SlideShare a Scribd company logo
1 of 25
1. You are given only three quarterly seasonal indices and
quarterly seasonally adjusted data for the entire year. What is
the raw data value for Q4? Raw data is not adjusted for
seasonality.
Quarter Seasonal Index Seasonally Adjusted Data
Q1 .80 295
Q2 .85 299
Q3 1.15 270
Q4 --- 271
(Points : 3)
[removed]
325
[removed]
225
[removed]
252
[removed]
271
Question 2.
2.
One model of exponential smoothing will provide almost the
same forecast as a liner trend method. What are linear trend
intercept and slope counterparts for exponential smoothing?
[removed]
Alpha and Delta
[removed]
Delta and Gamma
[removed]
Alpha and Gamma
[removed]
Std Dev and Mean
Question 3.
3.
Why is the residual mean value important to a forecaster?
(Points : 3)
[removed]
Large mean values indicate nonautoregressiveness.
[removed]
Small mean values indicate the total amount of error is small
.
[removed]
Large absolute mean values indicate estimate bias
.
[removed]
Large mean values indicate the standard error of the model is
small.
Question 4.
4.
When performing correlation analysis what is the null
hypothesis? What measure in Minitab is used to test it and to
be 95% confident in the significance of correlation coefficient.
(Points : 3)
[removed]
Ho: r = .05 p < .5
[removed]
Ho: r = 1 p =.05
[removed]
Ho: r ≠ 0 p≤.05
[removed]
Ho: r = 0 p≤.05
Question 5.
5.
In decomposition what does the cycle factor (CF) of .80
represent for a monthly forecast estimate of a Y variable?
(Points : 3)
[removed]
The estimated value is 80% of the average monthly seasonal
estimate
.
[removed]
The estimate is .80 of the forecasted Y trend value
.
[removed]
The estimated value is .80 of the historical average CMA
values.
[removed]
The estimated value has 20% more variation than the average
historical Y data values
.
Question 6.
6.
A Burger King franchise owner notes that the sales per store has
fallen below the stated national Burger King outlet average of
$1,258,000. He asserts a change has occurred that reduced the
fast food eating habits of Americans. What is his hypothesis
(H1) and what type of test for significance must be applied?
(Points : 3)
[removed]
H1: u ≥ $1.258,000 A one-tailed t-test to the left
.
[removed]
H1: u = $1.258,000 A two-tailed t-test.
[removed]
H1: u < $1.258,000 A one-tailed t-test to the left.
[removed]
H1: p < $1.258,000 A one-tailed test to the right
.
Question 7.
7.
The CEO of Home Depot wants to see if city size has any
relationship to the current profit margins of the company
stores. What data type will he likely use to determine this?
(Points : 3)
[removed]
Time series data of profits by store.
[removed]
Recent 10 year sample of profits by stores.
[removed]
Recent cross section of store profits by city.
[removed]
Trend of a random sample of store profits over time
.
Question 8.
8.
Sometimes forecasters get lazy or forgetful and do not check the
significance of XY data correlations and use the X variable to
forecast Y. What is the result of this?
(Points : 3)
[removed]
Type 2 error
[removed]
Autocorrelation error
[removed]
Type 3 error
[removed]
Type 1 error
Question 9.
9.
In exponential smoothing what is the weight of the alpha
coefficient for a time series data observation from the 3
rd
previous period if the original alpha value is set at .3?
(Points : 3)
[removed]
The weight cannot be calculated since the data observation is
not given.
[removed]
The weight is zero since the alpha value is set relatively high.
[removed]
.125
[removed]
.103
[removed]
.084
Question 10.
10.
What is not a characteristic of a random data series
? (Points : 3)
[removed]
Zero mean with an normal distribution
[removed]
ACF LBQ values greater than a .05
confidence level.
[removed]
Non Autoregressive observations
[removed]
Central tendency
Question 11.
11.
What is the major cause of non randomness (autoregressiveness)
in business data?
(Points : 3)
[removed]
Randomness only occurs for short time periods
.
[removed]
Random events such as storms or technologies offset over the
long run
.
[removed]
Measurements naturally increase or decrease over time
.
[removed]
Business participant’s decisions and work
.
Question 12.
12.
Given the data series below for variables Y (Monthly Inventory
Balance) and X (Monthly Sales) are they significantly
correlated at the 95% confidence level and how can you tell?
(This data also appears in the docsharing download for Exam 1
excel worksheet under the problem 12 tab.)
Ending Inv. Bal. Y
Monthly Sales X
1544
5053
1913
5052
2028
7507
1178
2887
1554
3880
1910
4454
1208
3855
2467
8824
2101
5716
(Points : 3)
[removed]
Yes. The correlation coefficient is .873 that is greater than .05
.
[removed]
Yes. The correlation p-value is .002 which is less than .05
.
[removed]
No. The correlation coefficient is above the p-value
.
[removed]
No. The correlation p-value is greater than the 95% confidence
level.
Question 13.
13.
You have forecast the sales for your company for the last 12
months and the forecast residuals are shown below. Are these
residuals to be considered random? (This data also appears in
the docsharing excel worksheet download for Exam 1 under the
Problem 13 tab.)
Residuals
-24
-348
-892
-62
-378
-489
-342
34
490
23
578
198 (Points : 3)
[removed]
Yes, since the residuals randomly vary in magnitude.
[removed]
Yes since the residuals are positive and negative and vary in
magnitude
.
[removed]
No, since the residuals are stationary and vary in magnitude.
[removed]
No, since the residuals indicate positive slope.
Question 14.
14.
Which form of exponential smoothing can result in a naïve
forecast?
(Points : 3)
[removed]
Winters with a very low seasonal coefficient.
[removed]
Single with a very low trend coefficient.
[removed]
Single with a very high alpha value.
[removed]
Double with a very low alpha value.
Question 15.
15.
What primary statistical characteristic enables forecasters to
move from uncertainty to quantifiable low risk in the business
forecasting process?
(Points : 3)
[removed]
Large amounts of available business data naturally create
statistical accuracy.
[removed]
Although business data are not normally distributed the
statistics from the data are normally distributed
.
[removed]
Statistical forecasting technology has improved the accuracy of
models to the point that forecast will not be needed.
