ARIMA forecasts are way off












0















I am using ARIMA (auto.arima) to forecast for 52 weeks. The time series model fits the data well (see plot below, red line is the fitted value). The input data has a decreasing trend.



enter image description here



The forecasts (highlighted area) however seems to just taking off after the actual values end.



enter image description here



How can the forecasts be tamed?



dput of the input



> dput(baseTs)
structure(c(5.41951956469523, 5.49312499014084, 5.56299025716832,
5.64442852110163, 5.71385023974044, 5.77578632033402, 5.82985917237953,
5.86346591034374, 5.89626165157029, 5.92013286862512, 5.94200331713403,
5.93996840759539, 5.93917517855891, 5.90355191030718, 5.87180377346416,
5.83190030607801, 5.79624428055153, 5.75377043604686, 5.71445345904649,
5.70025269940165, 5.69789272204017, 5.73728731204876, 5.77015169357394,
5.78936321107329, 5.80113284575595, 5.79449448552444, 5.78193215198878,
5.74003482344406, 5.71694163930612, 5.66689345413153, 5.614357635737,
5.58578389962286, 5.55824727570498, 5.58495146060423, 5.61344117957187,
5.63637441850401, 5.65948408172102, 5.65558124383951, 5.64909390802285,
5.6664546352889, 5.68205689033408, 5.69991437586231, 5.72273650369514,
5.72006065065194, 5.71556512542993, 5.6717608006789, 5.64610326418084,
5.57193975508467, 5.49406607804055, 5.40126523530993, 5.31513540386482,
5.238437956722, 5.15362077920702, 5.11960611878249, 5.08498887979172,
5.08408134201562, 5.07361213981111, 5.04830559379816, 5.01401413448689,
5.0418662607737, 5.06947584464062, 5.08771495309317, 5.10587165060358,
5.1438369937098, 5.1815251206981, 5.2318657906363, 5.29385492077065,
5.29652029253008, 5.29998067741868, 5.28242409629194, 5.2722770646788,
5.24927444462166, 5.22226735874711, 5.16555064465208, 5.10956459841778,
5.09439240612378, 5.07617974794969, 5.04418337811006, 5.0075619037348,
4.99108423417745, 4.9874504485194, 4.99135285004736, 4.99217791657733,
4.94874445528885, 4.90320874819525, 4.84508278068469, 4.79086127023963,
4.75236840849279, 4.71431573721527, 4.71936529020481, 4.72422850167074,
4.72203091743033, 4.71732868614755, 4.71175323610448, 4.70566162766782,
4.71165837247331, 4.71767529028615, 4.75129316683193, 4.7863855803437,
4.85248191548789, 4.91865394024373, 4.9590849617955, 4.99960686851895,
5.02020678181827, 5.04201201976595, 5.02025906892952, 4.99735920720967,
4.92520279823639, 4.84822505567723, 4.81118504683572, 4.77330440072099,
4.72636395544651, 4.6861111959621, 4.64912520396312, 4.61348981514599,
4.58517820348434, 4.56378688913207, 4.549011597464, 4.52900600122321,
4.56028365470815, 4.60248987909752, 4.65628990381626, 4.70496326660038,
4.73779351647955, 4.76616725791407, 4.79569018347378, 4.83185281078024,
4.85177852259102, 4.87488251014986, 4.89468916229158, 4.9077984323135,
4.92375782591088, 4.96363767543938, 5.05416277704822, 5.1426680212522,
5.232495043331, 5.32153608753653, 5.41780853915163, 5.51131526881126,
5.62791210324026), .Tsp = c(2015.05769230769, 2017.73076923077,
52), class = "ts")


The code used



fc <- try(auto.arima(baseTs,ic='aic',approximation = F))
baseFc <- forecast(fc,h = weeks_forecasted)
baseVolume_forecast_new <- baseFc$mean


What could be the reason behind the forecasts exploding?










share|improve this question


















  • 1





    Based upon the output, it seems that the picked ARIMA model has a short memory (both on the AR and MA part). That could mean that e.g. only the last 5 data points are taken into account when the forecast is made. When that's the case, that part is indeed showing an upward trend. Try experimenting with your own ARIMA model instead of using an autofit

    – CIAndrews
    Nov 23 '18 at 7:09











  • @CIAndrews i tried doing a grid search myself setting AIC as the selection criterion. auto.aima gave a model ARIMA(1,1,2) while the grid search returned ARIMA(3,1,4) as the optimal model. Though the forecasts did decrease but the increasing trend in the forecasts remain.

