SASInstitute SAS Certified Associate: Applied Statistics for Machine Learning A00-480 Certified Exam Dumps

A00-480 Exam Dumps

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Certification Provider: SASInstitute
Exam Code / Number: A00-480
Exam Name: SAS Certified Associate: Applied Statistics for Machine Learning
Exam Questions: 0
Corresponding Certification: SASInstitute Certification

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SASInstitute A00-480 Exam Syllabus Topics:

SectionWeightObjectives
Topic 1: Explanatory Modeling Using Linear Regression18–24%- Regression Techniques
  • 1. Model fit and selection methods
  • 2. Simple and multiple regression models
Topic 2: Statistical Foundations of Machine Learning18–24%- Machine Learning Basics
  • 1. Supervised vs unsupervised learning
  • 2. Data preprocessing and feature scaling
Topic 3: Fundamental Statistical Concepts17–21%- Descriptive and Inferential Statistics
  • 1. Sampling and distributions
  • 2. Confidence intervals and hypothesis testing
Topic 4: Predictive Modeling Using Logistic Regression25–31%- Logistic Regression
  • 1. Assessment of model performance
  • 2. Binary outcome modeling
Topic 5: Statistics and Machine Learning Fundamentals9–12%- Relevance of Statistics in Machine Learning
  • 1. Types of data and analysis
  • 2. Differences between machine learning and classical statistics


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