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<!DOCTYPE FL_Course SYSTEM "https://www.flane.de/dtd/fl_course095.dtd"><?xml-stylesheet type="text/xsl" href="https://portal.flane.ch/css/xml-course.xsl"?><course productid="20050" language="de" source="https://portal.flane.ch/swisscom/xml-course/ibm-0a079g" lastchanged="2025-07-29T12:17:56+02:00" parent="https://portal.flane.ch/swisscom/xml-courses"><title>Introduction to Machine Learning Models Using IBM SPSS Modeler (V18.2)</title><productcode>0A079G</productcode><vendorcode>IB</vendorcode><vendorname>IBM</vendorname><fullproductcode>IB-0A079G</fullproductcode><version>1</version><essentials>&lt;ul&gt;

	&lt;li&gt;Knowledge of your business requirements&lt;/li&gt;&lt;/ul&gt;</essentials><audience>&lt;ul&gt;

	&lt;li&gt;Data scientists&lt;/li&gt;&lt;li&gt;Business analysts&lt;/li&gt;&lt;li&gt;Clients who want to learn about machine learning models&lt;/li&gt;&lt;/ul&gt;</audience><contents>&lt;p&gt;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.&lt;/p&gt;</contents><outline>&lt;p&gt;Introduction to machine learning models&amp;bull; Taxonomy of machine learning models&amp;bull; Identify measurement levels&amp;bull; Taxonomy of supervised models&amp;bull; Build and apply models in IBM SPSS ModelerSupervised models: Decision trees - CHAID&amp;bull; CHAID basics for categorical targets&amp;bull; Include categorical and continuous predictors&amp;bull; CHAID basics for continuous targets&amp;bull; Treatment of missing valuesSupervised models: Decision trees - C&amp;amp;R Tree&amp;bull; C&amp;amp;R Tree basics for categorical targets&amp;bull; Include categorical and continuous predictors&amp;bull; C&amp;amp;R Tree basics for continuous targets&amp;bull; Treatment of missing valuesEvaluation measures for supervised models&amp;bull; Evaluation measures for categorical targets&amp;bull; Evaluation measures for continuous targetsSupervised models: Statistical models for continuous targets - Linear regression&amp;bull; Linear regression basics&amp;bull; Include categorical predictors&amp;bull; Treatment of missing valuesSupervised models: Statistical models for categorical targets - Logistic regression&amp;bull; Logistic regression basics&amp;bull; Include categorical predictors&amp;bull; Treatment of missing valuesSupervised models: Black box models - Neural networks&amp;bull; Neural network basics&amp;bull; Include categorical and continuous predictors&amp;bull; Treatment of missing valuesSupervised models: Black box models - Ensemble models&amp;bull; Ensemble models basics&amp;bull; Improve accuracy and generalizability by boosting and bagging&amp;bull; Ensemble the best modelsUnsupervised models: K-Means and Kohonen&amp;bull; K-Means basics&amp;bull; Include categorical inputs in K-Means&amp;bull; Treatment of missing values in K-Means&amp;bull; Kohonen networks basics&amp;bull; Treatment of missing values in KohonenUnsupervised models: TwoStep and Anomaly detection&amp;bull; TwoStep basics&amp;bull; TwoStep assumptions&amp;bull; Find the best segmentation model automatically&amp;bull; Anomaly detection basics&amp;bull; Treatment of missing valuesAssociation models: Apriori&amp;bull; Apriori basics&amp;bull; Evaluation measures&amp;bull; Treatment of missing valuesAssociation models: Sequence detection&amp;bull; Sequence detection basics&amp;bull; Treatment of missing valuesPreparing data for modeling&amp;bull; Examine the quality of the data&amp;bull; Select important predictors&amp;bull; Balance the data&lt;/p&gt;</outline><essentials_plain>- Knowledge of your business requirements</essentials_plain><audience_plain>- Data scientists
- Business analysts
- Clients who want to learn about machine learning models</audience_plain><contents_plain>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.</contents_plain><outline_plain>Introduction to machine learning models• Taxonomy of machine learning models• Identify measurement levels• Taxonomy of supervised models• Build and apply models in IBM SPSS ModelerSupervised models: Decision trees - CHAID• CHAID basics for categorical targets• Include categorical and continuous predictors• CHAID basics for continuous targets• Treatment of missing valuesSupervised models: Decision trees - C&amp;R Tree• C&amp;R Tree basics for categorical targets• Include categorical and continuous predictors• C&amp;R Tree basics for continuous targets• Treatment of missing valuesEvaluation measures for supervised models• Evaluation measures for categorical targets• Evaluation measures for continuous targetsSupervised models: Statistical models for continuous targets - Linear regression• Linear regression basics• Include categorical predictors• Treatment of missing valuesSupervised models: Statistical models for categorical targets - Logistic regression• Logistic regression basics• Include categorical predictors• Treatment of missing valuesSupervised models: Black box models - Neural networks• Neural network basics• Include categorical and continuous predictors• Treatment of missing valuesSupervised models: Black box models - Ensemble models• Ensemble models basics• Improve accuracy and generalizability by boosting and bagging• Ensemble the best modelsUnsupervised 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 KohonenUnsupervised models: TwoStep and Anomaly detection• TwoStep basics• TwoStep assumptions• Find the best segmentation model automatically• Anomaly detection basics• Treatment of missing valuesAssociation models: Apriori• Apriori basics• Evaluation measures• Treatment of missing valuesAssociation models: Sequence detection• Sequence detection basics• Treatment of missing valuesPreparing data for modeling• Examine the quality of the data• Select important predictors• Balance the data</outline_plain><duration unit="d" days="2">2 Tage</duration><pricelist><price country="FR" currency="EUR">1500.00</price><price country="CH" currency="CHF">1890.00</price></pricelist><miles/></course>