Credit Risk Modeling Using Sas
Last updated 5/2023
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.65 GB | Duration: 3h 50m
Last updated 5/2023
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.65 GB | Duration: 3h 50m
Learn Credit Risk Scorecard Development step by step from scratch. Learn model development, validation & calibration.
What you'll learn
Learn model development and validation
Understand SAS programming steps
Understand SAS programming output interpretation
Learn the process flow in model development, validation and calibration step by step from scratch
Understand the science and logic behind model development
Learn data preparation in depth
Requirements
Basic Knowledge of SAS
Zeal and enthusiasm for learning a new skill
Computer with internet connection
SAS Studio
Description
Credit Risk Modeling is a technique used by lenders to determine the level of credit risk associated with extending credit to a borrower. In other words, it’s a tool to understand the credit risk of a borrower. This is especially important because this credit risk profile keeps changing with time and circumstances. Credit risk modeling is the process of using statistical techniques and machine learning to assess this risk. The models use past data and various other factors to predict the probability of default and inform credit decisions.This course teaches you how banks use statistical modeling in SAS to prepare credit risk scorecard which will assist them to predict the likelihood of default of a customer. We will deep dive into the entire model building process which includes data preparation, scorecard development and checking for a robust model, model validation and checking for the accuracy of the model step by step from scratch. This course covers the following in detail with output interpretation, best practices and SAS Codes explanations :1) Understanding the dataset and the key variables used for scorecard building2) Development sample exclusions3) Observation and Performance window4) Model Design Parameters5) Vintage and Roll Rate Analysis6) Data Preparation which includes missing values and outlier identification and treatment7) Bifurcating Training and Test datasets 8) Understanding the dataset in terms of key variables and data structure9) Fine and Coarse classing10) Information value and WOE11) Multicollinearity 12) Logistic Regression Model development with statistical interpretation13) Concordance, Discordance, Somer's D and C Statistics14) Rank Ordering, KS Statistics and Gini Coefficient15) Checking for Clustering16) Goodness of fit test17) Model Validation and18) Brier Score for model accuracy
Overview
Section 1: Introduction
Lecture 1 Introduction
Section 2: Conceptual Framework
Lecture 2 Model Design Parameters
Lecture 3 Exclusions
Lecture 4 Exploring Dataset Variables
Lecture 5 Factors of Model Design Parameters
Lecture 6 Business Understanding and Model Selection
Lecture 7 Sample Data Fields
Lecture 8 Vintage Analysis
Lecture 9 Roll Rate Analysis
Section 3: Model Development
Lecture 10 Algorithm for Scorecard Development
Lecture 11 Detecting Missing and Outlier Values
Lecture 12 Removing Missing Values
Lecture 13 Importance of Information Value
Lecture 14 Understanding Fine and Coarse Classing
Lecture 15 Example of Fine and Coarse Classing
Lecture 16 Information Value Range
Lecture 17 Calculating WOE and IV Values
Lecture 18 Creating WOE Variables
Lecture 19 Checking for Multicollinearity
Lecture 20 Concordance and Discordance
Lecture 21 Somers' D and C Statistics
Lecture 22 Rank Ordering, KS Statistics and Gini Coefficient
Lecture 23 Goodness of Fit Test
Lecture 24 Clustering Check
Section 4: Validation and Accuracy Check
Lecture 25 Model Validation
Lecture 26 Brier Score
Students,Risk Analytics Professionals,Statisticians,Experienced Risk Modelers,For Someone who wish to start/shift their career towards risk modeling