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Classification tables in logistic regression are based on: A. Predicted probabilities B. Hosmer-Lemeshow statistics C. Outlier...

Classification tables in logistic regression are based on:

  • A. Predicted probabilities
  • B. Hosmer-Lemeshow statistics
  • C. Outlier diagnostics
  • D. Odds ratios

Homework Answers

Answer #1

Ans: A. Predicted probabilities                                                                                                           

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