    – darkage
    Nov 23 '18 at 7:45











  • Might be worth adding a seasonal element

    – Jonny Phelps
    Nov 23 '18 at 11:34











  • Seeing that the upward trend starts in the last two months of the actual data, also an ARIMA(3,1,4) wouldn't remember the downward trend before. You can try adding a linear trend fitted over the complete actual data if you want to include the downward trend in any case

    – CIAndrews
    Nov 25 '18 at 11:57
















0















I am using ARIMA (auto.arima) to forecast for 52 weeks. The time series model fits the data well (see plot below, red line is the fitted value). The input data has a decreasing trend.



enter image description here



The forecasts (highlighted area) however seems to just taking off after the actual values end.



enter image description here



How can the forecasts be tamed?



dput of the input



> dput(baseTs)
structure(c(5.41951956469523, 5.49312499014084, 5.56299025716832,
5.64442852110163, 5.71385023974044, 5.77578632033402, 5.82985917237953,
5.86346591034374, 5.89626165157029, 5.92013286862512, 5.94200331713403,
5.93996840759539, 5.93917517855891, 5.90355191030718, 5.87180377346416,
5.83190030607801, 5.79624428055153, 5.75377043604686, 5.71445345904649,
5.70025269940165, 5.69789272204017, 5.73728731204876, 5.77015169357394,
5.78936321107329, 5.80113284575595, 5.79449448552444, 5.78193215198878,
5.74003482344406, 5.71694163930612, 5.66689345413153, 5.614357635737,
5.58578389962286, 5.55824727570498, 5.58495146060423, 5.61344117957187,
5.63637441850401, 5.65948408172102, 5.65558124383951, 5.64909390802285,
5.6664546352889, 5.68205689033408, 5.69991437586231, 5.72273650369514,
5.72006065065194, 5.71556512542993, 5.6717608006789, 5.64610326418084,
5.57193975508467, 5.49406607804055, 5.40126523530993, 5.31513540386482,
5.238437956722, 5.15362077920702, 5.11960611878249, 5.08498887979172,
5.08408134201562, 5.07361213981111, 5.04830559379816, 5.01401413448689,
5.0418662607737, 5.06947584464062, 5.08771495309317, 5.10587165060358,
5.1438369937098, 5.1815251206981, 5.2318657906363, 5.29385492077065,
5.29652029253008, 5.29998067741868, 5.28242409629194, 5.2722770646788,
5.24927444462166, 5.22226735874711, 5.16555064465208, 5.10956459841778,
5.09439240612378, 5.07617974794969, 5.04418337811006, 5.0075619037348,
4.99108423417745, 4.9874504485194, 4.99135285004736, 4.99217791657733,
4.94874445528885, 4.90320874819525, 4.84508278068469, 4.79086127023963,
4.75236840849279, 4.71431573721527, 4.71936529020481, 4.72422850167074,
4.72203091743033, 4.71732868614755, 4.71175323610448, 4.70566162766782,
4.71165837247331, 4.71767529028615, 4.75129316683193, 4.7863855803437,
4.85248191548789, 4.91865394024373, 4.9590849617955, 4.99960686851895,
5.02020678181827, 5.04201201976595, 5.02025906892952, 4.99735920720967,
4.92520279823639, 4.84822505567723, 4.81118504683572, 4.77330440072099,
4.72636395544651, 4.6861111959621, 4.64912520396312, 4.61348981514599,
4.58517820348434, 4.56378688913207, 4.549011597464, 4.52900600122321,
4.56028365470815, 4.60248987909752, 4.65628990381626, 4.70496326660038,
4.73779351647955, 4.76616725791407, 4.79569018347378, 4.83185281078024,
4.85177852259102, 4.87488251014986, 4.89468916229158, 4.9077984323135,
4.92375782591088, 4.96363767543938, 5.05416277704822, 5.1426680212522,
5.232495043331, 5.32153608753653, 5.41780853915163, 5.51131526881126,
5.62791210324026), .Tsp = c(2015.05769230769, 2017.73076923077,
52), class = "ts")


