Title: Forecasting
1Forecasting
2Forecasting
3Class Results Getting ready in the AM
- Most number of steps 21
- Longest snooze time 120 minutes
- Longest shower 45 mins
- Shortest time getting ready (w/shower) 20 mins
- Longest time getting ready 3 hrs
- Latest alarm setting 1130 AM
- sets or ties previous record
4Tuesday mornings ready in 13 minutes
30 secs
1
2
shut off alarm / get up
5Tuesday mornings ready in 13 minutes
3
Brush teeth
60 secs
30 secs
90 secs
4
1
2
start shower
shut off alarm / get up
start coffee
6Tuesday mornings ready in 13 minutes
3
Select clothes 30 secs
Brush teeth
60 secs
30 secs
90 secs
4
1
2
start shower
shut off alarm / get up
start coffee
7Tuesday mornings ready in 13 minutes
3
Select clothes 30 secs
Brush teeth
60 secs
shower
30 secs
90 secs
6
4
1
2
180 secs
start shower
shut off alarm / get up
start coffee
8Tuesday mornings ready in 13 minutes
3
Select clothes 30 secs
Brush teeth
60 secs
shave
shower
30 secs
90 secs
6
7
4
1
2
180 secs
120 secs
start shower
shut off alarm / get up
start coffee
8 mins
9Tuesday mornings ready in 13 minutes
3
Select clothes 30 secs
Brush teeth
60 secs
shave
shower
30 secs
90 secs
6
7
4
1
2
180 secs
120 secs
start shower
shut off alarm / get up
30 secs
towel dry
start coffee
8
8 mins
10Tuesday mornings ready in 13 minutes
3
Select clothes 30 secs
Brush teeth
60 secs
shave
shower
30 secs
90 secs
6
7
4
1
2
180 secs
120 secs
start shower
shut off alarm / get up
30 secs
towel dry
start coffee
8
8 mins
apply makeupcomb hair
0 secs
9
11Tuesday mornings ready in 13 minutes
3
Select clothes 30 secs
Brush teeth
60 secs
shave
shower
30 secs
90 secs
6
7
4
1
2
180 secs
120 secs
start shower
shut off alarm / get up
30 secs
towel dry
start coffee
8
8 mins
apply makeupcomb hair
0 secs
dress
10
9
90 secs
12Tuesday mornings ready in 13 minutes
3
Select clothes 30 secs
Brush teeth
60 secs
shave
shower
30 secs
90 secs
6
7
4
1
2
180 secs
120 secs
start shower
shut off alarm / get up
30 secs
towel dry
start coffee
8
8 mins
apply makeupcomb hair
0 secs
make breakfast
dress
10
9
5
90 secs
60 secs
13Tuesday mornings ready in 13 minutes
3
Select clothes 30 secs
Brush teeth
60 secs
shave
shower
30 secs
90 secs
6
7
4
1
2
180 secs
120 secs
start shower
shut off alarm / get up
30 secs
towel dry
start coffee
8
8 mins
apply makeupcomb hair
0 secs
make breakfast
eat breakfast
dress
10
11
9
5
90 secs
60 secs
180 secs
gather stuff
30 secs
13
14Tuesday mornings ready in 13 minutes
3
Select clothes 30 secs
Brush teeth
60 secs
shave
shower
30 secs
90 secs
6
7
4
1
2
180 secs
120 secs
start shower
shut off alarm / get up
30 secs
towel dry
start coffee
8
8 mins
apply makeupcomb hair
0 secs
make breakfast
eat breakfast
dress
10
11
9
5
90 secs
60 secs
180 secs
gather stuff
30 secs
drive 30 mi
14
13
30 mins
15Tuesday mornings ready in 13 minutes
3
Select clothes 30 secs
Brush teeth
60 secs
shave
shower
30 secs
90 secs
6
7
4
1
2
180 secs
120 secs
start shower
shut off alarm / get up
30 secs
towel dry
start coffee
8
8 mins
apply makeupcomb hair
0 secs
make breakfast
eat breakfast
dress
10
11
9
5
90 secs
60 secs
180 secs
gather stuff
30 secs
Park n Ride
drive 30 mi
14
15
13
3 mins
30 mins
16Tuesday mornings ready in 13 minutes
3
Select clothes 30 secs
Brush teeth
60 secs
shave
shower
30 secs
90 secs
6
7
4
1
2
180 secs
120 secs
start shower
shut off alarm / get up
30 secs
towel dry
start coffee
8
8 mins
apply makeupcomb hair
0 secs
make breakfast
eat breakfast
dress
10
11
9
5
90 secs
60 secs
180 secs
gather stuff
30 secs
Park n Ride
shuttle/check-in
drive 30 mi
14
15
16
13
3 mins
30 mins
8 mins
17Tuesday mornings ready in 13 minutes
3
Select clothes 30 secs
Brush teeth
60 secs
shave
shower
30 secs
90 secs
6
7
4
1
2
180 secs
120 secs
start shower
shut off alarm / get up
30 secs
towel dry
start coffee
8
8 mins
apply makeupcomb hair
0 secs
13 minutes
make breakfast
eat breakfast
dress
10
11
9
5
90 secs
60 secs
180 secs
gather stuff
30 secs
54 1/2 minutes
Park n Ride
shuttle/check-in
drive 30 mi
14
15
16
13
3 mins
30 mins
8 mins
18Forecasting
19Situation Analysis
- You are the recently promoted manager of CSUSMs
Starbuck Coffee on campus. Its the week before
finals, and you are ordering coffee for next
week. What things should you consider into how
much coffee to order???