[removed]
Statistical t and p-values determine the model accuracy.
Question 16.
16.
What is used to determine the forecast model confidence level
for Exponential Smoothing and Decomposition models?
(Points : 3)
[removed]
The significance level of the smoothing constants
[removed]
The error measures
[removed]
The residual LBQ Chi-square values
[removed]
The mean of the residuals
Question 17.
17.
You are responsible for forecasting your company’s revenues
for the next 24 months. You have three years of historical
monthly data and previous forecasts that indicate that the
company revenues with no obvious seasonality have grown
significantly over that time. Which forecast method would you
apply to the problem?
(Points : 3)
[removed]
3 period moving average
[removed]
12 period moving average
[removed]
Simple exponential smoothing
[removed]
Double exponential smoothing
Question 18.
18.
You obtained a correlation coefficient from two data series that
indicates a p-value of .97. Can you be 95% confident that the
correlation is significantly different from zero?
(Points : 3)
[removed]
Yes, since the p value is above the confidence level
.
[removed]
Yes, since the p value is above 1 minus the confidence level.
[removed]
No, since the p-value is above the 1 minus the confidence level.
[removed]
No, since the data is not provided to determine true confidence.
Question 19.
19.
In decomposition the seasonal indices are the period
relationships between what two data series?
(Points : 3)
[removed]
Seasonal moving averages and the trend data series.
[removed]
Smoothed data from centered moving averaging (seasonally
adjusted) and the original data series
.
[removed]
Trend data and the cycle factors
.
[removed]
Trend data and the original data series.
Question 20.
20.
If you have trend in a data series how can you confirm it and
determine if it is statistically significant" (Points : 3)
[removed]
Autocorrelation functions that spike in the 4th and 8th quarters
and have LBQ values below the LBQ table values.
[removed]
A time series plot that shows the data rising and falling.
[removed]
Histogram that shows the data centered around a zero mean
value with a normal distribution.
[removed]
Autocorrelation functions that step down toward zero and have
LBQ values above the Chi-square tables values.
Question 21.
21.
Golfsmith a sporting goods company requires an eight quarter
sales forecast. From the revenue data below (also found in Doc
Sharing under Exam 1 Data Problem 21) what is the appropriate
exponential smoothing model to apply in order to develop the
best quarterly forecast?
Date
Revenue
3/31/2006
74.810
6/30/2006
114.138
9/29/2006
93.980
12/29/2006
74.962
3/30/2007
77.663
6/29/2007
124.999
9/28/2007
106.527
12/31/2007
78.969
3/31/2008
79.236
6/30/2008
129.995
9/30/2008
101.702
12/31/2008
67.840
3/31/2009
68.793
6/30/2009
114.797
9/30/2009
90.586
12/31/2009
63.850
3/31/2010
67.649
6/30/2010
118.046
9/30/2010
93.272
12/31/2010
72.885
3/31/2011
81.515
6/30/2011
130.220
9/30/2011
100.997
12/30/2011
74.535
3/30/2012
90.456
(Points : 4)
[removed]
Double Exponential Smoothing (Holt's)
[removed]
Single Exponential Smoothing
[removed]
4 Period Moving Average
[removed]
Winter's Exponential Smoothing
[removed]
Linear Trend
Question 22.
22.
Run the data with the exponential smoothing model that applies
and obtain the best model by adjusting each of the
coefficients.
(Do not use Optimal ARIMA to find the smoothing
coefficients. Make sure that you only use
one
decimal place for each coefficient – e.g. .1, or .2, or .3 ….
through .9.)
What coefficient values will result in the best exponential
smoothing result and the lowest error?
(Points : 4)
[removed]
.9 level, .8 trend, .9 seasonal
[removed]
.9 level, .5 trend
[removed]
.9 level, .1 trend, .1 seasonal
[removed]
.2 level, .6 trend, .9 seasonal
[removed]
.2 level.
Question 23.
23.
What is the RMSE for the Fit period for the best exponential
smoothing model?
(Points : 4)
[removed]
22.63
[removed]
3.75
[removed]
1.31
[removed]
14.06
[removed]
142.76
Question 24.
24.
Use the best exponential smoothing model to generate a forecast
for 8 quarters. What is the forecast value for the 8
th
quarter?
(Points : 4)
[removed]
28.1
[removed]
85.1
[removed]
60.4
[removed]
46.8
[removed]
75.3
Question 25.
25.
The Fit period residuals from the best exponential smoothing
model are autocorrelated through the 12th lag. (Points : 4)
[removed]
True
[removed]
False
Question 26.
26.
Use the same quarterly Golfsmith sales data series and run a
decomposition model and estimate 8 forecast periods. Which
quarter has the greatest seasonal sales?
(Points : 4)
[removed]
Quarter 1
[removed]
Quarter 2
[removed]
Quarter 4
[removed]
Quarter 3
Question 27.
27.
What is the decomposition forecast value for the 8
th
period (last forecast quarter). Be sure to
adjust
the forecast with the most recent (last) cycle factor.
(Points : 4)
[removed]
65.0
[removed]
61.5
[removed]
103.8
[removed]
58.2
[removed]
73.2
Question 28.
28.
Are the decomposition fit period residuals random? Why or
why not?
(Points : 4)
[removed]
No. They still have seasonality.
[removed]
No. They still have significant cycle.
[removed]
Yes. They are normally distributed with a near zero mean.
[removed]
Yes. None of the residuals are significantly autoregressive.
Question 29.
29.
Based on your analysis of the best exponential smoothing and
cycle adjusted decomposition forecast MAPE and residual
analysis which model produces the best results and why?
(Points : 4)
[removed]
The exponential smoothing model forecast is best since it
picked up cycle better than the adjusted decomposition forecast
and produced more random residuals.
[removed]
The decomposition forecast is best since it picks up
seasonality much better than the exponential smoothing model
and produces high Chi-square values.
[removed]
The exponential smoothing model is best since it has lower
error measures than the decomposition model forecast and is,
therefore, more accurate.
[removed]
The decomposition model forecast is best since the forecast is
closer to the Hold Out and it produced lower error for the
forecast period.
Question 30.
30.
Forecast error measures and residual analysis can only be used
where quantitative forecast methods and models are applied to
data. (Points : 4)
[removed]
True
[removed]
False

