IBM SPSS Modeler Professional v2 (C2020-010日本語版) C2020-010日本語 Certified Exam Dumps

C2020-010日本語 Exam Dumps

IBM SPSS Modeler Professional v2 (C2020-010日本語版) C2020-010日本語 real exam questions and online practice test engine by FreeCram. Try C2020-010日本語 exam questions for free. You can also download a free demo of the C2020-010日本語 exam PDF version.

IBM's C2020-010日本語 actual exam materials brought to you by FreeCram group of IBM certification experts.
View all C2020-010日本語 actual exam questions & answers and explanations for free.

If you like our product, you can request full access to all the latest IBM SPSS Modeler Professional v2 (C2020-010日本語版) C2020-010日本語 exam premium questions.

Certification Provider: IBM
Exam Code / Number: C2020-010J
Exam Name: IBM SPSS Modeler Professional v2 (C2020-010日本語版)
Exam Questions: 55
Last Updated: Jun 18, 2026
Corresponding Certification: IBM Certified Specialist

Go To C2020-010日本語 Questions


IBM C2020-010日本語 Exam Syllabus Topics:

SectionObjectives
Data Understanding- Data Exploration
  • 1. Data profiling and summary statistics
    • 2. Data types and structures in SPSS Modeler
      - Data Quality
      • 1. Outlier detection
        • 2. Missing value analysis
          Data Preparation- Data Transformation
          • 1. Normalization and standardization
            • 2. Derived fields creation
              - Data Integration
              • 1. Merge and append operations
                • 2. Data aggregation
                  Model Building- Clustering Techniques
                  • 1. Two-step clustering
                    • 2. K-means clustering
                      - Predictive Modeling
                      • 1. Regression models
                        • 2. Classification models
                          Deployment and Streams- Model Deployment
                          • 1. Scoring models
                            • 2. Exporting models
                              - SPSS Modeler Streams
                              • 1. Stream construction and execution
                                • 2. Node configuration and management
                                  Model Evaluation- Model Comparison
                                  • 1. Cross-validation
                                    • 2. Model selection techniques
                                      - Model Assessment
                                      • 1. ROC and lift charts
                                        • 2. Confusion matrix interpretation


                                          0
                                          0
                                          0
                                          10