SAS Advanced Predictive Modeling
Exam Content Guide
Below we provide a list of the objectives that will be tested on the exam.
For more specific details about each objective download the complete exam content guide.
Neural Networks - 20%
- Describe key concepts underlying neural networks
- Use two architectures offered by the Neural Network node to model either linear or non-linear input-output relationships
- Use optimization methods offered by the SAS Enterprise Miner Neural Network node to efficiently search the parameter space in a neural network
- Construct custom network architectures by using the NEURAL procedure (PROC Neural)
- Based upon statistical considerations, use either time delayed neural networks, surrogate models to augment neural networks
- Use the HP Neural Node to perform high-speed training of a neural network
Logistic Regression - 30%
- Score new data sets using the LOGISTIC and PLM procedures
- Identify the potential challenges when preparing input data for a model
- Use the DATA step to manipulate data with loops, arrays, conditional statements and functions
- Improve the predictive power of categorical inputs
- Screen variables for irrelevance and non-linear association using the CORR procedure
- Screen variables for non-linearity using empirical logit plots
- Apply the principles of honest assessment to model performance measurement
- Assess classifier performance using the confusion matrix
- Model selection and validation using training and validation data
- Create and interpret graphs (ROC, lift, and gains charts) for model comparison and selection
- Establish effective decision cut-off values for scoring
Predictive Analytics on Big Data - 40%
- Build and interpret a cluster analysis in SAS Visual Statistics
- Explain SAS high-performance computing
- Perform principal component analysis
- Analyze categorical targets using logistic regression in SAS Visual Statistics
- Analyze categorical targets using decision trees in SAS Visual Statistics
- Analyze categorical targets using decision trees in PROC IMSTAT
- Analyze categorical targets using logistic regression in PROC IMSTAT
- Build random forest models with PROC IMSTAT
- Analyze interval targets with SAS Visual Statistics
- Analyze interval targets with PROC IMSTAT
- Analyze zero inflated models with HPGLM in Enterprise Miner
Open Source Models in SAS - 10%
- Incorporate an existing R program into SAS Enterprise Miner
- Incorporate an existing Python program into SAS Enterprise Miner
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