Department of Veterinary and Animal Sciences
Advanced Quantitative Methods in Herd ManagementCourse introduction
Anders Ringgaard Kristensen
Outline
Preconditions
Outcome: What are you supposed to learn?
The framework and definition of herd management
The management cycle
Classical production theory
Limitation of classical theories
Outline of the course
Teachers
Department of Veterinary and Animal Sciences
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Preconditions
Courses
• Mathematics: ”Matematik ogmodeller”/”Matematik og planlægning”
• Statistics ”Statistisk dataanalyse 2”
• Mandatory first year (economics, statistics etc)
Department of Veterinary and Animal Sciences
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Brush-up courses …
The course will start up with brush-up courses of• Probability calculus and statistics• Linear algebra
Department of Veterinary and Animal Sciences
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Learning outcome
After attending the course students should be able to participate in the development and evaluation of new tools for management and control taking biological variation and observation uncertainty into account.
Department of Veterinary and Animal Sciences
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Outcome - knowledge
After completing the course the student should be able to:
• Describe the methods taught in the course
• Explain the limitations and strengths of the methods in relation to herd management problems.
• Give an overview of typical application areas of the methods.
Department of Veterinary and Animal Sciences
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Outcome - skills
After completing the course the student should be able to:
• Construct models to be used for monitoring and decision support in animal production at herd level.
• Apply the software tools used in the course.
Department of Veterinary and Animal Sciences
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Outcome: Competencies:
After completing the course the student should be able to:
• Evaluate methods, models and software tools for herd management.
• Transfer methods to other herd management problems than those discussed in the course.
• Interpret results produced by models and software tools.
Department of Veterinary and Animal Sciences
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The management cycle: Classical theories
UtilityTheory,Ch. 3.
Neo-classicalProductionTheory,Ch. 4.
(ScarceResources)
(Animal science,Production function)
BasicProductionMonitoring,Ch. 5.
Department of Veterinary and Animal Sciences
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Herd Management Science
Basic level:
• As we define the basic level, it consists of
• Utility theory
• Neo-classical production theory
• Basic production monitoring
• (Animal nutrition, animal breeding, ethology, farm buildings)
• What any animal scientist should know about management
• The starting level of this course
• Volume I of the textbook!
Department of Veterinary and Animal Sciences
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Neo-classical production theory
Answers 3 basic questions:
• What to produce.
• How to produce.
• How much to produce.
Marginal considerations
Basic principle: Continue as long as the marginal revenue, MR, exceeds marginal costs, MC. At optimum we have MR = MC.
Department of Veterinary and Animal Sciences
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How much to produce
One factor x and one product y
Prices px and py
A production function y = f(x).
Profit u(x) = ypy – xpx = f(x)py – xpx
Problem:
• Find the factor level that maximizes the profit
Department of Veterinary and Animal Sciences
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How much to produce
Maximum profit where u’(x) = 0.
u(x) = f(x)py – xpx
u’(x) = f’(x)py – px
u’(x) = 0 ⇔ f’(x)py = px
Maximum profit where:
• Marginal revenue = Marginal cost!
Department of Veterinary and Animal Sciences
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How much to produce
-0,2
0
0,2
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1
Total revenue, f(x)py
Average revenue, f(x)py/x
Marginal revenue, f’(x)py
How much to produce, logical bounds
-0,2
0
0,2
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1
Total revenue, f(x)py
Average revenue, f(x)py/x
Marginal revenue, f’(x)py
How much to produce, optimum
-0,2
0
0,2
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0,6
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1
Total revenue, f(x)py
Average revenue, f(x)py/x
Marginal revenue, f’(x)py
Price of factor px
Limitations of neo-classical theory
Static approach:• Immediate adjustment
• Only one time stage
Deterministic approach• Ignores risk
• ”Biological variation”
• Price uncertainty
Knowledge representation (knowledge considered as certain):
• Unobservable traits
• ”Production functions”
• Detached from production: No information flow from observations.
• No updating of knowledge.
Department of Veterinary and Animal Sciences
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Background for course
Structural development in the sector• Increasing herd sizes
• Decreasing labour input
Technological development• Sensors, automatic registrations
• Computer power
• Networks
Methodological development• Statistical methods
• Operations Research
Department of Veterinary and Animal Sciences
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Outline of course - I
Part I:
• Brush-up course on
• Probability calculus and statistics
• Linear algebra
• ”Advanced” topics from statistics
• Basic production monitoring
• Registrations and key figures
• Analysis of production results
Department of Veterinary and Animal Sciences
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Outline of course - II
Part II: The problems to be solved
• From registrations to information, value of information, information as a factor, sources of information
• Decisions and strategies, definition and knowledgefoundation
Department of Veterinary and Animal Sciences
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Outline of course - III
Part III: The methods to be used
• State of factors
• Monitoring and data filtering
• Bayesian networks
• Decision support
• Decision graphs
• Simulation (Monte Carlo)
• Linear programming (low priority)
• Markov decision processes (dynamic programming)
• Mandatory reports
Department of Veterinary and Animal Sciences
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Teachers
Anders Ringgaard Kristensen, professor, course responsibleDan Børge Jensen, assistant professorJeff Hindsborg, research assistant
Department of Veterinary and Animal Sciences
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Mandatory reports
4 minor reports must be handed in• Based on the exercises
At least 3 must be approved in order to attend the oral examThe 4 reports are distributed over the following methods:
• Bayesian networks• Monitoring and data filtering• Linear programming• Markov decision processes
Department of Veterinary and Animal Sciences
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The web
Absalon
Home page of the course
• http://www.prodstyr.ihh.kvl.dk/vp/
• Course description
• Plan
• Pages for each lesson with a description of the contents, literature, exercises, software to use etc.
Department of Veterinary and Animal Sciences
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Master’s thesis
Plenty of opportunities for Master’s theses in relation to the course (almost all methods discussed):
• Pig data
• Dairy cow data
Department of Veterinary and Animal Sciences
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