More Related Content

Similar to 1. You are given only three quarterly seasonal indices and qua.docx

Control charts[1]
Control charts[1]Control charts[1]
Control charts[1]66784532
 
Part I (Short Answer)1. In Java, what are the three different w.docx
Part I (Short Answer)1. In Java, what are the three different w.docxPart I (Short Answer)1. In Java, what are the three different w.docx
Part I (Short Answer)1. In Java, what are the three different w.docxherbertwilson5999
 
Pg. 02 discuss, analytically yet briefly, the role of
Pg. 02 discuss, analytically yet briefly, the role ofPg. 02 discuss, analytically yet briefly, the role of
Pg. 02 discuss, analytically yet briefly, the role ofJUST36
 
Math 533Applied Managerial StatisticsCourse Project.docx
Math 533Applied Managerial StatisticsCourse Project.docxMath 533Applied Managerial StatisticsCourse Project.docx
Math 533Applied Managerial StatisticsCourse Project.docxbunnyfinney
 
Statistical Process ControlAgendaIntroductionNumber of.docx
Statistical Process ControlAgendaIntroductionNumber of.docxStatistical Process ControlAgendaIntroductionNumber of.docx
Statistical Process ControlAgendaIntroductionNumber of.docxsusanschei
 
Demand forecasting methods 1 gp
Demand forecasting methods 1 gpDemand forecasting methods 1 gp
Demand forecasting methods 1 gpPUTTU GURU PRASAD
 
Product Design Forecasting Techniquesision.ppt
Product Design Forecasting Techniquesision.pptProduct Design Forecasting Techniquesision.ppt
Product Design Forecasting Techniquesision.pptavidc1000
 

Similar to 1. You are given only three quarterly seasonal indices and qua.docx (20)

Control charts[1]
Control charts[1]Control charts[1]
Control charts[1]
 
Control Charts[1]
Control Charts[1]Control Charts[1]
Control Charts[1]
 
Control Charts[1]
Control Charts[1]Control Charts[1]
Control Charts[1]
 
MAT 510 Entire Course NEW
MAT 510 Entire Course NEWMAT 510 Entire Course NEW
MAT 510 Entire Course NEW
 
1030 track1 heiler
1030 track1 heiler1030 track1 heiler
1030 track1 heiler
 
Part I (Short Answer)1. In Java, what are the three different w.docx
Part I (Short Answer)1. In Java, what are the three different w.docxPart I (Short Answer)1. In Java, what are the three different w.docx
Part I (Short Answer)1. In Java, what are the three different w.docx
 
Ch3. Demand Forecasting.ppt
Ch3. Demand Forecasting.pptCh3. Demand Forecasting.ppt
Ch3. Demand Forecasting.ppt
 
Pg. 02 discuss, analytically yet briefly, the role of
Pg. 02 discuss, analytically yet briefly, the role ofPg. 02 discuss, analytically yet briefly, the role of
Pg. 02 discuss, analytically yet briefly, the role of
 
Chap011
Chap011Chap011
Chap011
 
Math 533Applied Managerial StatisticsCourse Project.docx
Math 533Applied Managerial StatisticsCourse Project.docxMath 533Applied Managerial StatisticsCourse Project.docx
Math 533Applied Managerial StatisticsCourse Project.docx
 
Statistical Process ControlAgendaIntroductionNumber of.docx
Statistical Process ControlAgendaIntroductionNumber of.docxStatistical Process ControlAgendaIntroductionNumber of.docx
Statistical Process ControlAgendaIntroductionNumber of.docx
 
Demand forecasting methods 1 gp
Demand forecasting methods 1 gpDemand forecasting methods 1 gp
Demand forecasting methods 1 gp
 
Six sigma
Six sigma Six sigma
Six sigma
 
Six sigma pedagogy
Six sigma pedagogySix sigma pedagogy
Six sigma pedagogy
 
Basic Statistics to start Analytics
Basic Statistics to start AnalyticsBasic Statistics to start Analytics
Basic Statistics to start Analytics
 
1440 track3 galusha
1440 track3 galusha1440 track3 galusha
1440 track3 galusha
 
Quality_Tools1.ppt
Quality_Tools1.pptQuality_Tools1.ppt
Quality_Tools1.ppt
 
forecasting
forecastingforecasting
forecasting
 
Seven Quality Tools.pptx
Seven Quality Tools.pptxSeven Quality Tools.pptx
Seven Quality Tools.pptx
 
Product Design Forecasting Techniquesision.ppt
Product Design Forecasting Techniquesision.pptProduct Design Forecasting Techniquesision.ppt
Product Design Forecasting Techniquesision.ppt
 

More from KiyokoSlagleis

1.Assess the main steps involved in developing an effective stra.docx
1.Assess the main steps involved in developing an effective stra.docx1.Assess the main steps involved in developing an effective stra.docx
1.Assess the main steps involved in developing an effective stra.docxKiyokoSlagleis
 