20Situation Analysis
- You are a senior forecasting agent for the
Internal Revenue Service. Your boss would like
you to forecast how much federal tax revenue the
IRS can expect to collect in 2007 from
California. What factors should you consider in
your response?
21Situation Analysis
- You are the Senior Production Manager for the
recently announced Boeing 777 aircraft. How
would you decide what production methods to use?
22Situation Analysis
- You are the instructor for HTM302, and have
access to homework grades for each student. Can
you use these to forecast how well students will
do on quizzes?
23Forecast Quiz from Homework scores?
R2 0.57
24Forecasting
- Predicting future events
- Qualitative methods
- Based on subjective methods
- Quantitative methods
- Based on mathematical formulas
25Forecasting
- Example Here are the factors that have entered
into a salespersons forecast for next quarter
which are quantitive and which are qualitative? - the past quarters sales
- marketings projections of market size growth
- opinions of fellow salespeople
- estimates of finding new accounts
- customers willingness to do repeat orders
26Forecasting
- Example What are the causal underlying effects
that influence whether or not a San Diego
restaurant in the Gaslamp Quarter will fill to
capacity this Friday night? - Causal effects
- Is there a Padres game?
- Are there other special downtown events planned?
- Are there events elsewhere in the county that may
draw people away from downtown?
27Forecasting
- You forecast all the time, though you may not
often think of it as such. Examples - How long will it take me to complete the
homework? - How good a job will my teammates do on their
portions of our group project? - How long will it take me to drive to work?
- How long will it take me to drive to Mammoth?
- Will this class end early or on time?
28Forecasting
- You need to find the underlying variables that
cause or effect the underlying pattern, monitor
those, and then construct your forecast as best
you can - Example What are the causal underlying effects
that influence whether or not it will rain here
Saturday? - Casual effects air movement patterns, air
pressure changes, weather patterns in surrounding
regions
29Forecasting
- Situation analysis You are planning for next
semesters classes, and - ABC 102 is on the required list for graduation.
You want to know, - will it be a good class? What do you do for your
forecast??? - Qualitative methods, based on subjective methods
- you ask the COBA advisors
- You ask your friends
- Quantitative methods
- You look at past enrollment statistics
- You look at ratemyprofessor.com (score out of 5
points) - 1 point out of 5 A bitter professor that needs
a major attitude adjustment. Her dark reign of
terror continues. I wouldn't wish this class
upon my worst enemy. If I was in HELL, I'm pretty
sure this would be part of the torture
curriculum. For a more exciting two hours a week,
watch a colony of ants slowly move pieces of food
from one place to another.
30Strategic Role of Forecasting
- Focus on supply chain management
- Short term role of product demand
- Long term role of new products, processes, and
technologies - Focus on Total Quality Management
- Satisfy customer demand
- Uninterrupted product flow with no defective items
31Components of Forecasting Demand
- Time Frames
- Short-range
- medium-range
- long-range
- Demand Behavior
- Trends, cycles, seasonal patterns, random
32Time Frame
- Short-range to medium-range
- Daily, weekly, monthly, quarterly forecasts of
sales data - Up to 2 years into the future
- Long-range
- Strategic planning of goals, products, markets
- Planning beyond 2 years
33Demand Behavior
- Trend
- gradual, long-term up or down movement
- Cycle
- up down movement repeating over long time frame
- Seasonal pattern
- periodic oscillation in demand which repeats
- Random movements follow no pattern
34Demand Behavior HTM 302 Textbooks
- Trend
- More rapid revisions of textbooks to keep up with
pace of change of industry - Long term industry trend toward using
unconventional materials (online materials,
customized textbooks, etc.) - Seasonal pattern
- Demand high at start of fall and spring
semesters, very low otherwise
35Demand Behavior Snowboard sales
- Trend
- Snowboard sales have gradually displaced/replaced
ski sales as snowboarding grew in popularity - Seasonal pattern
- Sales higher in fall/winter, lower in
spring/summer
36Demand Behavior Restaurant sales
- Trend
- People are eating out more as population has
become more mobile, demand convenience time
savings, multiple wage earners/family,
multiplicity of fast food restaurants - Cycle
- Eating-out follows general economic trends
- Food selections follow diet trends
37Forms of Forecast Movement Trend
Idealized
Demand
Time
38Forms of Forecast Movement Cyclic
Ideal
Demand
Time
39Forms of Forecast Movement Seasonal
Idealized
Demand
Time
40Trend with Seasonal Pattern
Demand
Time
41Demand Behavior HTM 302 Textbooks
What demand Behavior factors are apparent from
the data at right?
