Use Stack Overflow for Teams at work to find answers in a private and secure environment. Get your first 10 users free. Sign up.

Questions tagged [forecast]

Forecast involves estimating values (or distributions) that have not yet been observed.

Filter by
Sorted by
Tagged with
1
vote
0answers
13 views

Measure of prediction accuracy for discrete time series with zero values

I make predictions for the on and off time of a machine. This looks like the following picture, where red are the actual values and blue are the forecast values. For the forecasts I would like to be ...
1
vote
0answers
28 views

How does statsmodels ARIMA.forecast() work?

I simulated an ARMA Process and tried to forecast it with statsmodels. I plotted the true value and the forecasted values. I read that out-of-sample forecasts tend to converge to the sample mean for ...
0
votes
0answers
22 views

Transforming Forecast back to its original trend and seasonality state

I have read multiple similar threads but unfortunately I am unable to extract an answer for my question from it. I am making my own code for ARIMA on python without using python packages for ARIMA. I ...
0
votes
0answers
30 views

How can i forecast var model with tuning in R?

Hello my brothers and sisters. I am doing 2 ahead forecast with VAR model in R. But my teacher said that we must forecast with tuning. Tuning means that insert some data to model directly in database....
0
votes
0answers
14 views

auto_arima model - Update values- Python

I have a few questions regarding auto_arima model. I have used the auto_arima model for predicting the CPU values for a server. Currently, the model seems to be giving me correct trend of values for ...
0
votes
1answer
26 views

ARFIMA model and accurancy function

I am foresting with data sets from fpp2 package and forecast package. So my intention is to make automatic forecasting with a several time series. So for that reason I am forecasting with function. ...
1
vote
1answer
27 views

Why autoplot function don't show the 95% confidence interval, but plot function do?

The autoplot function don't display the 95% confidence interval in graph. It show only 80% ic. Plot function displays both ic, 80% and 95%. What I'm doing wrong in the autoplot? I already tried to ...
0
votes
1answer
24 views

Automatically plots with autoplot function from forecasting object

I am foresting with combination of data sets from fpp2 package and forecasting function from the forecast package. Output from this forecasting is object list with SNAIVE_MODELS_ALL. This object ...
1
vote
0answers
28 views

Can timestamp have microseconds in AWS Forecast?

Is it valid to have timestamp data with microseconds in timestamp (AWS Forecast)? I defined format like this: YYYY-MM-DD HH24:MI:SS.US. Dataset import failed, so I think that timestamp can be a ...
0
votes
0answers
11 views

How do I add dates into my TBATS forecast model

I am trying to add dates to TBATS forecast. Could anyone please suggest how to add dates into the TBATS forecast model data frame. I tried adding dates into the TBATS model itself but naturally it ...
1
vote
1answer
27 views

Extract Accuracy measures for a VAR model

I am modeling with vars and forecast packages and with data set Canada.So I trying to extract accurancy errors ( ME,RMSE,MAE,MPE,MAPE,MASE,ACF1) in separate data.frame. I am trying to do this but ...
1
vote
1answer
29 views

Looping over forecast functions in tsCV

I have a loop below looping over 4 time series forecast methods in tsCV (rolling forecast origin). The 3rd method in list, y, does not break the loop. However, the results table, z, whose purpose is ...
-1
votes
1answer
18 views

How to find a trend/forecast result 14 days from today

I have looked into the Forcast & Trend formula but I cannot figure it out for the life of me. I want to work out the trend 14 days from now. I have a set of data: A1 - A30 with dates B1 - B30 ...
0
votes
0answers
21 views

auto arima with R and Python

I am comparing results of auto ARIMA with R (forecast package) and Python (pmdarima package). One of the issues I am getting is the length of the residuals in R and Python are different when d is not ...
0
votes
1answer
23 views

RMSE differs substantially between forecast package and manual calculation

I think I'm missing something very obvious here. When I calculate the RMSE on the test set in the forecast package, I get a very small number: 8.581624. But when I coerce the ts objects into numeric ...
0
votes
1answer
22 views

Subsetting a timeseries changes date format in R

I am tried to use an ARIMA model on my monthly timeseries data. But I need to subset the timeseries from March - December every year. I used the subset() function to do that, but it is causing a weird ...
0
votes
1answer
11 views

Dynamic forescat in ARIMA model

Good Night, when I do a forecast in ARIMA model, por example AR(1), the result is a straight line. I see that when we use a "Dynamic Forecast", the result is not a straight line. ¿Who can i do a ...
0
votes
0answers
19 views