1.Choose one of the critical steps to building a secure organi.docx
1.Choose one of the critical steps to building a secure organi.docx1.Choose one of the critical steps to building a secure organi.docx
1.Choose one of the critical steps to building a secure organi.docxKiyokoSlagleis
 
1.Briefly summarize the purpose of the implementation phase in SDLC..docx
1.Briefly summarize the purpose of the implementation phase in SDLC..docx1.Briefly summarize the purpose of the implementation phase in SDLC..docx
1.Briefly summarize the purpose of the implementation phase in SDLC..docxKiyokoSlagleis
 
1.Choose four standard corporate executive positions and des.docx
1.Choose four standard corporate executive positions and des.docx1.Choose four standard corporate executive positions and des.docx
1.Choose four standard corporate executive positions and des.docxKiyokoSlagleis
 
1.An eassy talk about ethics by a ethics song. You can find a ethics.docx
1.An eassy talk about ethics by a ethics song. You can find a ethics.docx1.An eassy talk about ethics by a ethics song. You can find a ethics.docx
1.An eassy talk about ethics by a ethics song. You can find a ethics.docxKiyokoSlagleis
 
1.A school psychologist strongly believes a particular child is .docx
1.A school psychologist strongly believes a particular child is .docx1.A school psychologist strongly believes a particular child is .docx
1.A school psychologist strongly believes a particular child is .docxKiyokoSlagleis
 
1.Choose one stanza from Aaron Abeytas thirteen ways of looking .docx
1.Choose one stanza from Aaron Abeytas thirteen ways of looking .docx1.Choose one stanza from Aaron Abeytas thirteen ways of looking .docx
1.Choose one stanza from Aaron Abeytas thirteen ways of looking .docxKiyokoSlagleis
 
1.A psychologist is interested in learning more about how childr.docx
1.A psychologist is interested in learning more about how childr.docx1.A psychologist is interested in learning more about how childr.docx
1.A psychologist is interested in learning more about how childr.docxKiyokoSlagleis
 
1.A school psychologist strongly believes a particular child i.docx
1.A school psychologist strongly believes a particular child i.docx1.A school psychologist strongly believes a particular child i.docx
1.A school psychologist strongly believes a particular child i.docxKiyokoSlagleis
 
1.According to the NIST, what were the reasons for the collapse of.docx
1.According to the NIST, what were the reasons for the collapse of.docx1.According to the NIST, what were the reasons for the collapse of.docx
1.According to the NIST, what were the reasons for the collapse of.docxKiyokoSlagleis
 
1.5 page for thisPlease review the Case Study introduction present.docx
1.5 page for thisPlease review the Case Study introduction present.docx1.5 page for thisPlease review the Case Study introduction present.docx
1.5 page for thisPlease review the Case Study introduction present.docxKiyokoSlagleis
 
1.) What is Mills response to the objection that happiness cannot b.docx
1.) What is Mills response to the objection that happiness cannot b.docx1.) What is Mills response to the objection that happiness cannot b.docx
1.) What is Mills response to the objection that happiness cannot b.docxKiyokoSlagleis
 
1.Add an example or evidence for each reasons ( i listd )why the use.docx
1.Add an example or evidence for each reasons ( i listd )why the use.docx1.Add an example or evidence for each reasons ( i listd )why the use.docx
1.Add an example or evidence for each reasons ( i listd )why the use.docxKiyokoSlagleis
 
1.1. Some of the most serious abuses taking place in developing .docx
1.1. Some of the most serious abuses taking place in developing .docx1.1. Some of the most serious abuses taking place in developing .docx
1.1. Some of the most serious abuses taking place in developing .docxKiyokoSlagleis
 
1.A population of grasshoppers in the Kansas prairie has two col.docx
1.A population of grasshoppers in the Kansas prairie has two col.docx1.A population of grasshoppers in the Kansas prairie has two col.docx
1.A population of grasshoppers in the Kansas prairie has two col.docxKiyokoSlagleis
 
1.5 pages single spaced, include References and when necessary, imag.docx
1.5 pages single spaced, include References and when necessary, imag.docx1.5 pages single spaced, include References and when necessary, imag.docx
1.5 pages single spaced, include References and when necessary, imag.docxKiyokoSlagleis
 
1.1- What are the real reasons behind the existence of Racism W.docx
1.1- What are the real reasons behind the existence of Racism W.docx1.1- What are the real reasons behind the existence of Racism W.docx
1.1- What are the real reasons behind the existence of Racism W.docxKiyokoSlagleis
 
1.) Connect 3 Due October 4th2.) Connect 4 Due Octob.docx
1.) Connect 3 Due October 4th2.) Connect 4 Due Octob.docx1.) Connect 3 Due October 4th2.) Connect 4 Due Octob.docx
1.) Connect 3 Due October 4th2.) Connect 4 Due Octob.docxKiyokoSlagleis
 
1.  Write an equation in standard form of the parabola that has th.docx
1.  Write an equation in standard form of the parabola that has th.docx1.  Write an equation in standard form of the parabola that has th.docx
1.  Write an equation in standard form of the parabola that has th.docxKiyokoSlagleis
 
1.A health psychologist in a northern climate wants to evaluate .docx
1.A health psychologist in a northern climate wants to evaluate .docx1.A health psychologist in a northern climate wants to evaluate .docx
1.A health psychologist in a northern climate wants to evaluate .docxKiyokoSlagleis
 

More from KiyokoSlagleis (20)

1.Assess the main steps involved in developing an effective stra.docx
1.Assess the main steps involved in developing an effective stra.docx1.Assess the main steps involved in developing an effective stra.docx
1.Assess the main steps involved in developing an effective stra.docx
 
