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Principles and Theories of Data Mining With Rapidminer

✍ Scribed by Sarawut Ramjan, Jirapon Sunkpho


Publisher
Engineering Science Reference
Year
2023
Tongue
English
Leaves
326
Category
Library

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✦ Synopsis


The demand for skilled data scientists is rapidly increasing as more organizations recognize the value of data-driven decision- making. Data science, data management, and data mining are all critical components for various types of organizations, including large and small corporations, academic institutions, and government entities. For companies, these components serve to extract insights and value from their data, empowering them to make evidence-driven decisions and gain a competitive advantage by discovering patterns and trends and avoiding costly mistakes. Academic institutions utilize these tools to analyze large datasets and gain insights into various scientific fields of study, including genetic data, climate data, financial data, and in the social sciences they are used to analyze survey data, behavioral data, and public opinion data. Governments use data science to analyze data that can inform policy decisions, such as identifying areas with high crime rates, determining which regions need infrastructure development, and predicting disease outbreaks. However, individuals who are not data science experts, but are experts within their own fields, may need to apply their experience to the data they must manage, but still struggle to expand their knowledge of how to use data mining tools such as RapidMiner software. Principles and Theories of Data Mining With RapidMiner is a comprehensive guide for students and individuals interested in experimenting with data mining using RapidMiner software. This book takes a practical approach to learning through the RapidMiner tool, with exercises and case studies that demonstrate how to apply data mining techniques to real-world scenarios. Readers will learn essential concepts related to data mining, such as supervised learning, unsupervised learning, association rule mining, categorical data, continuous data, and data quality. Additionally, readers will learn how to apply data mining techniques to popular algorithms, including k-nearest neighbor (K-NN), decision tree, naΓ―ve bayes, artificial neural network (ANN), k-means clustering, and probabilistic methods. By the end of the book, readers will have the skills and confidence to use RapidMiner software effectively and efficiently, making it an ideal resource for anyone, whether a student or a professional, who needs to expand their knowledge of data mining with RapidMiner software.

✦ Table of Contents


Title Page
Copyright Page
Book Series
Table of Contents
Preface
Chapter 1: Introduction to Data Mining
Chapter 2: Data
Chapter 3: Software Installation and Introduction to RapidMiner
Chapter 4: Data Pre-Processing and Example of Data Classification With RapidMiner
Chapter 5: Classification
Chapter 6: Deep Learning
Chapter 7: Clustering
Chapter 8: Association Rule
Chapter 9: Recommendation System
Chapter 10: Case Studies on the Use of Data Mining Techniques in Data Science
Chapter 11: Data Mining for Junior Data Scientists
Chapter 12: Data Mining for Junior Data Scientists
Glossary
Compilation of References
About the Authors
Index


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