ROW]
[ROW][C]39[/C][C]0.0311[/C][C]0.0805[/C][C]0.0535[/C][C]0.0552[/C][C]196071.84[/C][C]98978.6733[/C][C]314.6088[/C][C]7.7858[/C][C]5.0774[/C][/ROW]
[ROW][C]40[/C][C]0.0336[/C][C]0.089[/C][C]0.0586[/C][C]0.0606[/C][C]244036[/C][C]119701.1486[/C][C]345.9785[/C][C]8.6861[/C][C]5.5929[/C][/ROW]
[ROW][C]41[/C][C]0.0359[/C][C]0.1028[/C][C]0.0641[/C][C]0.0666[/C][C]336168.04[/C][C]146759.51[/C][C]383.092[/C][C]10.1947[/C][C]6.1682[/C][/ROW]
[ROW][C]42[/C][C]0.0381[/C][C]0.1004[/C][C]0.0681[/C][C]0.071[/C][C]318999.04[/C][C]165897.2356[/C][C]407.3048[/C][C]9.9309[/C][C]6.5862[/C][/ROW]
[ROW][C]43[/C][C]0.0402[/C][C]0.1022[/C][C]0.0715[/C][C]0.0746[/C][C]331545.64[/C][C]182462.076[/C][C]427.1558[/C][C]10.1244[/C][C]6.9401[/C][/ROW]
[ROW][C]44[/C][C]0.0421[/C][C]0.0916[/C][C]0.0734[/C][C]0.0766[/C][C]259896.04[/C][C]189501.5273[/C][C]435.3177[/C][C]8.9639[/C][C]7.124[/C][/ROW]
[ROW][C]45[/C][C]0.044[/C][C]0.084[/C][C]0.0742[/C][C]0.0775[/C][C]215296[/C][C]191651.0667[/C][C]437.7797[/C][C]8.1586[/C][C]7.2103[/C][/ROW]
[/TABLE]
Source: https://freestatistics.org/blog/index.php?pk=302456&T=2

Globally Unique Identifier (entire table): ba.freestatistics.org/blog/index.php?pk=302456&T=2

As an alternative you can also use a QR Code:  

The GUIDs for individual cells are displayed in the table below:

Univariate ARIMA Extrapolation Forecast Performance
time% S.E.PEMAPEsMAPESq.EMSERMSEScaledEMASE
340.01270.01790.01790.0188464001.61761.6176
350.0180.03470.02630.02673312420794144.20123.20012.4089
360.0220.04890.03380.03456760036396190.77744.57163.1298
370.02540.06280.04110.0421115056.6456061.16236.77245.96423.8384
380.02840.07610.04810.0495173555.5679560.04282.06397.32514.5357
390.03110.08050.05350.0552196071.8498978.6733314.60887.78585.0774
400.03360.0890.05860.0606244036119701.1486345.97858.68615.5929
410.03590.10280.06410.0666336168.04146759.51383.09210.19476.1682
420.03810.10040.06810.071318999.04165897.2356407.30489.93096.5862
430.04020.10220.07150.0746331545.64182462.076427.155810.12446.9401
440.04210.09160.07340.0766259896.04189501.5273435.31778.96397.124
450.0440.0840.07420.0775215296191651.0667437.77978.15867.2103