1.Choose one of the critical steps to building a secure organi.docx
1.Choose one of the critical steps to building a secure organi.docx1.Choose one of the critical steps to building a secure organi.docx
1.Choose one of the critical steps to building a secure organi.docx
 
1.Briefly summarize the purpose of the implementation phase in SDLC..docx
1.Briefly summarize the purpose of the implementation phase in SDLC..docx1.Briefly summarize the purpose of the implementation phase in SDLC..docx
1.Briefly summarize the purpose of the implementation phase in SDLC..docx
 
1.Choose four standard corporate executive positions and des.docx
1.Choose four standard corporate executive positions and des.docx1.Choose four standard corporate executive positions and des.docx
1.Choose four standard corporate executive positions and des.docx
 
1.An eassy talk about ethics by a ethics song. You can find a ethics.docx
1.An eassy talk about ethics by a ethics song. You can find a ethics.docx1.An eassy talk about ethics by a ethics song. You can find a ethics.docx
1.An eassy talk about ethics by a ethics song. You can find a ethics.docx
 
1.A school psychologist strongly believes a particular child is .docx
1.A school psychologist strongly believes a particular child is .docx1.A school psychologist strongly believes a particular child is .docx
1.A school psychologist strongly believes a particular child is .docx
 
1.Choose one stanza from Aaron Abeytas thirteen ways of looking .docx
1.Choose one stanza from Aaron Abeytas thirteen ways of looking .docx1.Choose one stanza from Aaron Abeytas thirteen ways of looking .docx
1.Choose one stanza from Aaron Abeytas thirteen ways of looking .docx
 
1.A psychologist is interested in learning more about how childr.docx
1.A psychologist is interested in learning more about how childr.docx1.A psychologist is interested in learning more about how childr.docx
1.A psychologist is interested in learning more about how childr.docx
 
1.A school psychologist strongly believes a particular child i.docx
1.A school psychologist strongly believes a particular child i.docx1.A school psychologist strongly believes a particular child i.docx
1.A school psychologist strongly believes a particular child i.docx
 
1.According to the NIST, what were the reasons for the collapse of.docx
1.According to the NIST, what were the reasons for the collapse of.docx1.According to the NIST, what were the reasons for the collapse of.docx
1.According to the NIST, what were the reasons for the collapse of.docx
 
1.5 page for thisPlease review the Case Study introduction present.docx
1.5 page for thisPlease review the Case Study introduction present.docx1.5 page for thisPlease review the Case Study introduction present.docx
1.5 page for thisPlease review the Case Study introduction present.docx
 
1.) What is Mills response to the objection that happiness cannot b.docx
1.) What is Mills response to the objection that happiness cannot b.docx1.) What is Mills response to the objection that happiness cannot b.docx
1.) What is Mills response to the objection that happiness cannot b.docx
 
1.Add an example or evidence for each reasons ( i listd )why the use.docx
1.Add an example or evidence for each reasons ( i listd )why the use.docx1.Add an example or evidence for each reasons ( i listd )why the use.docx
1.Add an example or evidence for each reasons ( i listd )why the use.docx
 
1.1. Some of the most serious abuses taking place in developing .docx
1.1. Some of the most serious abuses taking place in developing .docx1.1. Some of the most serious abuses taking place in developing .docx
1.1. Some of the most serious abuses taking place in developing .docx
 
1.A population of grasshoppers in the Kansas prairie has two col.docx
1.A population of grasshoppers in the Kansas prairie has two col.docx1.A population of grasshoppers in the Kansas prairie has two col.docx
1.A population of grasshoppers in the Kansas prairie has two col.docx
 
1.5 pages single spaced, include References and when necessary, imag.docx
1.5 pages single spaced, include References and when necessary, imag.docx1.5 pages single spaced, include References and when necessary, imag.docx
1.5 pages single spaced, include References and when necessary, imag.docx
 
1.1- What are the real reasons behind the existence of Racism W.docx
1.1- What are the real reasons behind the existence of Racism W.docx1.1- What are the real reasons behind the existence of Racism W.docx
1.1- What are the real reasons behind the existence of Racism W.docx
 
1.) Connect 3 Due October 4th2.) Connect 4 Due Octob.docx
1.) Connect 3 Due October 4th2.) Connect 4 Due Octob.docx1.) Connect 3 Due October 4th2.) Connect 4 Due Octob.docx
1.) Connect 3 Due October 4th2.) Connect 4 Due Octob.docx
 
1.  Write an equation in standard form of the parabola that has th.docx
1.  Write an equation in standard form of the parabola that has th.docx1.  Write an equation in standard form of the parabola that has th.docx
1.  Write an equation in standard form of the parabola that has th.docx
 
1.A health psychologist in a northern climate wants to evaluate .docx
1.A health psychologist in a northern climate wants to evaluate .docx1.A health psychologist in a northern climate wants to evaluate .docx
1.A health psychologist in a northern climate wants to evaluate .docx
 

Recently uploaded

ENGLISH5 QUARTER4 MODULE1 WEEK1-3 How Visual and Multimedia Elements.pptx
ENGLISH5 QUARTER4 MODULE1 WEEK1-3 How Visual and Multimedia Elements.pptxENGLISH5 QUARTER4 MODULE1 WEEK1-3 How Visual and Multimedia Elements.pptx
ENGLISH5 QUARTER4 MODULE1 WEEK1-3 How Visual and Multimedia Elements.pptxAnaBeatriceAblay2
 
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdfBASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdfSoniaTolstoy
 
Organic Name Reactions for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions  for the students and aspirants of Chemistry12th.pptxOrganic Name Reactions  for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions for the students and aspirants of Chemistry12th.pptxVS Mahajan Coaching Centre
 
A Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy ReformA Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy ReformChameera Dedduwage
 
