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SQL Server 2016 Developer's Guide

You're reading from  SQL Server 2016 Developer's Guide

Product type Book
Published in Mar 2017
Publisher Packt
ISBN-13 9781786465344
Pages 616 pages
Edition 1st Edition
Languages
Authors (3):
Miloš Radivojević Miloš Radivojević
Profile icon Miloš Radivojević
Dejan Sarka Dejan Sarka
Profile icon Dejan Sarka
William Durkin William Durkin
Profile icon William Durkin
View More author details
Toc

Table of Contents (21) Chapters close

SQL Server 2016 Developer's Guide
Credits
About the Authors
About the Reviewer
www.PacktPub.com
Customer Feedback
Preface
1. Introduction to SQL Server 2016 2. Review of SQL Server Features for Developers 3. SQL Server Tools 4. Transact-SQL Enhancements 5. JSON Support in SQL Server 6. Stretch Database 7. Temporal Tables 8. Tightening the Security 9. Query Store 10. Columnstore Indexes 11. Introducing SQL Server In-Memory OLTP 12. In-Memory OLTP Improvements in SQL Server 2016 13. Supporting R in SQL Server 14. Data Exploration and Predictive Modeling with R in SQL Server

Advanced analysis - undirected methods


Data mining and machine learning techniques are divided into two main classes:

  • The directed, or supervised approach: You use known examples and apply information to unknown examples to predict selected target variable(s)

  • The undirected, or unsupervised approach: You discover new patterns inside the dataset as a whole

The most common undirected techniques are clustering, dimensionality reduction, and affinity grouping, also known as basket analysis or association rules. An example of clustering is looking through a large number of initially undifferentiated customers and trying to see if they fall into natural groupings based on similarities or dissimilarities of their features. This is a pure example of "undirected data mining" where the user has no preordained agenda and hopes that the data mining tool will reveal some meaningful structure. Affinity grouping is a special kind of clustering that identifies events or transactions that occur simultaneously...

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