Deck 12: Time Series Analysis and Forecasting
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Deck 12: Time Series Analysis and Forecasting
1
The random walk model is written as:
. In this model,
represents the:
A) average of the Y's
B) average of the X's
C) forecasted value
D) random series with mean 0 and some constant standard deviation


A) average of the Y's
B) average of the X's
C) forecasted value
D) random series with mean 0 and some constant standard deviation
random series with mean 0 and some constant standard deviation
2
Which of the following is not one of the techniques that can be used to identify whether a time series is truly random?
A) a graph (plot the data)
B) the runs test
C) a control chart
D) the autocorrelations (or a correlogram)
A) a graph (plot the data)
B) the runs test
C) a control chart
D) the autocorrelations (or a correlogram)
the autocorrelations (or a correlogram)
3
The most common form of autocorrelation is positive autocorrelation, in which:
A) large observations tend to follow both large and small observations
B) small observations tend to follow both large and small observations
C) large observations tend to follow large observations and small observations tend to follow small observations
D) large observations tend to follow small observations and small observations tend to follow large observations
A) large observations tend to follow both large and small observations
B) small observations tend to follow both large and small observations
C) large observations tend to follow large observations and small observations tend to follow small observations
D) large observations tend to follow small observations and small observations tend to follow large observations
large observations tend to follow large observations and small observations tend to follow small observations
4
The idea behind the runs test is that a random number series should have a number of runs that is:
A) large
B) small
C) not large or small
D) constant
A) large
B) small
C) not large or small
D) constant
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5
A linear trend means that the time series variable changes by a:
A) constant amount each time period
B) constant percentage each time period
C) positive amount each time period
D) negative amount each time period
A) constant amount each time period
B) constant percentage each time period
C) positive amount each time period
D) negative amount each time period
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6
What is a component of a time series?
A) base series
B) trend
C) seasonal component
D) cyclic component
E) all of these choices
A) base series
B) trend
C) seasonal component
D) cyclic component
E) all of these choices
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7
Econometric models can also be called:
A) judgmental models
B) time series models
C) causal models
D) environmetric models
A) judgmental models
B) time series models
C) causal models
D) environmetric models
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8
Which summary measure for forecast errors does not depend on the units of the forecast variable?
A) MAE (mean absolute error)
B) MFE (mean forecast error)
C) RMSE (root mean square error)
D) MAPE (mean absolute percentage error)
A) MAE (mean absolute error)
B) MFE (mean forecast error)
C) RMSE (root mean square error)
D) MAPE (mean absolute percentage error)
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9
Examples of non-random patterns that may be evident on a time series graph include:
A) trends
B) increasing variance over time
C) a meandering pattern
D) too many zigzags
E) all of these choices
A) trends
B) increasing variance over time
C) a meandering pattern
D) too many zigzags
E) all of these choices
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10
Extrapolation methods attempt to:
A) use non-quantitative methods to predict future values
B) search for patterns in the data and then use those to predict future values
C) find variables that are correlated with the data being predicted
D) predict the next period's value by using the latest period's value
A) use non-quantitative methods to predict future values
B) search for patterns in the data and then use those to predict future values
C) find variables that are correlated with the data being predicted
D) predict the next period's value by using the latest period's value
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11
In a random series, successive observations are probabilistically independent of one another. If this property is violated, the observations are said to be:
A) autocorrelated
B) intercorrelated
C) causal
D) seasonal
A) autocorrelated
B) intercorrelated
C) causal
D) seasonal
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12
Forecasting models can be divided into three groups. They are:
A) time series, optimization, and simulation methods
B) judgmental, extrapolation, and econometric methods
C) judgmental, random, and linear methods
D) linear, non-linear, and extrapolation methods
A) time series, optimization, and simulation methods
B) judgmental, extrapolation, and econometric methods
C) judgmental, random, and linear methods
D) linear, non-linear, and extrapolation methods
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13
Which term refers to a consecutive series of observations that remain on one side of the base level?
A) outlier
B) random walk
C) run
D) variance
A) outlier
B) random walk
C) run
D) variance
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14
The forecast error is the difference between:
A) this period's value and the next period's value
B) the average value and the expected value of the response variable
C) the explanatory variable value and the response variable value
D) the actual value and the forecast value
A) this period's value and the next period's value
B) the average value and the expected value of the response variable
C) the explanatory variable value and the response variable value
D) the actual value and the forecast value
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15
In contrast to linear trend, an exponential trend is appropriate when the time series changes by a:
A) constant amount each time period
B) constant percentage each time period
C) positive amount each time period
D) negative amount each time period
A) constant amount each time period
B) constant percentage each time period
C) positive amount each time period
D) negative amount each time period
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16
A small p-value in the rune test provides evidence of:
A) randomness
B) nonrandomness
C) nonnormality
D) heteroscedasticity
A) randomness
B) nonrandomness
C) nonnormality
D) heteroscedasticity
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17
Which of the following is not one of the commonly used summary measures for forecast errors?
A) MAE (mean absolute error)
B) MFE (mean forecast error)
C) RMSE (root mean square error)
D) MAPE (mean absolute percentage error)
A) MAE (mean absolute error)
B) MFE (mean forecast error)
C) RMSE (root mean square error)
D) MAPE (mean absolute percentage error)
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18
The linear trend
was estimated using a time series with 20 time periods. The forecasted value for time period 21 is:
A) 120
B) 122
C) 160
D) 162