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptxPOINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptxSayali Powar
 
Pharmacognosy Flower 3. Compositae 2023.pdf
Pharmacognosy Flower 3. Compositae 2023.pdfPharmacognosy Flower 3. Compositae 2023.pdf
Pharmacognosy Flower 3. Compositae 2023.pdfMahmoud M. Sallam
 
Incoming and Outgoing Shipments in 1 STEP Using Odoo 17
Incoming and Outgoing Shipments in 1 STEP Using Odoo 17Incoming and Outgoing Shipments in 1 STEP Using Odoo 17
Incoming and Outgoing Shipments in 1 STEP Using Odoo 17Celine George
 
Science lesson Moon for 4th quarter lesson
Science lesson Moon for 4th quarter lessonScience lesson Moon for 4th quarter lesson
Science lesson Moon for 4th quarter lessonJericReyAuditor
 
Paris 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activityParis 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activityGeoBlogs
 
Hybridoma Technology ( Production , Purification , and Application )
Hybridoma Technology  ( Production , Purification , and Application  ) Hybridoma Technology  ( Production , Purification , and Application  )
Hybridoma Technology ( Production , Purification , and Application ) Sakshi Ghasle
 
Solving Puzzles Benefits Everyone (English).pptx
Solving Puzzles Benefits Everyone (English).pptxSolving Puzzles Benefits Everyone (English).pptx
Solving Puzzles Benefits Everyone (English).pptxOH TEIK BIN
 
Computed Fields and api Depends in the Odoo 17
Computed Fields and api Depends in the Odoo 17Computed Fields and api Depends in the Odoo 17
Computed Fields and api Depends in the Odoo 17Celine George
 
Mastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory InspectionMastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory InspectionSafetyChain Software
 
Blooming Together_ Growing a Community Garden Worksheet.docx
Blooming Together_ Growing a Community Garden Worksheet.docxBlooming Together_ Growing a Community Garden Worksheet.docx
Blooming Together_ Growing a Community Garden Worksheet.docxUnboundStockton
 
internship ppt on smartinternz platform as salesforce developer
internship ppt on smartinternz platform as salesforce developerinternship ppt on smartinternz platform as salesforce developer
internship ppt on smartinternz platform as salesforce developerunnathinaik
 
Crayon Activity Handout For the Crayon A
Crayon Activity Handout For the Crayon ACrayon Activity Handout For the Crayon A
Crayon Activity Handout For the Crayon AUnboundStockton
 
Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)eniolaolutunde
 
CARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptxCARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptxGaneshChakor2
 
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdfssuser54595a
 

Recently uploaded (20)

ENGLISH5 QUARTER4 MODULE1 WEEK1-3 How Visual and Multimedia Elements.pptx
ENGLISH5 QUARTER4 MODULE1 WEEK1-3 How Visual and Multimedia Elements.pptxENGLISH5 QUARTER4 MODULE1 WEEK1-3 How Visual and Multimedia Elements.pptx
ENGLISH5 QUARTER4 MODULE1 WEEK1-3 How Visual and Multimedia Elements.pptx
 
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdfBASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdf
 
Organic Name Reactions for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions  for the students and aspirants of Chemistry12th.pptxOrganic Name Reactions  for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions for the students and aspirants of Chemistry12th.pptx
 
A Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy ReformA Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy Reform
 
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptxPOINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
 
9953330565 Low Rate Call Girls In Rohini Delhi NCR
9953330565 Low Rate Call Girls In Rohini  Delhi NCR9953330565 Low Rate Call Girls In Rohini  Delhi NCR
9953330565 Low Rate Call Girls In Rohini Delhi NCR
 
Pharmacognosy Flower 3. Compositae 2023.pdf
Pharmacognosy Flower 3. Compositae 2023.pdfPharmacognosy Flower 3. Compositae 2023.pdf
Pharmacognosy Flower 3. Compositae 2023.pdf
 
Incoming and Outgoing Shipments in 1 STEP Using Odoo 17
Incoming and Outgoing Shipments in 1 STEP Using Odoo 17Incoming and Outgoing Shipments in 1 STEP Using Odoo 17
Incoming and Outgoing Shipments in 1 STEP Using Odoo 17
 
Science lesson Moon for 4th quarter lesson
Science lesson Moon for 4th quarter lessonScience lesson Moon for 4th quarter lesson
Science lesson Moon for 4th quarter lesson
 
Paris 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activityParis 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activity
 
Hybridoma Technology ( Production , Purification , and Application )
Hybridoma Technology  ( Production , Purification , and Application  ) Hybridoma Technology  ( Production , Purification , and Application  )
Hybridoma Technology ( Production , Purification , and Application )
 
Solving Puzzles Benefits Everyone (English).pptx
Solving Puzzles Benefits Everyone (English).pptxSolving Puzzles Benefits Everyone (English).pptx
Solving Puzzles Benefits Everyone (English).pptx
 
Computed Fields and api Depends in the Odoo 17
Computed Fields and api Depends in the Odoo 17Computed Fields and api Depends in the Odoo 17
Computed Fields and api Depends in the Odoo 17
 
Mastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory InspectionMastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory Inspection
 
Blooming Together_ Growing a Community Garden Worksheet.docx
Blooming Together_ Growing a Community Garden Worksheet.docxBlooming Together_ Growing a Community Garden Worksheet.docx
Blooming Together_ Growing a Community Garden Worksheet.docx
 
internship ppt on smartinternz platform as salesforce developer
internship ppt on smartinternz platform as salesforce developerinternship ppt on smartinternz platform as salesforce developer
internship ppt on smartinternz platform as salesforce developer
 
Crayon Activity Handout For the Crayon A
Crayon Activity Handout For the Crayon ACrayon Activity Handout For the Crayon A
Crayon Activity Handout For the Crayon A
 
Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)
 
CARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptxCARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptx
 
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
 

1. You are given only three quarterly seasonal indices and qua.docx

  • 1. 1. You are given only three quarterly seasonal indices and quarterly seasonally adjusted data for the entire year. What is the raw data value for Q4? Raw data is not adjusted for seasonality. Quarter Seasonal Index Seasonally Adjusted Data Q1 .80 295 Q2 .85 299 Q3 1.15 270 Q4 --- 271 (Points : 3) [removed] 325 [removed] 225 [removed] 252 [removed] 271 Question 2. 2. One model of exponential smoothing will provide almost the same forecast as a liner trend method. What are linear trend intercept and slope counterparts for exponential smoothing? [removed]
  • 2. Alpha and Delta [removed] Delta and Gamma [removed] Alpha and Gamma [removed] Std Dev and Mean Question 3. 3. Why is the residual mean value important to a forecaster? (Points : 3) [removed] Large mean values indicate nonautoregressiveness. [removed] Small mean values indicate the total amount of error is small . [removed] Large absolute mean values indicate estimate bias . [removed] Large mean values indicate the standard error of the model is small.
  • 3. Question 4. 4. When performing correlation analysis what is the null hypothesis? What measure in Minitab is used to test it and to be 95% confident in the significance of correlation coefficient. (Points : 3) [removed] Ho: r = .05 p < .5 [removed] Ho: r = 1 p =.05 [removed] Ho: r ≠ 0 p≤.05 [removed] Ho: r = 0 p≤.05 Question 5. 5. In decomposition what does the cycle factor (CF) of .80 represent for a monthly forecast estimate of a Y variable? (Points : 3) [removed] The estimated value is 80% of the average monthly seasonal estimate .
  • 4. [removed] The estimate is .80 of the forecasted Y trend value . [removed] The estimated value is .80 of the historical average CMA values. [removed] The estimated value has 20% more variation than the average historical Y data values . Question 6. 6. A Burger King franchise owner notes that the sales per store has fallen below the stated national Burger King outlet average of $1,258,000. He asserts a change has occurred that reduced the fast food eating habits of Americans. What is his hypothesis (H1) and what type of test for significance must be applied? (Points : 3) [removed] H1: u ≥ $1.258,000 A one-tailed t-test to the left . [removed] H1: u = $1.258,000 A two-tailed t-test.
  • 5. [removed] H1: u < $1.258,000 A one-tailed t-test to the left. [removed] H1: p < $1.258,000 A one-tailed test to the right . Question 7. 7. The CEO of Home Depot wants to see if city size has any relationship to the current profit margins of the company stores. What data type will he likely use to determine this? (Points : 3) [removed] Time series data of profits by store. [removed] Recent 10 year sample of profits by stores. [removed] Recent cross section of store profits by city. [removed] Trend of a random sample of store profits over time .
  • 6. Question 8. 8. Sometimes forecasters get lazy or forgetful and do not check the significance of XY data correlations and use the X variable to forecast Y. What is the result of this? (Points : 3) [removed] Type 2 error [removed] Autocorrelation error [removed] Type 3 error [removed] Type 1 error Question 9. 9. In exponential smoothing what is the weight of the alpha coefficient for a time series data observation from the 3 rd previous period if the original alpha value is set at .3? (Points : 3)
  • 7. [removed] The weight cannot be calculated since the data observation is not given. [removed] The weight is zero since the alpha value is set relatively high. [removed] .125 [removed] .103 [removed] .084 Question 10. 10. What is not a characteristic of a random data series ? (Points : 3) [removed] Zero mean with an normal distribution [removed]
  • 8. ACF LBQ values greater than a .05 confidence level. [removed] Non Autoregressive observations [removed] Central tendency Question 11. 11. What is the major cause of non randomness (autoregressiveness) in business data? (Points : 3) [removed] Randomness only occurs for short time periods . [removed] Random events such as storms or technologies offset over the long run . [removed] Measurements naturally increase or decrease over time .
  • 9. [removed] Business participant’s decisions and work . Question 12. 12. Given the data series below for variables Y (Monthly Inventory Balance) and X (Monthly Sales) are they significantly correlated at the 95% confidence level and how can you tell? (This data also appears in the docsharing download for Exam 1 excel worksheet under the problem 12 tab.) Ending Inv. Bal. Y Monthly Sales X 1544 5053 1913 5052 2028 7507 1178 2887 1554 3880 1910 4454 1208
  • 10. 3855 2467 8824 2101 5716 (Points : 3) [removed] Yes. The correlation coefficient is .873 that is greater than .05 . [removed] Yes. The correlation p-value is .002 which is less than .05 . [removed] No. The correlation coefficient is above the p-value . [removed] No. The correlation p-value is greater than the 95% confidence level. Question 13. 13. You have forecast the sales for your company for the last 12
  • 11. months and the forecast residuals are shown below. Are these residuals to be considered random? (This data also appears in the docsharing excel worksheet download for Exam 1 under the Problem 13 tab.) Residuals -24 -348 -892 -62 -378 -489 -342 34 490 23 578 198 (Points : 3) [removed] Yes, since the residuals randomly vary in magnitude. [removed] Yes since the residuals are positive and negative and vary in magnitude . [removed] No, since the residuals are stationary and vary in magnitude. [removed] No, since the residuals indicate positive slope.
  • 12. Question 14. 14. Which form of exponential smoothing can result in a naïve forecast? (Points : 3) [removed] Winters with a very low seasonal coefficient. [removed] Single with a very low trend coefficient. [removed] Single with a very high alpha value. [removed] Double with a very low alpha value. Question 15. 15. What primary statistical characteristic enables forecasters to move from uncertainty to quantifiable low risk in the business forecasting process? (Points : 3) [removed] Large amounts of available business data naturally create