The code used



fc <- try(auto.arima(baseTs,ic='aic',approximation = F))
baseFc <- forecast(fc,h = weeks_forecasted)
baseVolume_forecast_new <- baseFc$mean


What could be the reason behind the forecasts exploding?










share|improve this question


















  • 1





    Based upon the output, it seems that the picked ARIMA model has a short memory (both on the AR and MA part). That could mean that e.g. only the last 5 data points are taken into account when the forecast is made. When that's the case, that part is indeed showing an upward trend. Try experimenting with your own ARIMA model instead of using an autofit

    – CIAndrews
    Nov 23 '18 at 7:09











  • @CIAndrews i tried doing a grid search myself setting AIC as the selection criterion. auto.aima gave a model ARIMA(1,1,2) while the grid search returned ARIMA(3,1,4) as the optimal model. Though the forecasts did decrease but the increasing trend in the forecasts remain.

    – darkage
    Nov 23 '18 at 7:45











  • Might be worth adding a seasonal element

    – Jonny Phelps
    Nov 23 '18 at 11:34











  • Seeing that the upward trend starts in the last two months of the actual data, also an ARIMA(3,1,4) wouldn't remember the downward trend before. You can try adding a linear trend fitted over the complete actual data if you want to include the downward trend in any case

    – CIAndrews
    Nov 25 '18 at 11:57














0












0








0








I am using ARIMA (auto.arima) to forecast for 52 weeks. The time series model fits the data well (see plot below, red line is the fitted value). The input data has a decreasing trend.



enter image description here



The forecasts (highlighted area) however seems to just taking off after the actual values end.



enter image description here



How can the forecasts be tamed?



dput of the input



> dput(baseTs)
structure(c(5.41951956469523, 5.49312499014084, 5.56299025716832,
5.64442852110163, 5.71385023974044, 5.77578632033402, 5.82985917237953,
5.86346591034374, 5.89626165157029, 5.92013286862512, 5.94200331713403,
5.93996840759539, 5.93917517855891, 5.90355191030718, 5.87180377346416,
5.83190030607801, 5.79624428055153, 5.75377043604686, 5.71445345904649,
5.70025269940165, 5.69789272204017, 5.73728731204876, 5.77015169357394,
5.78936321107329, 5.80113284575595, 5.79449448552444, 5.78193215198878,
5.74003482344406, 5.71694163930612, 5.66689345413153, 5.614357635737,
5.58578389962286, 5.55824727570498, 5.58495146060423, 5.61344117957187,
5.63637441850401, 5.65948408172102, 5.65558124383951, 5.64909390802285,
5.6664546352889, 5.68205689033408, 5.69991437586231, 5.72273650369514,
5.72006065065194, 5.71556512542993, 5.6717608006789, 5.64610326418084,
5.57193975508467, 5.49406607804055, 5.40126523530993, 5.31513540386482,
5.238437956722, 5.15362077920702, 5.11960611878249, 5.08498887979172,
5.08408134201562, 5.07361213981111, 5.04830559379816, 5.01401413448689,
5.0418662607737, 5.06947584464062, 5.08771495309317, 5.10587165060358,
5.1438369937098, 5.1815251206981, 5.2318657906363, 5.29385492077065,
5.29652029253008, 5.29998067741868, 5.28242409629194, 5.2722770646788,
5.24927444462166, 5.22226735874711, 5.16555064465208, 5.10956459841778,
5.09439240612378, 5.07617974794969, 5.04418337811006, 5.0075619037348,
4.99108423417745, 4.9874504485194, 4.99135285004736, 4.99217791657733,
4.94874445528885, 4.90320874819525, 4.84508278068469, 4.79086127023963,
4.75236840849279, 4.71431573721527, 4.71936529020481, 4.72422850167074,
4.72203091743033, 4.71732868614755, 4.71175323610448, 4.70566162766782,
4.71165837247331, 4.71767529028615, 4.75129316683193, 4.7863855803437,
4.85248191548789, 4.91865394024373, 4.9590849617955, 4.99960686851895,
5.02020678181827, 5.04201201976595, 5.02025906892952, 4.99735920720967,
4.92520279823639, 4.84822505567723, 4.81118504683572, 4.77330440072099,
4.72636395544651, 4.6861111959621, 4.64912520396312, 4.61348981514599,
4.58517820348434, 4.56378688913207, 4.549011597464, 4.52900600122321,
4.56028365470815, 4.60248987909752, 4.65628990381626, 4.70496326660038,
4.73779351647955, 4.76616725791407, 4.79569018347378, 4.83185281078024,
4.85177852259102, 4.87488251014986, 4.89468916229158, 4.9077984323135,
4.92375782591088, 4.96363767543938, 5.05416277704822, 5.1426680212522,
5.232495043331, 5.32153608753653, 5.41780853915163, 5.51131526881126,
5.62791210324026), .Tsp = c(2015.05769230769, 2017.73076923077,
52), class = "ts")


