Data defines the model by dint of genetic programming, producing the best decile table.


GenIQ Model Related Articles
Features, Book, Analytics, Solutions, and References
Live chat by Boldchat
Live chat by Boldchat

If you would like to be notified when
new articles are added, please click
here.

Click any or all eight interesting sections with engaging topics, below: 
     1) Features,
          2) Extra-GenIQ Applications, 
               3) Book, 
                    4) Webcast
                         5) Analytics,  
                              6) Solutions, 
                                   7) Reference Articles, 
                                        8) Useful SAS Code.



1) Features

    1. GenIQ: A Visual Introduction
    2. Value-added Benefits of GenIQ
    3. GenIQ as a Unique Data Mining Tool
    4. GenIQ Lets the Data Specify the Model
    5. GenIQs Predictive Power 
    6. GenIQ as a Data-straightener
    7. GenIQs User-friendliness 
    8. GenIQs Model is Best for Allotted Time
    9. What is Genetic Programming?
    10. GenIQs 9-step Modeling Process
    11. FAQs about GenIQ
    12. How GenIQ Works
    13. How To Use GenIQ
    14. Scoring GenIQ Models with Excel
    15. Nonrandom Words of Praise for GenIQ
    16. Random Words of Praise for GenIQ
    17. Analytical Model Development and Deployment
    18. GenIQ: Nonlinear Curve Fitter
    19. GenIQ: OLS Curve Fitter
    20. A Method for Moderating Outliers, Instead of Discarding Them
    21. GenIQ-enhanced Regression Model
    22. GenIQ-enhanced/Data-reused Regression
    23. Real World Data are Dirty: Data Cleaning and the "Noise" Problem
    24. Statistical Modeling Problems: Nonissue for GenIQ
    25. Overfitting: Old Problem, New Solution
    26. Data Cleaning is Not Completed Until the “Noise” is Eliminated


2) Extra-GenIQ Applications

    1. A Database Marketing Regression Model that Maximizes Cum Lift
    2. Overfitting: Old Problem, New Solution
    3. Data Cleaning is Not Completed Until the “Noise” is Eliminated
    4. GenIQ-enhanced Regression Model
    5. GenIQ-enhanced/Data-reused Regression
    6. A Method for Moderating Outliers, Instead of Discarding Them
    7. How to Make the Best Credit Score Even Better
    8. GenIQ: Nonlinear Curve Fitter
    9. GenIQ: OLS Curve Fitter
    10. Real World Data are Dirty: Data Cleaning and the "Noise" Problem
    11. Optimizing Website Content via the Taguchi Method
 
3) Book
 
Statistical Modeling and Analysis for Database Marketing:
Effective Techniques for Mining Big Data 
(click title) -
Bruce Ratner, Ph.D.


