This course provides students with common statistical skills to analyze and interpret data sets obtained in environmental science and management. Main topics are
probability, hypothesis testing, multivariate analysis, time series analysis, and risk assessment. Students are required to work on exercises to acquire substantial
understanding both in theory and application.
By the end of this course, students will be able to:
1. Explain major statistical analysis and modeling techniques for scientific understanding of environmental problems.
2. Select appropriate statistical analysis methods depending on particular environmental problem and type of data.
3. Apply major statistical analysis and modeling techniques to particular dataset, and interpret the results from such applications.
Hypothesis Test, Regression Analysis, Sampling and Experimental Design, Multivariate exploratory technique, Empirical model, Machine learning, Monte-Carlo Method
Specialist skills | Intercultural skills | Communication skills | ✔ Critical thinking skills | ✔ Practical and/or problem-solving skills |
Students are required to work on exercises in every class to promote theoretical and practical understanding, using R (programming language) for statistical calculation.
Course schedule | Required learning | |
---|---|---|
Class 1 | Guidance Importance of statistics in environmental science and engineering, and role of hypothesis | Understand the importance of statistics in environmental science and engineering, and role of hypothesis |
Class 2 | Environmental variability and probability distribution | Understand probability distribution and hypothesis text for understanding environmental processes and work on its exercise |
Class 3 | t-test and data transformation | Understand t-test and data transformation and work on its exercise |
Class 4 | Analysis of variance (ANOVA) | Understand analysis of variance (ANOVA) and work on its exercise |
Class 5 | Correlation analysis | Understand correlation analysis and work on its exercise |
Class 6 | Multiple regression analysis | Understand multiple regression analysis and work on exercise |
Class 7 | Mid-term exercise | Review major statistical methods for hypothesis test and work on its exercise |
Class 8 | Regression models | Understand major regression models and those application methods, and work on exercise |
Class 9 | Time series analysis | Understand time series analysis and work on its exercise |
Class 10 | Bayesian inference and machine leaning | Understand major concepts of Bayesian inference and machine leaning and work on its exercise |
Class 11 | Multivariate exploratory technique (1) Ordination, principle component analysis | Understand ordination and principle component analysis and work on its exercise |
Class 12 | Multivariate exploratory technique (2) Cluster analysis | Understand cluster analysis and work on its exercise |
Class 13 | Diversity measure | Understand diversity measure and work on its exercise |
Class 14 | Risk assessment and Monte-Carlo method | Understand Monte-Carlo method and risk assessment and work on its exercise |
To enhance effective learning, students are encouraged to spend approximately 100 minutes preparing for class and another 60 minutes reviewing class content afterwards (including assignments) for each class.
They should do so by referring to textbooks and other course material.
Not specified
Modern Statistics for the Life Science, 2002, A. Grafen and R. Hails, Oxford University Press
Biostatistical Analysis, 1999, J. H. Zar, Prentice Hall
Multivariate Statistics for the Environmental Sciences, 2003, P. J. A. Shaw, Hodder Arnold
Environmental and Ecological Statistics with R, 2010, S. S. Quin, CRC Press
Exercise (including reports) 70%
Discussion 30%
Students are required to attend more than 9 times out of 14 lectures.
No prerequisites