Parameters (Session):
par1 = FALSE ; par2 = 1 ; par3 = 1 ; par4 = 0 ; par5 = 1 ; par6 = 3 ; par7 = 1 ; par8 = 2 ; par9 = 1 ;
Parameters (R input):
par1 = 12 ; par2 = 1 ; par3 = 1 ; par4 = 0 ; par5 = 12 ; par6 = 0 ; par7 = 0 ; par8 = 0 ; par9 = 0 ; par10 = FALSE ;
R code (references can be found in the software module):
par1 <- as.numeric(par1) #cut off periods
par2 <- as.numeric(par2) #lambda
par3 <- as.numeric(par3) #degree of non-seasonal differencing
par4 <- as.numeric(par4) #degree of seasonal differencing
par5 <- as.numeric(par5) #seasonal period
par6 <- as.numeric(par6) #p
par7 <- as.numeric(par7) #q
par8 <- as.numeric(par8) #P
par9 <- as.numeric(par9) #Q
if (par10 == 'TRUE') par10 <- TRUE
if (par10 == 'FALSE') par10 <- FALSE
if (par2 == 0) x <- log(x)
if (par2 != 0) x <- x^par2
lx <- length(x)
first <- lx - 2*par1
nx <- lx - par1
nx1 <- nx + 1
fx <- lx - nx
if (fx < 1) {
fx <- par5*2
nx1 <- lx + fx - 1
first <- lx - 2*fx
}
first <- 1
if (fx < 3) fx <- round(lx/10,0)
(arima.out <- arima(x[1:nx], order=c(par6,par3,par7), seasonal=list(order=c(par8,par4,par9), period=par5), include.mean=par10, method='ML'))
(forecast <- predict(arima.out,fx))
(lb <- forecast$pred - 1.96 * forecast$se)
(ub <- forecast$pred + 1.96 * forecast$se)
if (par2 == 0) {
x <- exp(x)
forecast$pred <- exp(forecast$pred)
lb <- exp(lb)
ub <- exp(ub)
}
if (par2 != 0) {
x <- x^(1/par2)
forecast$pred <- forecast$pred^(1/par2)
lb <- lb^(1/par2)
ub <- ub^(1/par2)
}
if (par2 < 0) {
olb <- lb
lb <- ub
ub <- olb
}
(actandfor <- c(x[1:nx], forecast$pred))
(perc.se <- (ub-forecast$pred)/1.96/forecast$pred)
bitmap(file='test1.png')
opar <- par(mar=c(4,4,2,2),las=1)
ylim <- c( min(x[first:nx],lb), max(x[first:nx],ub))
plot(x,ylim=ylim,type='n',xlim=c(first,lx))
usr <- par('usr')
rect(usr[1],usr[3],nx+1,usr[4],border=NA,col='lemonchiffon')
rect(nx1,usr[3],usr[2],usr[4],border=NA,col='lavender')
abline(h= (-3:3)*2 , col ='gray', lty =3)
polygon( c(nx1:lx,lx:nx1), c(lb,rev(ub)), col = 'orange', lty=2,border=NA)
lines(nx1:lx, lb , lty=2)
lines(nx1:lx, ub , lty=2)
lines(x, lwd=2)
lines(nx1:lx, forecast$pred , lwd=2 , col ='white')
box()
par(opar)
dev.off()
prob.dec <- array(NA, dim=fx)
prob.sdec <- array(NA, dim=fx)
prob.ldec <- array(NA, dim=fx)
prob.pval <- array(NA, dim=fx)
perf.pe <- array(0, dim=fx)
perf.spe <- array(0, dim=fx)
perf.scalederr <- array(0, dim=fx)
perf.mase <- array(0, dim=fx)
perf.mase1 <- array(0, dim=fx)
perf.mape <- array(0, dim=fx)
perf.smape <- array(0, dim=fx)
perf.mape1 <- array(0, dim=fx)
perf.smape1 <- array(0,dim=fx)
perf.se <- array(0, dim=fx)
perf.mse <- array(0, dim=fx)
perf.mse1 <- array(0, dim=fx)
perf.rmse <- array(0, dim=fx)
perf.scaleddenom <- 0
for (i in 2:fx) {
perf.scaleddenom = perf.scaleddenom + abs(x[nx+i] - x[nx+i-1])
}
perf.scaleddenom = perf.scaleddenom / (fx-1)
for (i in 1:fx) {
locSD <- (ub[i] - forecast$pred[i]) / 1.96
perf.scalederr[i] = (x[nx+i] - forecast$pred[i]) / perf.scaleddenom
perf.pe[i] = (x[nx+i] - forecast$pred[i]) / x[nx+i]
perf.spe[i] = 2*(x[nx+i] - forecast$pred[i]) / (x[nx+i] + forecast$pred[i])
perf.se[i] = (x[nx+i] - forecast$pred[i])^2
prob.dec[i] = pnorm((x[nx+i-1] - forecast$pred[i]) / locSD)
prob.sdec[i] = pnorm((x[nx+i-par5] - forecast$pred[i]) / locSD)
prob.ldec[i] = pnorm((x[nx] - forecast$pred[i]) / locSD)
prob.pval[i] = pnorm(abs(x[nx+i] - forecast$pred[i]) / locSD)
}
perf.mape[1] = abs(perf.pe[1])