4) Webcast


5) Analytics 

    1. Assessing the Predictiveness of a Classification Model: Traditional vs. Modern Methods 
    2. Two-by-Two Classification and Decile Tables - A Comparison
    3. Genetic vs. Statistic Regression Models - A Comparison
    4. Your Customers are Talking: Are You Listening?
    5. Is Not a Response-Model Tree a Response-Model Tree by Any Other Name?
    6. Interpretation of Coefficient-free Models
    7. Social Network Analysis, Social Media Data, and Text Mining to Boost Business Intelligence 
    8. Predictive Modeling Using Real-time Data
    9. Data Mining Quiz - II
    10. Data Mining Quiz
    11. How Large a Sample is Required to Build a Database Response Model?
    12. CHAID: Nine Inventive, Utile Applications Beyond Its Original Intent
    13. Response-Approval Model: An Effective Approach for Implementation
    14. Data Mining: Illustration of the Pythagorean Theorem
    15. Stepwise is a Problematic Method for Variable Selection in Regression: Alternative Methods are Available
    16. What If There Were No Significance Testing?
    17. A Simple Method for Assessing Linear Trend and Seasonality Components in Database Models
    18. Variable Selection Methods in Regression: Ignorable Problem, Outing Notable Solution
    19. A New CRM Method for Identifying High-value Responders
    20. Predicting the Quality of Your Statistical Regression Models
    21. Confusion Matrix: Perhaps Confusing, but Definitely Biased
    22. What is the GenIQ Model?
    23. Linear Probability, Logit, and Probit Models: How Do They Differ?  
    24. When Data Are Too Large to Handle in the Memory of Your Computer
    25. A New Method of Modeling Missing Data: Deliverance of Discarded, Incomplete Cases
    26. Predicting Share of Wallet without Survey Data
    27. Variable Selection Methods in Regression: Many Statisticians Know Them, But Few Know They Produce Poorly Performing Models
    28. Statistical Modelers and Data Miners: Variable Selection, Data Mining Paradigm, Optimal Decile Table, and more ...
    29. The GenIQ Model: Data-defined, Data Mining, Variable Selection, and Decile Optimization
    30. Data Mining: An Ill-defined Concept
    31. GenIQ: A Visual Introduction
    32. Overfitting: Old Problem, New Solution
    33. Genetic Data Mining: The Correlation Coefficient
    34. Data Cleaning is Not Completed Until the “Noise” is Eliminated
    35. How to Make the Best Credit Score Even Better
    36. Multivariate Regression Trees: An Alternative Method
    37. "Grand" words (1000) about the GenIQ Model
    38. Historical Notes on the Two Most Popular Prediction Models, and One Not-yet Popular Model
    39. Real World Data are Dirty: Data Cleaning and the "Noise" Problem
    40. GenIQ: For Modelers Who Daringly Consider a Different Model –
    41. The Most Compelling Illustration of the GenIQ Model
    42. A Most Compelling Illustration of the GenIQ Model
    43. GenIQ Lets the Data Specify the Model
    44. Data Mining Using Genetic Programming
    45. GenIQ-enhanced Regression Model
    46. GenIQ-enhanced/Data-reused Regression
    47. GenIQ: Nonlinear Curve Fitter
    48. GenIQ: OLS Curve Fitter
    49. A Method for Moderating Outliers, Instead of Discarding Them
    50. Building Statistical Regression Models: Straight Data are Necessary
    51. Logistic Regression versus Machine Learning Regression
    52. Ordinary Regression versus Machine Learning Regression
    53. The GenIQ Model: FAQs
    54. Interpreting Model Performance: Use the “Smart” Decile Analysis
    55. Predictor Variable Importance: Multicollinearity is Not a Problem for a Genetic Regression Model
    56. Dummy Variables: The Problem and Its Solution
    57. Finding the Best Variables for Database Marketing Models
    58. Decile Analysis Primer: Cum Lift for Response Model
    59. Maximizing the Lift in Database Marketing
    60. When Statistical Model Performance is Poor: Try Something New, and Try It Again
    61. A Hybrid Statistics-Machine Learning Paradigm for Database Response Modeling
    62. Tukey's Bulging Rule: Why Use It, and What to Do When It Fails
    63. Tukey's Bulging Rule for Straightening Data
    64. Modeling a Skewed Distribution with Many Zero Values
    65. A New Jackknife Method: 3-in-1 Tool for Variable Selection, Data Mining and Model Building
    66. A Genetic Model to Identify Titanic Survivors
    67. Statistics versus Machine Learning: A Significant Difference for Database Response Modeling
    68. The Genetic Programming Engine that Does: Data Specify the Model, Not Fit Data to a Model
    69. GenIQ-Parkinson's Law: The GenIQ Model Expands to Fill the Time Available for Model Completion
    70. Genetic Data Mining Method for the Proper Use of the Correlation Coefficient
    71. A Genetic Imputation Method for Database Modeling
    72. Missing Value Analysis: A Machine-learning Approach
    73. A Genetic Logistic Regression Model: A Model-free Approach to Identifying Responders to a CRM Solicitation
    74. Predictive Analytics Now Accessible to Excel Spreadsheet Users: GenIQ Model Software with an Excel Toolbar
    75. An Alternative Response Model
    76. Analysis and Modeling for Today's Data
    77. Using the GenIQ Model to Insure the Validation of a Model is Unbiased
    78. Gain of a Predictive Information Advantage: Data Mining via Evolution
    79. Response-Approval Model: An Effective Approach for Implementation
    80. Marketing Optimization Model: A Genetic Approach
    81. Binary Logistic Regression: A Model-free Approach
    82. Ordinal Logistic Regression: A Model-free Approach
    83. Multinomial Logistic Regression: A Model-free Approach
    84. Quantile Regression: Model-free Approach
    85. Rethink The Regression Model: Think GenIQ Model
    86. Building a CRM Model for Identifying Profitable Leads: The Genetic Contact-Profit Model
    87. A New Method of Decile Analysis Optimization for Database Models
    88. Multiple Catalog Mail Campaigns: Who Gets Mailed Next, and Which Catalog Should It Be?
    89. Building and Solving Response Optimization Models with the GenIQ Model
    90. Gaining Insights from Your Data: A Neoteric Machine Learning Method
    91. Data Mining for the Desktop
    92. Radically Distinctive Without Equal Predictive Model
    93. Extracting Nonlinear Dependencies: An Easy, Automatic Method
    94. Retail Revenue Optimization: Accounting for Profit-eating Markdowns
    95. Handling Qualitative Attributes: Upgrading Discrete Heritable Information
 