A) 120
B) 122
C) 160
D) 162
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19
The runs test uses a series of 0's and 1's. The 0's and 1's typically represent whether each observation is:
A) above or below the predicted value of Y
B) above or below the mean value of Y
C) is above or below the mean value of the previous two observations
D) is positive or negative
A) above or below the predicted value of Y
B) above or below the mean value of Y
C) is above or below the mean value of the previous two observations
D) is positive or negative
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20
Models such as moving averages, exponential smoothing, and linear trend use only:
A) future values of Y to forecast previous values of Y
B) previous values of Y to forecast future values of Y
C) multiple explanatory variables (not just values of Y) to forecast future values of Y
D) ratio-to-moving-average methods
A) future values of Y to forecast previous values of Y
B) previous values of Y to forecast future values of Y
C) multiple explanatory variables (not just values of Y) to forecast future values of Y
D) ratio-to-moving-average methods
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21
When using exponential smoothing, if you want the forecast to react quickly to movements in the series, you should choose:
A) values of
near 1
B) values of
near 0
C) values of
midway between 0 and 1
D) the values based on the particular data set
A) values of

B) values of

C) values of

D) the values based on the particular data set
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22
Perhaps the simplest and one of the most frequently used extrapolation methods is the:
A) moving average
B) linear trend
C) exponential trend
D) causal model
A) moving average
B) linear trend
C) exponential trend
D) causal model
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23
The moving average method can also be referred to as a(n) ____ method.
A) causal
B) smoothing
C) exponential
D) econometric
A) causal
B) smoothing
C) exponential
D) econometric
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24
In a random walk model, the:
A) series itself is random
B) series itself is not random but its differences are random
C) series itself and its differences are random
D) series itself and its differences are not random
A) series itself is random
B) series itself is not random but its differences are random
C) series itself and its differences are random
D) series itself and its differences are not random
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25
A regression approach can also be used to deal with seasonality by using ____ variables for the seasons.
A) smoothing
B) response
C) residual
D) dummy
A) smoothing
B) response
C) residual
D) dummy
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26
Holt's model differs from simple exponential smoothing in that it includes a term for:
A) seasonality
B) trend
C) residuals
D) cyclical fluctuations
A) seasonality
B) trend
C) residuals
D) cyclical fluctuations
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27
The data below represents sales for a particular product. If you were to use the moving average method with a span of 3 periods, what would be your forecast for period 5? 
A) 90
B) 100
C) 105
D) 110

