IBM SPSS Modeler: Techniques for Missing Data



IBM SPSS Modeler: Techniques for Missing Data

Rating 4.0 out of 5 (26 ratings in Udemy)


What you'll learn
  • Understand how missing data is identified and defined in IBM SPSS Modeler
  • Impute missing values
  • Remove missing data
  • Run parallel streams with and without missing data
  • Use the Type, Data Audit, Derive, and Filler nodes to identify and handle missing data

Description

IBM SPSS Modeler is a data mining workbench that allows you to build predictive models quickly and intuitively without programming. Analysts typically use …

Duration 3 Hours 58 Minutes
Paid

Self paced

Intermediate Level

English (US)

271

Rating 4.0 out of 5 (26 ratings in Udemy)

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