The code used



fc <- try(auto.arima(baseTs,ic='aic',approximation = F))
baseFc <- forecast(fc,h = weeks_forecasted)
baseVolume_forecast_new <- baseFc$mean


What could be the reason behind the forecasts exploding?










share|improve this question














I am using ARIMA (auto.arima) to forecast for 52 weeks. The time series model fits the data well (see plot below, red line is the fitted value). The input data has a decreasing trend.



enter image description here



The forecasts (highlighted area) however seems to just taking off after the actual values end.



enter image description here



How can the forecasts be tamed?



dput of the input



> dput(baseTs)
structure(c(5.41951956469523, 5.49312499014084, 5.56299025716832,
5.64442852110163, 5.71385023974044, 5.77578632033402, 5.82985917237953,
5.86346591034374, 5.89626165157029, 5.92013286862512, 5.94200331713403,
5.93996840759539, 5.93917517855891, 5.90355191030718, 5.87180377346416,
5.83190030607801, 5.79624428055153, 5.75377043604686, 5.71445345904649,
5.70025269940165, 5.69789272204017, 5.73728731204876, 5.77015169357394,
5.78936321107329, 5.80113284575595, 5.79449448552444, 5.78193215198878,
5.74003482344406, 5.71694163930612, 5.66689345413153, 5.614357635737,
5.58578389962286, 5.55824727570498, 5.58495146060423, 5.61344117957187,
5.63637441850401, 5.65948408172102, 5.65558124383951, 5.64909390802285,
5.6664546352889, 5.68205689033408, 5.69991437586231, 5.72273650369514,
5.72006065065194, 5.71556512542993, 5.6717608006789, 5.64610326418084,
5.57193975508467, 5.49406607804055, 5.40126523530993, 5.31513540386482,
5.238437956722, 5.15362077920702, 5.11960611878249, 5.08498887979172,
5.08408134201562, 5.07361213981111, 5.04830559379816, 5.01401413448689,
5.0418662607737, 5.06947584464062, 5.08771495309317, 5.10587165060358,
5.1438369937098, 5.1815251206981, 5.2318657906363, 5.29385492077065,
5.29652029253008, 5.29998067741868, 5.28242409629194, 5.2722770646788,
5.24927444462166, 5.22226735874711, 5.16555064465208, 5.10956459841778,
5.09439240612378, 5.07617974794969, 5.04418337811006, 5.0075619037348,
4.99108423417745, 4.9874504485194, 4.99135285004736, 4.99217791657733,
4.94874445528885, 4.90320874819525, 4.84508278068469, 4.79086127023963,
4.75236840849279, 4.71431573721527, 4.71936529020481, 4.72422850167074,
4.72203091743033, 4.71732868614755, 4.71175323610448, 4.70566162766782,
4.71165837247331, 4.71767529028615, 4.75129316683193, 4.7863855803437,
4.85248191548789, 4.91865394024373, 4.9590849617955, 4.99960686851895,
5.02020678181827, 5.04201201976595, 5.02025906892952, 4.99735920720967,
4.92520279823639, 4.84822505567723, 4.81118504683572, 4.77330440072099,
4.72636395544651, 4.6861111959621, 4.64912520396312, 4.61348981514599,
4.58517820348434, 4.56378688913207, 4.549011597464, 4.52900600122321,
4.56028365470815, 4.60248987909752, 4.65628990381626, 4.70496326660038,
4.73779351647955, 4.76616725791407, 4.79569018347378, 4.83185281078024,
4.85177852259102, 4.87488251014986, 4.89468916229158, 4.9077984323135,
4.92375782591088, 4.96363767543938, 5.05416277704822, 5.1426680212522,
5.232495043331, 5.32153608753653, 5.41780853915163, 5.51131526881126,
5.62791210324026), .Tsp = c(2015.05769230769, 2017.73076923077,
52), class = "ts")


