0E079GSESSPVCIBM SPSS

    Introduction to Machine Learning Models Using IBM SPSS Modeler (V18.2)

    2.0 Online-Distancia €0.00

    Descripción

    Contains PDF course guide, as well as a lab environment where students can work through demonstrations and exercises at their own pace.

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    This course provides an introduction to supervised models, unsupervised models, and association models. This is an application-oriented course and examples include predicting whether customers cancel their subscription, predicting property values, segment customers based on usage, and market basket analysis.

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    If you are enrolling in a Self Paced Virtual Classroom or Web Based Training course, before you enroll, please review the Self-Paced Virtual Classes and Web-Based Training Classes on our Terms and Conditions page, as well as the system requirements, to ensure that your system meets the minimum requirements for this course. http://www.ibm.com/training/terms

    Objetivos

    Introduction to machine learning models

    • Taxonomy of machine learning models 

    • Identify measurement levels 

    • Taxonomy of supervised models 

    • Build and apply models in IBM SPSS Modeler  

     

    Supervised models: Decision trees - CHAID 

    • CHAID basics for categorical targets 

    • Include categorical and continuous predictors 

    • CHAID basics for continuous targets 

    • Treatment of missing values  

     

    Supervised models: Decision trees - C&R Tree 

    • C&R Tree basics for categorical targets 

    • Include categorical and continuous predictors 

    • C&R Tree basics for continuous targets 

    • Treatment of missing values  

     

    Evaluation measures for supervised models 

    • Evaluation measures for categorical targets 

    • Evaluation measures for continuous targets  

     

    Supervised models: Statistical models for continuous targets - Linear regression 

    • Linear regression basics 

    • Include categorical predictors 

    • Treatment of missing values  

     

    Supervised models: Statistical models for categorical targets - Logistic regression

    • Logistic regression basics 

    • Include categorical predictors 

    • Treatment of missing values

     

    Association models: Sequence detection 

    • Sequence detection basics 

    • Treatment of missing values

     

    Supervised models: Black box models - Neural networks 

    • Neural network basics 

    • Include categorical and continuous predictors 

    • Treatment of missing values  

     

    Supervised models: Black box models - Ensemble models 

    • Ensemble models basics 

    • Improve accuracy and generalizability by boosting and bagging 

    • Ensemble the best models  

     

    Unsupervised models: K-Means and Kohonen 

    • K-Means basics 

    • Include categorical inputs in K-Means 

    • Treatment of missing values in K-Means 

    • Kohonen networks basics 

    • Treatment of missing values in Kohonen  

     

    Unsupervised models: TwoStep and Anomaly detection 

    • TwoStep basics 

    • TwoStep assumptions 

    • Find the best segmentation model automatically 

    • Anomaly detection basics 

    • Treatment of missing values  

     

    Association models: Apriori 

    • Apriori basics 

    • Evaluation measures 

    • Treatment of missing values

     

    Preparing data for modeling 

    • Examine the quality of the data 

    • Select important predictors 

    • Balance the data

    Audiencia

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    • Data scientists
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    • Business analysts
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    • Clients who want to learn about machine learning models
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    Prerrequisitos

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    • Knowledge of your business requirements
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    Temario

    Introduction to machine learning models

    • Taxonomy of machine learning models 

    • Identify measurement levels 

    • Taxonomy of supervised models 

    • Build and apply models in IBM SPSS Modeler  

     

    Supervised models: Decision trees - CHAID 

    • CHAID basics for categorical targets 

    • Include categorical and continuous predictors 

    • CHAID basics for continuous targets 

    • Treatment of missing values  

     

    Supervised models: Decision trees - C&R Tree 

    • C&R Tree basics for categorical targets 

    • Include categorical and continuous predictors 

    • C&R Tree basics for continuous targets 

    • Treatment of missing values  

     

    Evaluation measures for supervised models 

    • Evaluation measures for categorical targets 

    • Evaluation measures for continuous targets  

     

    Supervised models: Statistical models for continuous targets - Linear regression 

    • Linear regression basics 

    • Include categorical predictors 

    • Treatment of missing values  

     

    Supervised models: Statistical models for categorical targets - Logistic regression

    • Logistic regression basics 

    • Include categorical predictors 

    • Treatment of missing values

     

    Association models: Sequence detection 

    • Sequence detection basics 

    • Treatment of missing values

     

    Supervised models: Black box models - Neural networks 

    • Neural network basics 

    • Include categorical and continuous predictors 

    • Treatment of missing values  

     

    Supervised models: Black box models - Ensemble models 

    • Ensemble models basics 

    • Improve accuracy and generalizability by boosting and bagging 

    • Ensemble the best models  

     

    Unsupervised models: K-Means and Kohonen 

    • K-Means basics 

    • Include categorical inputs in K-Means 

    • Treatment of missing values in K-Means 

    • Kohonen networks basics 

    • Treatment of missing values in Kohonen  

     

    Unsupervised models: TwoStep and Anomaly detection 

    • TwoStep basics 

    • TwoStep assumptions 

    • Find the best segmentation model automatically 

    • Anomaly detection basics 

    • Treatment of missing values  

     

    Association models: Apriori 

    • Apriori basics 

    • Evaluation measures 

    • Treatment of missing values

     

    Preparing data for modeling 

    • Examine the quality of the data 

    • Select important predictors 

    • Balance the data

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