IBM SPSS Modeler: Getting Started
Learn how to do Data Mining using IBM SPSS Modeler.
Description
IBM SPSS Modeler is a data mining workbench that helps you build predictive models quickly and intuitively, without programming. Analysts typically use SPSS Modeler to analyze data by doing data mining and then deploying models.
Overview: This course introduces students to data mining and to the functionality available within IBM SPSS Modeler. The series of stand-alone videos, are designed to introduce students to specific nodes or data mining topics. Each video consists of detailed instructions explaining why we are using a technique, in what situations it is used, how to set it up, and how to interpret the results. This course is broken up into phases. The Introduction to Data Mining Phase is designed to get you up to speed on the idea of data mining. You will also learn about the CRISP-DM methodology which will serve as a guide throughout the course and you will also learn how to navigate within Modeler. The Data Understanding Phase addresses the need to understand what your data resources are and the characteristics of those resources. We will discuss how to read data into Modeler. We will also focus on describing, exploring, and assessing data quality. The Data Preparation Phase discusses how to integrate and construct data. While the Modeling Phase will focus on building a predictive model. The Evaluation Phase focuses how to take your data mining results so that you can achieve your business objectives. And finally the Deployment Phase allows you to do something with your findings.
What You Will Learn!
- Data Mining and Advanced Analytics Defined
- Modeling Methods in Modeler
- CRISP-DM Overview
- General Modeler Orientation
- Reading Data
- Assessing Data Quality
- Integrating Data
- Constructing Data
- Modeling
- Evaluation
- Deployment
Who Should Attend!
- This course is for anyone that would like to learn how to use IBM SPSS Modeler.
- This course is for anyone that would like to learn how to do Data Mining.