42Demand Behavior Class attendance
- What is the most important causal factor that
affects class attendance next week in HTM 302? - What other causal factors do you think might be
in play?
Class quiz
Holiday nearby, difficulty of material,other
class work and tests, etc.
43Forecasting Methods
- Qualitative methods
- Management judgment, expertise, opinion
- Use management, marketing, purchasing,
engineering - Quantitative methods
- Time series analysis, regression, or causal
modeling - Delphi method
- Solicit forecasts from experts
44Forecasting Process
45Time Series Methods
- Assume patterns will repeat
- Naive forecasts
- Forecast data from last period
- Statistical methods using historical data
- Moving average
- Exponential smoothing
- Linear trend line
46Moving Average
- Average several periods of data
- Dampen, smooth out changes
- Use when demand is stable with no trend or
seasonal pattern
47Moving Average
- Average several periods of data
- Dampen, smooth out changes
- Use when demand is stable with no trend or
seasonal pattern
48Simple Moving Average
Its October 31st, how much Product should we
order for Sale in November?
49Smoothing Effects
50Simple Moving Average
Previous 3 periods
110 orders for Nov
51Simple Moving Average
52Simple Moving Average
Previous 5 periods
91 orders for Nov
53Simple Moving Average
54Smoothing Effects
55Smoothing Effects
56Smoothing Effects
57HTM 302 Quiz Scores
You have a student in the class that has
achieved the following quiz scores is he/she in
trouble or not? What conclusions can you draw?
What would be a good forecast for the next quiz
grade?
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59Forecasting at home
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61Weighted Moving Average
- Adjusts moving average method to more closely
reflect data fluctuations, often those most
recent in time
62Weighted Moving Average
- Adjusts moving average method to more closely
reflect data fluctuations
63Weighted Moving Average Example
64Weighted Moving Average Example
65Exponential Smoothing
- Averaging method
- Weights most recent data more strongly
- Reacts more to recent changes
- Widely used, accurate method
66Linear Trend Line
y a bx where a intercept (at period
0) b slope of the line x the time
period y forecast for demand for period x
67Least Squares Example Raw Data
Example 8.5
68Linear Trend Line
Example 8.5
69Linear Trend Line
y 35.2 1.72x
Example 8.5
70Whats going on?
The next slide displays historical data on number
of service calls to Geeks on Call.
What would be an appropriate method of
forecasting based on your observation of the data?
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73Forecast Accuracy
- Error Actual - Forecast
- Find a forecast method which minimizes the error
- Mean Absolute Deviation (MAD)
74Mean Absolute Deviation (MAD)
where t the period number Dt demand
in period t Ft the forecast for period t
n the total number of periods ???? the
absolute value
75Forecast Control
- Reasons for out-of-control forecasts
- Change in trend
- Promotions
- Competition
- Politics
- Monitor forecast accuracy and modify accordingly
76Correlation and Coefficient of Determination
- Correlation, r
- Measure of strength of relationship
- Varies between -1.00 and 1.00
- Coefficient of determination, r2
- Percentage of variation in dependent variable
resulting from changes in the independent variable
77Computing Correlation
78Correlation Coefficient Examples
79Multiple Regression
Study the relationship of demand (y) to two or
more independent variables (x1, x2, x3.) y
?0 ?1x1 ?2x2 ?kxk where ?0 the
intercept ?1, , ?k parameters for
the independent variables x1, ,
xk independent variables
80Application Gaming Quality of Service
Sensitivity of online gamers to network quality
Empirical data
Communications of the ACM, vol. 49 no. 11
November 2006
81Modeling Gaming Quality of Service
prob(player leaving)
Communications of the ACM, vol. 49 no. 11
November 2006
82In class Example 1
- You are the manager of a local Pizza Hut. Here
are the Sales figures (number of pizzas sold) for
the last 3 weeks
- Questions
- What are the general trends apparent from the
data? - What would you forecast for demand for Saturday
night of the 4th week?
83In class Example 2
- You are the manager of the campus Starbucks.
Here are the Sales figures (number of customers)
for the last 3 weeks
- Questions
- What are the general trends apparent from the
data? - What is a possible explanation for week 2?
84In class Example 3
- You are the buyer for Dals Surf Shop in
Oceanside here are the per quarter sales for the
past three years
- Question
- What are the general trends apparent from the
data?
85In class Example 4
- You are the professor of HTM 302 here are the
- class average scores on the quizzes to date
What would be a good forecast for the next quiz
grade?
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88equally-weighted average over course
weighted average over recent three classes
89Informal feedback
- Write a 2 minute journal to be handed in
immediately - The journal should briefly summarize
- Major points learned
- Areas not understood or requiring clarification