NSCPHD1100 Applied Statistical Modelling in Forest and Natural Resource Assessment and Planning
PhD
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Prior to the course, students will read the course portifolio, mainly consisting of scientific articles related to the course subject. Further, the students will choose a relevant dataset to analyze during the seminar in week 5. If a student lack a relevant dataset, the course responsible will provide one.
After the course, the students will prepare a written report on the analyses conducted and their results.
A satisfactury evaluation of the report is necessary to pass the course.
Knowledge
- describe principles for selecting appropriate statistical models and calibration procedures for different types of data
- understand the relationship between statistical analysis and development of models
- show overview of model types used to describe relationships and to model natural resource dynamics
Skills
- apply statistical principles and methods in typical natural resource modelling situations
- select suitable model formulations for modelling particular relationships
- apply suitable methods for assessing the quality of predictions
Competences
- apply general modelling and forecasting principles, involving typical variables from forest and nature
- discuss the relevance, reliability and interpretation of empirical statistics
To be decided
- Category
- Hours
- Class Instruction
- 40
- Preparation
- 40
- Project work
- 40
- Total
- 120
Tilmelding direkte til kursusleder (der er pt. 12 tilmeldte)
- Credit
- 4 ECTS
- Type of assessment
- Written assignment, 1 uge under invigilationAfter the course, the students will prepare a written report on the analyses conducted and their results.
A satisfactury evaluation of the report is necessary to pass the course. - Exam registration requirements
To have participated in the seminar
- Aid
- All aids allowed
- Marking scale
- passed/not passed
Course information
- Language
- English
- Course code
- NSCPHD1100
- Credit
- 4 ECTS
- Level
- Ph.D.Part Time Master
- Duration
- Week 3 and 4: Pre-course assignments including reading of course portifolio and selection of personal dataset
Week 5:
Feb 1st: Course introduction, model selection
Feb 2nd: Model estimation (linear and non-linear models)
Feb 3rd: Post-hoc analyses, fit statistics, cross validation
Feb 4th: Model inference, resource assessment and simulation
Feb 5th: Course round up, report supervision
Week 6: Preparing reports for course evaluation - Placement
- Block 3
- Schedule
- Week 3 and 4: Pre-course assignments including reading of course portifolio and selection of personal dataset
Week 5:
Feb 1st: Course introduction, model selection
Feb 2nd: Model estimation (linear and non-linear models)
Feb 3rd: Post-hoc analyses, fit statistics, cross validation
Feb 4th: Model inference, resource assessment and simulation
Feb 5th: Course round up, report supervision
Week 6: Preparing reports for course evaluation - Course capacity
- 20
- Study board
- Natural Sciences PhD Committee
Contracting department
- Department of Geoscience and Natural Resource Management
Course responsibles
- Thomas Nord-Larsen (3-77716f436c6a71316e7831676e)
Lecturers
Thomas Nord-Larsen, Henrik Meilby, Göran Ståhl, Ruben Valbuena