Grades:
Median GPA:
Mean GPA:
Click a checkbox to add something to compare.
Search Results
Name | Grades | Rating |
---|---|---|
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ |
Grades:
Median GPA:
Mean GPA:
Click a checkbox to add something to compare.
Search Results
Name | Grades | Rating |
---|---|---|
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ |
Search Results
Name | Grades | Rating |
---|---|---|
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ |
Search Results
Name | Grades | Rating |
---|---|---|
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ | ||
A+ |
Advanced GIS Data Analysis
GISC 7310
School of Economic, Political and Policy Sciences
The specification, interpretation and properties of the multiple linear regression model including spatial and aspatial regression diagnostics are examined. A detailed review of the key concepts of matrix algebra, optimization techniques and simulation experiments is given. GIS and GPS data handling procedures are discussed from a regression and linear transformation perspective. Extensions to principal component analysis, ridge regression, weighted regression, logistic and Poisson regression are provided. Practical data analysis for large Geo-referenced data sets are exercised. 3 credit hours.
Prerequisite: GISC 6301 or equivalent.
Offering Frequency: Based on student interest and instructor availability
Grades: 10
Median GPA: B+
Mean GPA: 3.000
Click a checkbox to add something to compare.
Advanced GIS Data Analysis
GISC 7310
School of Economic, Political and Policy Sciences
The specification, interpretation and properties of the multiple linear regression model including spatial and aspatial regression diagnostics are examined. A detailed review of the key concepts of matrix algebra, optimization techniques and simulation experiments is given. GIS and GPS data handling procedures are discussed from a regression and linear transformation perspective. Extensions to principal component analysis, ridge regression, weighted regression, logistic and Poisson regression are provided. Practical data analysis for large Geo-referenced data sets are exercised. 3 credit hours.
Prerequisite: GISC 6301 or equivalent.
Offering Frequency: Based on student interest and instructor availability
Grades: 10
Median GPA: B+
Mean GPA: 3.000
Click a checkbox to add something to compare.