The code used



fc <- try(auto.arima(baseTs,ic='aic',approximation = F))
baseFc <- forecast(fc,h = weeks_forecasted)
baseVolume_forecast_new <- baseFc$mean


What could be the reason behind the forecasts exploding?







r time-series arima






share|improve this question













share|improve this question











share|improve this question




share|improve this question










asked Nov 23 '18 at 6:52









darkagedarkage

4751618




4751618








  • 1





    Based upon the output, it seems that the picked ARIMA model has a short memory (both on the AR and MA part). That could mean that e.g. only the last 5 data points are taken into account when the forecast is made. When that's the case, that part is indeed showing an upward trend. Try experimenting with your own ARIMA model instead of using an autofit

    – CIAndrews
    Nov 23 '18 at 7:09











  • @CIAndrews i tried doing a grid search myself setting AIC as the selection criterion. auto.aima gave a model ARIMA(1,1,2) while the grid search returned ARIMA(3,1,4) as the optimal model. Though the forecasts did decrease but the increasing trend in the forecasts remain.

    – darkage
    Nov 23 '18 at 7:45











  • Might be worth adding a seasonal element

    – Jonny Phelps
    Nov 23 '18 at 11:34











  • Seeing that the upward trend starts in the last two months of the actual data, also an ARIMA(3,1,4) wouldn't remember the downward trend before. You can try adding a linear trend fitted over the complete actual data if you want to include the downward trend in any case

    – CIAndrews
    Nov 25 '18 at 11:57














  • 1





    Based upon the output, it seems that the picked ARIMA model has a short memory (both on the AR and MA part). That could mean that e.g. only the last 5 data points are taken into account when the forecast is made. When that's the case, that part is indeed showing an upward trend. Try experimenting with your own ARIMA model instead of using an autofit

    – CIAndrews
    Nov 23 '18 at 7:09











  • @CIAndrews i tried doing a grid search myself setting AIC as the selection criterion. auto.aima gave a model ARIMA(1,1,2) while the grid search returned ARIMA(3,1,4) as the optimal model. Though the forecasts did decrease but the increasing trend in the forecasts remain.

    – darkage
    Nov 23 '18 at 7:45











  • Might be worth adding a seasonal element

    – Jonny Phelps
    Nov 23 '18 at 11:34











  • Seeing that the upward trend starts in the last two months of the actual data, also an ARIMA(3,1,4) wouldn't remember the downward trend before. You can try adding a linear trend fitted over the complete actual data if you want to include the downward trend in any case

    – CIAndrews
    Nov 25 '18 at 11:57








1




1





Based upon the output, it seems that the picked ARIMA model has a short memory (both on the AR and MA part). That could mean that e.g. only the last 5 data points are taken into account when the forecast is made. When that's the case, that part is indeed showing an upward trend. Try experimenting with your own ARIMA model instead of using an autofit

– CIAndrews
Nov 23 '18 at 7:09





Based upon the output, it seems that the picked ARIMA model has a short memory (both on the AR and MA part). That could mean that e.g. only the last 5 data points are taken into account when the forecast is made. When that's the case, that part is indeed showing an upward trend. Try experimenting with your own ARIMA model instead of using an autofit

– CIAndrews
Nov 23 '18 at 7:09













@CIAndrews i tried doing a grid search myself setting AIC as the selection criterion. auto.aima gave a model ARIMA(1,1,2) while the grid search returned ARIMA(3,1,4) as the optimal model. Though the forecasts did decrease but the increasing trend in the forecasts remain.