6) Solutions

    1. Your Customers are Talking: Are You Listening?
    2. Controlling Credit Risk: Building a Not-Yet Popular Forecasting Model
    3. Improve Marketing ROI: Predictive Analytics Using Real-time Data
    4. A Customer Intelligence Model: A New Approach to Gain Customer Insight
    5. Marketing Optimization: Regression-tree Approach for Outbound Campaigns
    6. Identifying Your Best Customers: Descriptive, Predictive and Look-Alike Profiling
    7. Latent Class Analysis and Modeling: A Pharmaceutical Case Study
    8. Subprime Lender Short Term Loan Models for Credit Default and Exposure
    9. Credit Risk Modeling – A Machine Learning Approach
    10. Finding Tax Cheaters Easily
    11. CRM Success with Data Mining
    12. Retail Revenue Optimization: Accounting for Profit-eating Markdowns
    13. Nonprofit Modeling: Remaining Competitive and Successful
    14. Detecting Fraudulent Insurance Claims: A Machine Learning Approach
    15. Demand Forecasting for Retail: A Genetic Approach
    16. CRM: Cross-Sell and Up-Sell to Improve Response Rates and Increase Revenue
    17. Performance Management: Improve It via Machine Learning
    18. Risk Management for the Insurance Industry: A Machine Learning Approach
    19. Credit Scoring: A New Approach to Control Risk
    20. Customer-Value Based Segmentation: An Overview
    21. Trigger Marketing: Predicting the Next Best Offer to Give Customers
    22. Marketing Mix Model: Right Offer, Right Time, and Right Channel
    23. Building a CRM Model for Identifying Profitable Leads: The Genetic Contact-Profit Model
    24. A Machine Learning Approach to Conjoint Analysis
    25. Subprime Borrower Market: Building a Subprime Lender Scoring Model for a Homogeneous Segment
    26. The Financial Services Problem-Solution: Reduce Costs, Increase Profits by Data Mining and Modeling
    27. Retail Revenue Optimization: A Model-free Approach
    28. Fraud Detection: Beyond the Rules-Based Approach
    29. Product Positioning: Predicting the Next Best Offer to Give Customers
    30. Marketing Mix Model: A Genetic Approach
    31. Optimizing Customer Loyalty
    32. Telecommunication Fraud Reduction: Analytical Approaches
    33. The Banking Industry Problem-Solution: Reduce Costs, Increase Profits by Data Mining and Modeling
    34. Fundraising Modeling: Competitive and Successful

7) Reference Articles

    1. Survival of the Fittest: Who Coined It, and When?
    2. How Does Spearman's Coefficient Relate to Pearson's Coefficient?
    3. Calculating the Average Correlation Coefficient: Why?
    4. What If There Were No Significance Testing?
    5. Predicting the Quality of Your Statistical Regression Models
    6. Pop Quiz on Pi
    7. Linear Probability, Logit, and Probit Models: How Do They Differ?
    8. How To Bootstrap
    9. The Correlation Coefficient: Definition
    10. Genetic Data Mining Method for the Proper Use of the Correlation Coefficient
    11. Logistic Regression: Definition
    12. CHAID: Its Original Intent
    13. CHAID for Uncovering Relationships: A Data Mining Tool
    14. Market Segmentation: Defining Target Markets with CHAID
    15. The Working Concepts for Building a Database Acquisition Model
    16. The Working Concepts for Building a Database Retention Model
    17. The Working Concepts for Building a Database Attrition Model
    18. Optimizing Website Content via the Taguchi Method
    19. Sensitivity Analysis for Database Marketing Models
    20. Creating a SAS8 Dataset from a SAS9 Dataset
    21. A Very Automatic Coding of Dummy Variables
    22. Einstein: A Clever, Self-taught Statistician
    23. Data Mining Paradigm: Historical Perspective
    24. Data Mining: An Ill-defined Concept
    25. Pythagoras: Everyone Knows His Famous Theorem, but Not Who Discovered It One Thousand Years before Him
    26. Karl Pearson: Everybody Knows His Correlation Coefficient, but Not How “Close” the Binomial Distribution is to a Normal Distribution
    27. Florence Nightingale: You Know Her as the Pioneer of Modern Nursing, But as a Passionate Statistician!
    28. Statistical Terms: Who Coined Them, and When?
    29. Historical Notes on the Two Most Popular Prediction Models, and One Not-yet Popular Model
    30. Different Data, Identical Regression Models: Which Model is Better?
    31. The Importance of Straight Data: For Simplicity, Desirable for Good Modeling
    32. The Correlation Coefficient: Its Values Range Between Plus/Minus 1, or Do They?
    33. A Trilogy of “Item” Biographies of Our Favorite Statisticians
    34. HELP! I Need Somebody, Not Just Anybody ...
    35. Do-It-Yourself Method for Finding the Square Root of 2
    36. Given an Irrational Number, are the Digits after the Decimal Point Random?
    37. Given the Irrational Number Pi, are the Digits after the Decimal Point Random? 
    38. What is the Probability of a Miracle?
    39. Confusion Matrix: Perhaps Confusing, but Definitely Biased
    40. Handling Qualitative Attributes: Upgrading Discrete Heritable Information
       

8) Useful SAS Code

    1. Calculating the Average Correlation Coefficient
    2. Creating a Bootstrap Sample
    3. A Very Automatic Coding of Dummy Variables
    4. Collapsing Multiple Observations into a Single Observation
    5. Collapsing Mutliple (Monthly) Observations into a Single Observation
For more information about these articles, call Bruce Ratner at 516.791.3544 or 1 800 DM STAT-1; or e-mail at br@dmstat1.com.
Sign-up for a free GenIQ webcast: Click here.