  • 13. statistical accuracy. [removed] Although business data are not normally distributed the statistics from the data are normally distributed . [removed] Statistical forecasting technology has improved the accuracy of models to the point that forecast will not be needed. [removed] Statistical t and p-values determine the model accuracy. Question 16. 16. What is used to determine the forecast model confidence level for Exponential Smoothing and Decomposition models? (Points : 3) [removed] The significance level of the smoothing constants [removed] The error measures [removed]
  • 14. The residual LBQ Chi-square values [removed] The mean of the residuals Question 17. 17. You are responsible for forecasting your company’s revenues for the next 24 months. You have three years of historical monthly data and previous forecasts that indicate that the company revenues with no obvious seasonality have grown significantly over that time. Which forecast method would you apply to the problem? (Points : 3) [removed] 3 period moving average [removed] 12 period moving average [removed] Simple exponential smoothing [removed] Double exponential smoothing
  • 15. Question 18. 18. You obtained a correlation coefficient from two data series that indicates a p-value of .97. Can you be 95% confident that the correlation is significantly different from zero? (Points : 3) [removed] Yes, since the p value is above the confidence level . [removed] Yes, since the p value is above 1 minus the confidence level. [removed] No, since the p-value is above the 1 minus the confidence level. [removed] No, since the data is not provided to determine true confidence. Question 19. 19. In decomposition the seasonal indices are the period relationships between what two data series? (Points : 3) [removed]
  • 16. Seasonal moving averages and the trend data series. [removed] Smoothed data from centered moving averaging (seasonally adjusted) and the original data series . [removed] Trend data and the cycle factors . [removed] Trend data and the original data series. Question 20. 20. If you have trend in a data series how can you confirm it and determine if it is statistically significant" (Points : 3) [removed] Autocorrelation functions that spike in the 4th and 8th quarters and have LBQ values below the LBQ table values. [removed] A time series plot that shows the data rising and falling. [removed] Histogram that shows the data centered around a zero mean
  • 17. value with a normal distribution. [removed] Autocorrelation functions that step down toward zero and have LBQ values above the Chi-square tables values. Question 21. 21. Golfsmith a sporting goods company requires an eight quarter sales forecast. From the revenue data below (also found in Doc Sharing under Exam 1 Data Problem 21) what is the appropriate exponential smoothing model to apply in order to develop the best quarterly forecast? Date Revenue 3/31/2006 74.810 6/30/2006 114.138 9/29/2006 93.980 12/29/2006 74.962 3/30/2007 77.663 6/29/2007 124.999 9/28/2007 106.527 12/31/2007 78.969 3/31/2008 79.236
  • 19. [removed] Single Exponential Smoothing [removed] 4 Period Moving Average [removed] Winter's Exponential Smoothing [removed] Linear Trend Question 22. 22. Run the data with the exponential smoothing model that applies and obtain the best model by adjusting each of the coefficients. (Do not use Optimal ARIMA to find the smoothing coefficients. Make sure that you only use one decimal place for each coefficient – e.g. .1, or .2, or .3 …. through .9.) What coefficient values will result in the best exponential smoothing result and the lowest error? (Points : 4) [removed] .9 level, .8 trend, .9 seasonal [removed] .9 level, .5 trend
  • 20. [removed] .9 level, .1 trend, .1 seasonal [removed] .2 level, .6 trend, .9 seasonal [removed] .2 level. Question 23. 23. What is the RMSE for the Fit period for the best exponential smoothing model? (Points : 4) [removed] 22.63 [removed] 3.75 [removed] 1.31 [removed] 14.06
  • 21. [removed] 142.76 Question 24. 24. Use the best exponential smoothing model to generate a forecast for 8 quarters. What is the forecast value for the 8 th quarter? (Points : 4) [removed] 28.1 [removed] 85.1 [removed] 60.4 [removed] 46.8 [removed] 75.3
  • 22. Question 25. 25. The Fit period residuals from the best exponential smoothing model are autocorrelated through the 12th lag. (Points : 4) [removed] True [removed] False Question 26. 26. Use the same quarterly Golfsmith sales data series and run a decomposition model and estimate 8 forecast periods. Which quarter has the greatest seasonal sales? (Points : 4) [removed] Quarter 1 [removed] Quarter 2 [removed] Quarter 4 [removed] Quarter 3
  • 23. Question 27. 27. What is the decomposition forecast value for the 8 th period (last forecast quarter). Be sure to adjust the forecast with the most recent (last) cycle factor. (Points : 4) [removed] 65.0 [removed] 61.5 [removed] 103.8 [removed] 58.2 [removed] 73.2 Question 28. 28. Are the decomposition fit period residuals random? Why or why not? (Points : 4) [removed]
  • 24. No. They still have seasonality. [removed] No. They still have significant cycle. [removed] Yes. They are normally distributed with a near zero mean. [removed] Yes. None of the residuals are significantly autoregressive. Question 29. 29. Based on your analysis of the best exponential smoothing and cycle adjusted decomposition forecast MAPE and residual analysis which model produces the best results and why? (Points : 4) [removed] The exponential smoothing model forecast is best since it picked up cycle better than the adjusted decomposition forecast and produced more random residuals. [removed] The decomposition forecast is best since it picks up
  • 25. seasonality much better than the exponential smoothing model and produces high Chi-square values. [removed] The exponential smoothing model is best since it has lower error measures than the decomposition model forecast and is, therefore, more accurate. [removed] The decomposition model forecast is best since the forecast is closer to the Hold Out and it produced lower error for the forecast period. Question 30. 30. Forecast error measures and residual analysis can only be used where quantitative forecast methods and models are applied to data. (Points : 4) [removed] True [removed] False