– darkage
Nov 23 '18 at 7:45





@CIAndrews i tried doing a grid search myself setting AIC as the selection criterion. auto.aima gave a model ARIMA(1,1,2) while the grid search returned ARIMA(3,1,4) as the optimal model. Though the forecasts did decrease but the increasing trend in the forecasts remain.

– darkage
Nov 23 '18 at 7:45













Might be worth adding a seasonal element

– Jonny Phelps
Nov 23 '18 at 11:34





Might be worth adding a seasonal element

– Jonny Phelps
Nov 23 '18 at 11:34













Seeing that the upward trend starts in the last two months of the actual data, also an ARIMA(3,1,4) wouldn't remember the downward trend before. You can try adding a linear trend fitted over the complete actual data if you want to include the downward trend in any case

– CIAndrews
Nov 25 '18 at 11:57





Seeing that the upward trend starts in the last two months of the actual data, also an ARIMA(3,1,4) wouldn't remember the downward trend before. You can try adding a linear trend fitted over the complete actual data if you want to include the downward trend in any case

– CIAndrews
Nov 25 '18 at 11:57












0






active

oldest

votes











Your Answer






StackExchange.ifUsing("editor", function () {
StackExchange.using("externalEditor", function () {
StackExchange.using("snippets", function () {
StackExchange.snippets.init();
});
});
}, "code-snippets");

StackExchange.ready(function() {
var channelOptions = {
tags: "".split(" "),
id: "1"
};
initTagRenderer("".split(" "), "".split(" "), channelOptions);

StackExchange.using("externalEditor", function() {
// Have to fire editor after snippets, if snippets enabled
if (StackExchange.settings.snippets.snippetsEnabled) {
StackExchange.using("snippets", function() {
createEditor();
});
}
else {
createEditor();
}
});

function createEditor() {
StackExchange.prepareEditor({
heartbeatType: 'answer',
autoActivateHeartbeat: false,
convertImagesToLinks: true,
noModals: true,
showLowRepImageUploadWarning: true,
reputationToPostImages: 10,
bindNavPrevention: true,
postfix: "",
imageUploader: {
brandingHtml: "Powered by u003ca class="icon-imgur-white" href="https://imgur.com/"u003eu003c/au003e",
contentPolicyHtml: "User contributions licensed under u003ca href="https://creativecommons.org/licenses/by-sa/3.0/"u003ecc by-sa 3.0 with attribution requiredu003c/au003e u003ca href="https://stackoverflow.com/legal/content-policy"u003e(content policy)u003c/au003e",
allowUrls: true
},
onDemand: true,
discardSelector: ".discard-answer"
,immediatelyShowMarkdownHelp:true
});


}
});














draft saved

draft discarded


















StackExchange.ready(
function () {
StackExchange.openid.initPostLogin('.new-post-login', 'https%3a%2f%2fstackoverflow.com%2fquestions%2f53441896%2farima-forecasts-are-way-off%23new-answer', 'question_page');
}
);

Post as a guest















Required, but never shown

























0






active

oldest

votes








0






active

oldest

votes









active

oldest

votes






active

oldest

votes
















draft saved

draft discarded




















































Thanks for contributing an answer to Stack Overflow!


  • Please be sure to answer the question. Provide details and share your research!

But avoid



  • Asking for help, clarification, or responding to other answers.

  • Making statements based on opinion; back them up with references or personal experience.


To learn more, see our tips on writing great answers.




draft saved


draft discarded














StackExchange.ready(
function () {
StackExchange.openid.initPostLogin('.new-post-login', 'https%3a%2f%2fstackoverflow.com%2fquestions%2f53441896%2farima-forecasts-are-way-off%23new-answer', 'question_page');
}
);

Post as a guest















Required, but never shown





















































Required, but never shown














Required, but never shown












Required, but never shown







Required, but never shown

































Required, but never shown














Required, but never shown












Required, but never shown







Required, but never shown







這個網誌中的熱門文章

Tangent Lines Diagram Along Smooth Curve

Yusuf al-Mu'taman ibn Hud

Zucchini