Deploying SARIMA - Python

I have a few questions on forecasting with SARIMA as I am getting mixed answers: Do I need to make my data stationary - my dataset exhibits both, trend and seasonality (spikes every two weeks)? If I ...
0
votes
0answers
15 views

Forecasting with SARIMA

I have a dataset which clearly has a bi-weekly seasonality with the upwards trend. I need to do a forecast with the min forecast horizon being a week and max being a month. Shall my monthly forecast ...
0
votes
1answer
46 views

Error in predict.Arima(object, n.ahead = h) : 'xreg' and 'newxreg' have different numbers of columns

Why doesn't this code work? I tried it on another computer and it works fine but on my computer it gives error. a <- matrix(rnorm(2000), ncol = 2) b <- matrix(rnorm(20), ncol = 2) da <- ...
0
votes
0answers
21 views

Usa Python requests library to download NOAA GFS and CFSV2 data

I'm using the following Python3 script to download ncdc data from NOAA using their friendly API. req4 = 'https://www.ncdc.noaa.gov/cdo-web/api/v2/data?datasetid=GHCND&datatypeid=PRCP&limit=...
2
votes
0answers
35 views

Types of noises when predicting a time series like electricity loads and exchange prices

In another question I presented my developed methodology to add noise to a time series of electricity loads and exchange prices. With these noisy time series I want to test how well my system can cope ...
0
votes
0answers
15 views

Forecast data replacing tail of existing data instead of adding to existing data

forecast_col = 'Open' df.fillna(value=-99999, inplace=True) forecast_out = int(math.ceil(0.01 * len(df))) df['label'] = df[forecast_col].shift(-forecast_out) possible issue with shift replacing data? ...
0
votes
0answers
13 views

Out-of-sample forecast with Apache Spark and Java

I want to perform an out-of-sample forecats on a dataset with Apache Spark using transform method. Let's say I have a dataset like this: +-------+------+------+--------+ | label | lag1 | lag2 | ...
1
vote
0answers
49 views

Monte Carlo Simulation code/ library in Python

I am trying to learn how to apply Monte Carlo simulation in Python for predicting/estimating time series data such as sales/deposits volumes, interest rates etc. I can understand the basic idea behind ...
0
votes
1answer
29 views

Error in match.arg(opt_crit) : 'arg' must be NULL or a character vector

Error in match.arg(opt_crit) : 'arg' must be NULL or a character vector occurs when trying to run my script in r. I have tried to find the solution for it, but it seems to be pretty specific, and ...
0
votes
0answers
5 views

Linear extrapolation - accuracy

Good day, Last time when I asked on linear extrapolation, I got How to extrapolate missing values with groupby - Python?. So, I was thinking, how can I demonstrate to the management the ...
0
votes
0answers
24 views

LSTM Time Series Anomaly detection

I am trying to find an anomaly in Time series with the LSTM. And I am still wondering, what should be the right architecture, timesteps, batch-size, sliding or non-sliding windows for finding an ...
0
votes
0answers
25 views

How to fit and forecast time series with value boundary?

ratio time series My time series time need to be fit is a ratio, it's value should be between [0,1] If I fit it directly with mstl+forecast, auto arima with Fourier or tbats, the module didn't know ...
1
vote
1answer
31 views

Imputed predictions for missing time-series data nearly stationary (flat line)

I have player over time data that is missing player counts over several years. I'm trying to fill in/predict the missing player count data over different intervals. Data available here: https://1drv....
0
votes
1answer
28 views

How to specify the forecasting level in hierarchical forecasting?

I am using hts package in R to do Hierarchical forecasting. In the forecast() function how do I specify the level in which forecast has to be done? Will it always forecast on the very top level and ...
1
vote
1answer
39 views

What should be the correct frequency of daily data?

I have a time series which represents the amount of a certain product sold throughout the year 2018 (from 2018/01/01 to 2018/12/31); is it correct to think of a frequency of 7 observations per cycle? ...
0
votes
0answers
8 views

Not sure if l have to put the time series or the log-transformed series into forecasting?

My model seems to have an additive outlier. The model I am working is SARIMA model. However, I want to forecast with this outlier and using the function forecast. One of the arguments I can use in ...
1
vote
1answer
25 views

How I can avoid the hole in the plot forecast with series plot R

I write this question because I can't link (I tried for many times), in the plot, the series with the forcast. Here the code that I used. AA1<-AA_1 str(AA1)#OUTPUT: Time-Series [1:60] from 2013 ...
0
votes
0answers
16 views

Can I train model that forecasts multiple items feature?