A) 90
B) 100
C) 105
D) 110
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28
In a moving averages method, which of the following represent(s) the number of terms in the moving average?
A) a smoothing constant
B) the explanatory variables
C) an alpha value
D) a span
A) a smoothing constant
B) the explanatory variables
C) an alpha value
D) a span
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29
When using exponential smoothing, a smoothing constant
must be used. The value for
:
A) ranges between 0 and 1
B) ranges between -1 and +1
C) equals the largest observed value in the series
D) represents the strength of the association between the forecasted and observed values


A) ranges between 0 and 1
B) ranges between -1 and +1
C) equals the largest observed value in the series
D) represents the strength of the association between the forecasted and observed values
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30
Which of the following is not a method for dealing with seasonality in data?
A) Winter's exponential smoothing model
B) deseasonalizing the data, using any forecasting model, then reseasonalizing the data
C) multiple regression with lags for the seasons
D) multiple regression with dummy variables for the seasons
A) Winter's exponential smoothing model
B) deseasonalizing the data, using any forecasting model, then reseasonalizing the data
C) multiple regression with lags for the seasons
D) multiple regression with dummy variables for the seasons
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31
When using Holt's model, choosing values of the smoothing constant
that are near 1 will result in forecast models that:
A) react very quickly to changes in the level
B) react very quickly to changes in the trend
C) react very quickly to changes in the level and the trend
D) react very slowly to changes in the level and the trend

A) react very quickly to changes in the level
B) react very quickly to changes in the trend
C) react very quickly to changes in the level and the trend
D) react very slowly to changes in the level and the trend
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32
A trend component of a time series is a long-term, relatively smooth pattern or direction exhibited by a series, and its duration is more than one year.
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33
Suppose that a simple exponential smoothing model is used (with a = 0.30) to forecast monthly sandwich sales at a local sandwich shop. After June's demand is observed at 1520 sandwiches, the forecasted demand for July is 1600 sandwiches. At the beginning of July, what would be the forecasted demand for August?
A) 1520
B) 1544
C) 1550
D) 1600
A) 1520
B) 1544
C) 1550
D) 1600
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34
Suppose that a simple exponential smoothing model is used (with
= 0.40) to forecast monthly sandwich sales at a local sandwich shop. The forecasted demand for September was 1560 and the actual demand was 1480 sandwiches. Given this information, what would be the forecast number of sandwiches for October?
A) 1480
B) 1528
C) 1560
D) 1592

A) 1480
B) 1528
C) 1560
D) 1592
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35
The following are the values of a time series for the first four time periods:
Using a four-period moving average, the forecasted value for time period 5 is:
A) 24.5
B) 25.5
C) 26.5
D) 27.5

A) 24.5
B) 25.5
C) 26.5
D) 27.5
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36
Winters' model differs from Holt's model and simple exponential smoothing in that it includes an index for:
A) seasonality
B) trend
C) residuals
D) cyclical fluctuations
A) seasonality
B) trend
C) residuals
D) cyclical fluctuations
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37
The data below represents sales for a particular product. If you were to use the moving average method with a span of 4 periods, what would be your forecast for period 5? 
A) 90
B) 100
C) 105
D) 110

A) 90
B) 100
C) 105
D) 110
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38
A time series can consist of four different components: trend, seasonal, cyclical, and random (or noise).
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39
There are a variety of deseasonalizing methods, but they are typically variations of:
A) ratio-to-seasonality methods
B) ratio-to-exponential-smoothing methods
C) ratio-to-moving-average methods
D) linear trend
A) ratio-to-seasonality methods
B) ratio-to-exponential-smoothing methods
C) ratio-to-moving-average methods
D) linear trend
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40
A time series is any variable that is measured over time in sequential order.
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41
If the observations of a time series increase or decrease regularly through time, we say that the time series has a random (or noise) component.
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42
Econometric forecasting models, also called causal models, use regression to forecast a time series variable by using other explanatory time series variables.
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43
Forecasting software packages typically report several summary measures of the forecasting error. The most important of these are MAE (mean absolute error), RMSE (root mean square error), and MAPE (mean absolute percentage error).
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44
The time series component that reflects a wavelike pattern describing a long-term trend that is generally apparent over a number of years is called cyclical.
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45
A meandering pattern is an example of a random time series.
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46
The null hypothesis in a runs test is
the data series is random.

