Title: Quantitative forecasting methods in library management
1Quantitative forecasting methods in library
management
- Prof. Dr. Algirdas Budrevicius
- Vilnius University, Faculty of Communication
Course website http//www.kf.vu.lt/albud/progn/E
ngl
2- "If you can look into the seeds of time, and say
which grain will grow and which will not, speak
then unto me. " - --William Shakespeare
3- "It is far better to foresee even without
certainty than not to foresee at all. " - --Henri Poincare in The Foundations of Science,
page 129.
4Course plan
- Lecture 1. Forecasting history and current
situation. Forecasting in management. Qualitative
and quantitative forecasting. Time series
forecasting. Visual data pattern analysis.
Forecasting in library management. Naive
forecasting methods.
5Course plan (continued)
- Lecture 2. Part 1 Moving average forecasting
method. Errors of forecast. Part 2 Practical
work with Excel - Lecture 3. Part 1 Forecasting using linear
regression. Trend analysis. Part 2 Practical
work with Excel - Lecture 4-5. Forecasting project analysis of
forecasting situations in libraries examples.
Practical work with Excel - Lecture 6. Discussions
6Course materials
- Course description Website http//www.kf.vu.lt/a
lbud/progn/Engl - Lectures PowerPoint presentations
- Data, demonstrations, task solutions Excel
workbooks
7Development of the forecasting technique
- Non scientiffic forecasting e.g. Astrology, Book
of Changes. - 19-20 century. Demographic forecasts
- Development of the quantitative methods
middle-to-second part of the 20th century. - New developments Neural network based methods
8Current situation in forecasting
- Forecasting is widely used in management now
- There exist a well defined set of quantitative
forecasting methods that changes very little
during last fiew decades - There exists computer software that may be quite
simply applied in forecasting - Excel program allows to solve simple forecasting
tasks
9Forecasting in management
Forecasting is used in various domains of
management, such as
- Personnel management
- Resource management
- Finance management
- Organizational management
10Taxonomy of forecasting methods
- Methods quantitative and qualitative
- Qualitative judgmental (based on expert
opinions) and technological (used for long term
forecasts) - Quantitative time series methods and reasoning
- Note only time series methods will be considered
in this course.
11Definition of a forecasting situation
- Data (time series, or historical data)
- Forecasting method (e.g. Moving average, Trend
analysis) - Forecast
- Error of forecast
12Quantitative time series based forecasting
13Naive forecasts NF1 and NF2
- Naive forecasts (a folk forecasting technique)
- NF1. (The value tomorow will be the same as
today). Example Number of library visitors
today was 120. Forecast NF1 for tomorow 120. - NF2. (The value tomorow will be less (greater)
by 10 ). Example Average temperature this
month is 20 degrees. Forecast NF2 for the next
month Temperature will be 25 degrees (increase
of 25).
14Time-series methods of forecasting
- Time series analysis relies on historical data
and attempts to project historical patterns into
the future - Note only time series methods will further be
considered
15Time-series example
- Number of visitors in a library (in th.)
16Recomended form to present data and forecasts an
example
17Example of real time series data concerning
libraries
- Number of libraries (network)
- Document stocks
- Loan of documents
- Number of users
- Number of visitors, etc. (also see examples in
Excell worksheets)
Conclusion good possibilities to apply
forecasting methods, based on time series analysis
18Example of data
19Example of forecasting
20Patterns of the time-series data
A forecasting method should comply with the data
pattern. There are 4 basic data patterns
- Horizontal (random, irregular variation)
- Trend (linear)
- Periodical (cyclical, seasonal)
- Complex (a combination of part or all listed
above)
21Horizontal pattern
22Trend
23Periodical pattern
24Complex pattern
25Measuring forecast accuracy
- What is the accuracy of a particular forecast?
- How to measure the suitability of a particular
forecasting method for a given data set?
26Definition of the forecast error
- Error (e) of a forecast is measured as a
difference between the actual (A) and forecasted
values (F), that is, - eA-F,
- or, in a relative form e100 (A-F)/A.
- The error can be determined only when actual
(future) data are available.
27Standard statistical measures to estimate errors
(1)
- To preliminary evaluate a forecast and
suitability of a method, various statistical
measures may be used. In evaluating forecasts
obtained by means of the moving average method,
the following measures may be used
- Mean (average) error (ME)
- Mean absolute error (MAE)
- Mean squared error (MSE)
28Standard statistical measures to estimate errors
(2 - relative)
- Mean percentage error (MPE)
- Mean absolute percentage error (MAPE)
29Statistical measures of goodness of fit
In trend analysis the following measures will be
used
- The Correlation Coefficient
- The Determination Coefficient
30The Correlation Coefficient
- The correlation coefficient, R, measure the
strength and direction of linear relationships
between two variables. It has a value between 1
and 1 - A correlation near zero indicates little linear
relationship, and a correlation near one
indicates a strong linear relationship between
the two variables
31The Coefficient of Determination
- The coefficient of determination, R2, measures
the percentage of variaion in the dependent
variable that is explained by the regression or
trend line. It has a value between zero and one,
with a high value indicating a good fit.
32End