perf.smape[1] = abs(perf.spe[1])
perf.mape1[1] = perf.mape[1]
perf.smape1[1] = perf.smape[1]
perf.mse[1] = perf.se[1]
perf.mase[1] = abs(perf.scalederr[1])
perf.mase1[1] = perf.mase[1]
for (i in 2:fx) {
perf.mape[i] = perf.mape[i-1] + abs(perf.pe[i])
perf.mape1[i] = perf.mape[i] / i
perf.smape[i] = perf.smape[i-1] + abs(perf.spe[i])
perf.smape1[i] = perf.smape[i] / i
perf.mse[i] = perf.mse[i-1] + perf.se[i]
perf.mse1[i] = perf.mse[i] / i
perf.mase[i] = perf.mase[i-1] + abs(perf.scalederr[i])
perf.mase1[i] = perf.mase[i] / i
}
perf.rmse = sqrt(perf.mse1)
bitmap(file='test2.png')
plot(forecast$pred, pch=19, type='b',main='ARIMA Extrapolation Forecast', ylab='Forecast and 95% CI', xlab='time',ylim=c(min(lb),max(ub)))
dum <- forecast$pred
dum[1:par1] <- x[(nx+1):lx]
lines(dum, lty=1)
lines(ub,lty=3)
lines(lb,lty=3)
dev.off()
load(file='createtable')
a<-table.start()
a<-table.row.start(a)
a<-table.element(a,'Univariate ARIMA Extrapolation Forecast',9,TRUE)
a<-table.row.end(a)
a<-table.row.start(a)
a<-table.element(a,'time',1,header=TRUE)
a<-table.element(a,'Y[t]',1,header=TRUE)
a<-table.element(a,'F[t]',1,header=TRUE)
a<-table.element(a,'95% LB',1,header=TRUE)
a<-table.element(a,'95% UB',1,header=TRUE)
a<-table.element(a,'p-value
(H0: Y[t] = F[t])',1,header=TRUE)
a<-table.element(a,'P(F[t]>Y[t-1])',1,header=TRUE)
a<-table.element(a,'P(F[t]>Y[t-s])',1,header=TRUE)
mylab <- paste('P(F[t]>Y[',nx,sep='')
mylab <- paste(mylab,'])',sep='')
a<-table.element(a,mylab,1,header=TRUE)
a<-table.row.end(a)
for (i in (nx-par5):nx) {
a<-table.row.start(a)
a<-table.element(a,i,header=TRUE)
a<-table.element(a,x[i])
a<-table.element(a,'-')
a<-table.element(a,'-')
a<-table.element(a,'-')
a<-table.element(a,'-')
a<-table.element(a,'-')
a<-table.element(a,'-')
a<-table.element(a,'-')
a<-table.row.end(a)
}
for (i in 1:fx) {
a<-table.row.start(a)
a<-table.element(a,nx+i,header=TRUE)
a<-table.element(a,round(x[nx+i],4))
a<-table.element(a,round(forecast$pred[i],4))
a<-table.element(a,round(lb[i],4))
a<-table.element(a,round(ub[i],4))
a<-table.element(a,round((1-prob.pval[i]),4))
a<-table.element(a,round((1-prob.dec[i]),4))
a<-table.element(a,round((1-prob.sdec[i]),4))
a<-table.element(a,round((1-prob.ldec[i]),4))
a<-table.row.end(a)
}
a<-table.end(a)
table.save(a,file='mytable.tab')
a<-table.start()
a<-table.row.start(a)
a<-table.element(a,'Univariate ARIMA Extrapolation Forecast Performance',10,TRUE)
a<-table.row.end(a)
a<-table.row.start(a)
a<-table.element(a,'time',1,header=TRUE)
a<-table.element(a,'% S.E.',1,header=TRUE)
a<-table.element(a,'PE',1,header=TRUE)
a<-table.element(a,'MAPE',1,header=TRUE)
a<-table.element(a,'sMAPE',1,header=TRUE)
a<-table.element(a,'Sq.E',1,header=TRUE)
a<-table.element(a,'MSE',1,header=TRUE)
a<-table.element(a,'RMSE',1,header=TRUE)
a<-table.element(a,'ScaledE',1,header=TRUE)
a<-table.element(a,'MASE',1,header=TRUE)
a<-table.row.end(a)
for (i in 1:fx) {
a<-table.row.start(a)
a<-table.element(a,nx+i,header=TRUE)
a<-table.element(a,round(perc.se[i],4))
a<-table.element(a,round(perf.pe[i],4))
a<-table.element(a,round(perf.mape1[i],4))
a<-table.element(a,round(perf.smape1[i],4))
a<-table.element(a,round(perf.se[i],4))
a<-table.element(a,round(perf.mse1[i],4))
a<-table.element(a,round(perf.rmse[i],4))
a<-table.element(a,round(perf.scalederr[i],4))
a<-table.element(a,round(perf.mase1[i],4))
a<-table.row.end(a)
}
a<-table.end(a)
table.save(a,file='mytable1.tab')