GEOG498N

Topical Investigations; Spatial Data Mining

Concepts and techniques in spatial and spatio-temporal data mining from a computational perspective will be introduced. Topics include types of spatial and spatiotemporal data; foundations of spatial statistics; spatial pattern families (spatial clustering & hotspot detection, colocation, cascading, outlier detection, spatial prediction and classification); advanced topics including deep learning, adversarial learning, reinforcement learning and spatial big data platforms. Application domains of the techniques include smart cities, transportation, public health, public safety, agriculture, etc.

Sister Courses: GEOG498B, GEOG498C, GEOG498D, GEOG498E, GEOG498G, GEOG498H, GEOG498I, GEOG498J, GEOG498K, GEOG498L, GEOG498P, GEOG498R, GEOG498V, GEOG498W

Fall 2025

0 reviews
Average rating: N/A

Past Semesters

0 reviews
Average rating: N/A

0 reviews
Average rating: N/A

0 reviews
Average rating: N/A

0 reviews
Average rating: N/A

During the Spring 2020 and Spring 2021 semesters, students could choose to take some of their courses pass-fail mid-semester which skews grade data aggregated across multiple semesters.

Average GPA of 3.22 between 65 students*

GEOG498N Grade Distribution+-0510152025303540455055% of studentsABCDFWother
A-: 15.38%
A: 23.08%
A+: 15.38%
B-: 18.46%
B: 3.08%
B+: 7.69%
C-: 1.54%
C: 1.54%
D-: 1.54%
F: 1.54%
W: 4.62%
other: 6.15%
* "W"s are considered to be 0.0 quality points. "Other" grades are not factored into GPA calculation. Grade data not guaranteed to be correct.