I want a machine learning model that can forecast multiple items feature? For example: Let's tell that my model forecasts foreign exchange rate. If I give an input "USD", it gives me forecasted "...
0
votes
0answers
76 views

Do Python have a model which is similar to nnetar in R's package forecast?

R's package 'forecast' has a function nnetar, which uses feed-forward neural networks with a single hidden layer to predict in time series. Now I am using Python to do the similar analysis. I want ...
0
votes
0answers
19 views

Comparing forecasts of direction/sign based on different models

I'm currently trying to compare two forecasts of the direction of a return index . I am using a binary dependent variable which is computed using logistic regression and ANN, I am looking for a way to ...
0
votes
1answer
45 views

Is there a way to use a 2-dimensional array as the Y-argument in Excel's FORECAST functions?

Excel's FORECAST functions take a 1-dimensional array for both the 'known Xs' argument and the 'known Ys' argument, and then returns a single value as the answer. I'd like to use a 2-dimensional ...
0
votes
0answers
64 views

Checking residuals (from ETS+STL method) with checkresiduals() function

I have one ts object which contain one column with weekly data (freqency = 52) for the period 2016-2019(only one week from 2019). #>TEST_1 #>Time Series: #>Start = c(2016, 1) #>End = ...
0
votes
1answer
51 views

R: How to show forecast and actual data in a single plot?

I have some timeseries data for 2000-Q1 to 2010-Q4. I have used the data from 2000-Q1 to 2008-Q2 to forecast the next 10 quarters using HoltWinters CPI.HI.fit <- HoltWinters(CPI.HI.pre, gamma=...
0
votes
0answers
29 views

How do I forecast using multiple seasons in R?

I am trying to forecast the rest of the year's data using only four months of existing data however I am having trouble. When I run the forecast and plot the results I am given a forecast which ...
0
votes
1answer
37 views

Making facet with gglagplot

I am using package forecast() and I trying to making facet with gglagplot function. #Code library(forecast) library(gridExtra) # GGLAGPLOT 1 gg1<-gglagplot(TEST_1,lags = 52) # GGLAGPLOT 2 ...
0
votes
0answers
28 views

Forecasting with non-stationary series (snaive,ets,auto.arima and tbats)

I am trying to make forecasting with package forecasting ().I am trying with diffrent models like: snaive,ets,auto.arima and tbats. With this kind of modelling I got good results(residuals are ...
0
votes
1answer
74 views

Rolling Window Forecast

I want to predict exchange rates with macroeconomic fundamentals doing an out of sample forecast with time series data in Python. To assess the forecast accuracy I want to apply a rolling window ...
0
votes
0answers
16 views

How to capture complex seasonality (msts object)

I have one data set which two columns (date and revenue). First column contain dates (in charecter) , which is actually only working days in week, month or year. In other words, these are daily data ...
0
votes
0answers
36 views

How can I inverse transform forcast values obtained from log transformed and differenced data?

In order to make it stationary I performed log transformation and then differenced the loged values. df['Val_1'] = df['Val_1'].apply(lambda x: np.log(x)) df['Val_1_trans'] = df['Val_1'].diff(...
1
vote
0answers
29 views

R Importing ARIMA model outputs to use in forecast

I have undertaken ARIMA modelling using the auto.arima function for 91 models. The outputs are sitting in a list of lists. The structure of the outputs for one model looks like the following: ...
0
votes
1answer
89 views

meaning of stationary=TRUE in auto.arima function

I have this data which is residual series obtained from predicted values and observations. original series was a random walk with a very small drift(mean=0.0025). err <- ts(c(0.6100, 1.3500, 1....
0
votes
0answers
19 views

different behaviours in arima and filter function for ARMA model fitting

I have this data which is residual series obtained from predicted values and observations. original series was a random walk with a very small drift(mean=0.0025). err <- ts(c(0.6100, 1.3500, 1....
0
votes
1answer
28 views

R package “forecast”: Daily data with weekly frequencies lead to wrong annual figures

I am trying to fit both ETS and ARIMA models to daily sales data from 2017-01-01 to 2019-03-31 Using the R package "forecast" I have created a ts object from my data. Here, I used for frequency 7. ...