Topic Status: Some information in this topic is preview and subject to change in future releases. Preview information describes new features or changes to existing features in Microsoft SQL Server 2016 Community Technology Preview 2 (CTP2).
Welcome to the Microsoft Analysis Services Basic Data Mining Tutorial. Microsoft SQL Server provides an integrated environment for creating data mining models and making predictions. In this tutorial, you will complete a scenario for a targeted mailing campaign in which you use machine learning to analyze and predict customer purchasing behavior. The tutorial demonstrates how to use three of the most important data mining algorithms: clustering, decision trees, and Naive Bayes. You will also learn how to analyze your findings using the mining model viewers, and to create predictions and accuracy charts using the data mining tools that are included in Microsoft SQL Server Analysis Services. The fictitious company, Adventure Works Cycles, is used for all examples.
When you are comfortable using the data mining tools, we recommend that you also complete the Intermediate Data Mining Tutorial (Analysis Services - Data Mining). The lessons demonstrate how to use forecasting, market basket analysis, time series, association models, nested tables, and sequence clustering.
In this tutorial, you are an employee of Adventure Works Cycles who has been tasked with learning more about the company's customers based on historical purchases, and then using that historical data to make predictions that can be used in marketing. The company has never done data mining before, so you must create a new database specifically for data mining and set up several data mining models.
This tutorial teaches you how to create and work with several different types of machine learning methods. You will also learn how to create a copy of a mining model, and apply a filter to the input data to get different results. Afterwards you can compare the results of both models using a lift chart. Finally, you will use drillthrough to retrieve additional data from the underlying mining structure.
Microsoft Analysis Services Data Mining includes the following features that help you easily develop and compare multiple predictive models and then take actions on the results :
Holdout Test Sets -When you create a mining structure, you can now divide the data in the mining structure into training and testing sets. This lets you test models on similar data sets, and compare the accuracy of related models.
Mining model filters -You can now attach filters to a mining model, and apply the filter during both training and testing. This lets you easily build related models on different subsets of the data.
Drillthrough to Structure Cases and Structure Columns - You can now easily move from the general patterns in the mining model to actionable detail in the data source.
This tutorial is divided into the following lessons:
Make sure that the following are installed:
Microsoft SQL Server 2016
Microsoft SQL Server Analysis Services in multidimensional mode
The AdventureWorksDW2012 database.
To enhance security, the sample databases are not installed with SQL Server. To install the official databases for Microsoft SQL Server, visit the Microsoft SQL Sample Databases page and select SQL Server 2016.