May 25, 2024  
2022-2023 Undergraduate Catalog 
    
2022-2023 Undergraduate Catalog [ARCHIVED CATALOG]

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CS 467 - Computational Statistics


Description:
Applications of statistics for the computational sciences, including data mining, big data analytics, financial analysis, and signal processing. CS 467 and CS 567 are layered courses; students may not receive credit for both.

Prerequisites:
Prerequisite: CS 301.

Credits: (4)

Learner Outcomes:
Upon successful completion of this course, the student will be able to:

  • Analyze data using statistically based data mining and big data analysis techniques.
  • Assess the ability of statistically based inference to extract and aggregate information from large datasets.
  • Employ statistical methods for extracting pertinent data from large and noisy datasets.
  • Evaluate efficacy of existing statistical tools for extracting useful information from complex data sets in a scalable way.
  • Graduate students will formulate and defend plan for extracting pertinent data from otherwise large and noisy datasets using available tools.
  • Graduate students will rate plan for extracting pertinent data from otherwise large and noisy datasets using available tools.

Learner Outcomes Approval Date:
1/9/20

Anticipated Course Offering Terms and Locations:
Fall Locations: Ellensburg Winter Locations: Ellensburg



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