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47
The time series component that reflects a long-term, relatively smooth pattern or direction exhibited by a time series over a long time period, is called seasonal.
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48
Assume that the trend line
was calculated from quarterly data for 2011 - 2015, where t = 1 for the first quarter of 2011. The trend value for the second quarter of the year 2016 is 0.75.

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49
If a random series has too few runs, then it is zigzagging too often.
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50
Extrapolation forecasting methods are quantitative methods that use past data of a time series variable - and nothing else, except possible time itself - to forecast values of the variable.
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51
An exponential trend is appropriate when the time series changes by a constant percentage each period.
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52
The seasonal component of a time series is more difficult to predict than the cyclic component because cyclic variation is much more regular.
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53
A shortcoming of the RMSE (root mean square error) is that it is not in the same units as the forecast variable.
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54
As is the case with residuals from regression, the forecast errors for nonregression methods will always average to zero.
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55
The runs test is a formal test of the null hypothesis of randomness. If there are too many or too few runs in the series, then we conclude that the series is not random.
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56
The most common form of autocorrelation is positive autocorrelation, where large observations tend to follow large observations and small observations tend to follow small observations.
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57
The cyclic component of a time series is more likely to exhibit business cycles that record periods of economic recession and inflation.
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58
An autocorrelation is a type of correlation used to measure whether the values of a time series are related to their own past values.
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59
If a time series exhibits an exponential trend, then a plot of its logarithm should be approximately linear.
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60
You will always get more accurate forecasts by using more complex forecasting methods.
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61
If the span of a moving average is large - say, 12 months - then few observations go into each average, and extreme values have relatively large effect on the forecasts.
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62
In a random walk model, there are significantly more runs than expected, and the autocorrelations are not significant.
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63
Holt's method is an exponential smoothing method, which is appropriate for a series with seasonality and possibly a trend.
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64
The purpose of using the moving average is to take away the short-term seasonal and random variation, leaving behind a combined trend and cyclical movement.
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65
Seasonal variations will not be present in a deseasonalized time series.
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66
If we use a value close to 1 for the smoothing constant
in a simple exponential smoothing model, then we expect the model to respond very slowly to changes in the level.

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67
The seasonal component of a time series is more likely to exhibit the relatively steady growth of a variable, such as the population of Egypt from 35 million in 1960 to 93 million in 2016.
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68
If we use a value close to 1 for the level smoothing constant
and a value close to 0 for the trend smoothing constant
in Holt's exponential smoothing model, then we expect the model to respond very quickly to changes in the level, but very slowly to changes in the trend.


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69
Every form of exponential smoothing model has at least one smoothing constant, which is always between 0 and 1.
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70
We compute the five-period moving averages for all time periods except the first two.
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71
Simple exponential smoothing is appropriate for a series without a pronounced trend or seasonality.
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72
The moving average method is perhaps the simplest and one of the most frequently-used extrapolation methods.
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73
In exponential smoothing models, the forecast is based on the level at time t, Lt, which is not observable and can only be estimated.
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74
The smoothing constants in exponential smoothing models are effectively a way to assign different weights to past levels, trends and cycles in the data.
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75
Correlogram is a bar chart of autocorrelation at different lags.
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76
A moving average is the average of the observations in the past few periods, where the number of terms in the average is the span.
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77
An equation for the random walk model is given by the equation:
, where
is the change in the time series from time t to time t - 1,
is a constant, and
is a random variable (noise) with mean 0 and some standard deviation
.





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78
To deseasonalize an observation (assuming a multiplicative model of seasonality), multiply it by the appropriate seasonal index.
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79
To calculate the five-period moving average for a time series, we average the values in the two preceding periods, and the values in the three following time periods.
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80
The smoothing constant used in simple exponential smoothing is analogous to the span in moving averages.
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