Environment General Courses (ENVIRON)
graduate level, taught in Durham
210. Applied Data Analysis for Environmental Sciences. Graphical and exploratory
data analysis; modeling, estimation, and hypothesis testing; analysis of variance; random
effect models; nested models; regression and scatterplot smoothing; resampling and randomization
methods. Concepts and tools involved in data analysis. Special emphasis on examples drawn
from the biological and environmental sciences. Students to be involved in applied work through
statistical computing using software, often S-plus, which will highlight the usefulness of
exploratory methods of data analysis. Other software, such as SAS, may be introduced. Instructor:
Staff. 3 units.
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