6 Best Data Mining Courses For Beginners in 2024

6 Best Data Mining Courses For Beginners in 2024
Photo by Luke Chesser / Unsplash

What is Data Mining?

Data Mining is a process of extracting meaningful information from large datasets. Organizations use it primarily to identify data patterns and uncover hidden relationships. By learning Data Mining, you can use the extracted patterns and relationships to gain deeper insight into the data, which can help to make better decisions, identify trends, and gain a competitive advantage.

The benefits of learning data mining include:

  1. Better Decision Making: Data mining enables organizations to gain a deeper understanding of their data, thus enabling them to make better decisions.
  2. Increased Efficiency: Data mining helps organizations become more efficient by providing insights into trends and patterns.
  3. Enhanced Targeting: Data mining can help organizations identify and target their most valuable customers.
  4. Improved Customer Service: Data mining enables organizations to better serve customers by gathering data on their preferences and behavior.
  5. Cost Reduction: By enabling organizations to optimize their processes, data mining can help reduce costs.

Top Data Mining Courses & Specialization List

  1. Data Mining for Business Analytics & Data Analysis in Python
  2. Data Mining Specialization
  3. Data Mining with R: Go from Beginner to Advanced
  4. Data Science: Data Mining & Natural Language Processing in R
  5. Data Science Foundations: Data Mining
  6. Master Data Mining in Data Science & Machine Learning

Disclosure: Coursesity is supported by the learner's community. We may earn an affiliate commission when you purchase via links on Coursesity.

1. Data Mining for Business Analytics & Data Analysis in Python

This course introduces students to the fundamentals of data mining and business intelligence. Students will learn about data mining techniques, including extracting and cleaning data, data preparation and transformation, and data mining algorithms.

In this Data mining course, you will learn the following:

  • Identify the value of data mining for quickly analyzing and interpreting data.
  • Apply data mining algorithms using Python programming language for Business Analytics.
  • Explain the principles behind various data mining algorithms, including supervised and unsupervised machine learning and explainable AI.
  • Explain the results of data mining models using explainable artificial intelligence models: LIME and SHAP.
  • Practice applying data mining techniques through hands-on exercises and case studies.
  • Implement cluster analysis, dimension reduction, and association rule learning using Python.
  • Perform survival analysis, Cox proportional hazard regression, and CHAID using Python.
  • Use random forest and feature selection to improve the accuracy of data mining models.
  • Develop a portfolio of data mining projects for Business Data Analytics and Intelligence.
  • Use data mining techniques to inform business decisions and strategies.

In this course, you'll learn the intuition behind each model without getting too bogged down in the math. It will explain each one using words, graphs, and metaphors, with math and the Greek alphabet kept to a minimum.

Additionally, it will cover the most impactful Data Mining techniques for Data Science and Business Analytics, such as Supervised Machine Learning, Unsupervised Machine Learning, and Explainable Artificial Intelligence.

As we go, you will code Python together, line by line, and walk through every parameter and function. Finally, you'll put your knowledge to the test with challenges at the end of each section.

  • Course rating: 4.4 out of 5.0 (125 rating total)
  • Duration: 9h
  • Certificate: Certificate on completion
Data Mining for Business Analytics & Data Analysis in Python
Python for Data Analytics & Explainable Artificial Intelligence. Data Mining for Business Data Analytics & Intelligence.

2. Data Mining Specialization

This Data Mining Specialization teaches data mining techniques for both structured and unstructured data. You'll learn about pattern discovery, clustering, text retrieval, text mining and analytics, and data visualization. The Capstone project will challenge you to use a Yelp restaurant review data set to solve real-world data mining problems.

In this Data mining course, you will learn the following topics:

  • Data Visualization
  • Text Retrieval and Search Engines
  • Text Mining and Analytics
  • Pattern Discovery in Data Mining
  • Cluster Analysis in Data Mining
  • Data Mining Project

Data Visualization: This course will help you learn the basics of data mining methodologies and applications. Then dive into one subfield in data mining: pattern discovery. Discover data mining patterns through in-depth concepts, methods, and applications. Additionally, we will introduce some interesting pattern-based classification methods.

Text Retrieval and Search Engines: This course will teach you the fundamentals of search engine technologies and their importance in text data mining. You'll be able to rapidly identify relevant data from large pools and use search engines to interpret any patterns that may arise. By the end, you'll understand the principles and techniques of text retrieval and the science behind search engines.

Text Mining and Analytics: This course will explore techniques for mining and analyzing text data to uncover intriguing patterns, gain valuable knowledge, and aid decision-making, focusing on statistical approaches that can be applied to any natural language text data with little to no human effort.

Pattern Discovery in Data Mining: This course will teach you the basics of data mining and its methodologies and applications. You will then explore the implications of pattern discovery in data mining, from its concepts and methods to its applications, such as data-driven phrase mining. Upon completion, you will practice and apply scalable pattern discovery methods to massive transactional data, evaluate patterns, and discover diverse patterns, sequenced patterns, and sub-graph patterns.

Cluster Analysis in Data Mining: Cluster analysis is a technique used to group objects with similar characteristics and separate them from dissimilar ones. It typically involves partitioning methods such as k-means, hierarchical methods such as BIRCH, and density-based methods such as DBSCAN/OPTICS. Additionally, there are methods for validating and evaluating the quality of the clustering results. Examples of cluster analysis can be seen in various applications.

Data Mining Project: In this capstone project, you will solve interesting real-world data mining challenges using the learned algorithms and techniques for data mining from the previous courses in the Specialization, including Pattern Discovery, Clustering, Text Retrieval, Text Mining, and Visualization.

  • Course rating: 4.5 out of 5.0 (1,921 rating total)
  • Duration: 8 months (For the entire specialization)
  • Certificate: Certificate on completion

3. Data Mining with R: Go from Beginner to Advanced

The course teaches hands-on business analytics, or data analytics, using the popular, no-cost R software to perform dozens of data mining tasks using real data and case studies. Students will learn data analysis, data mining, and predictive analytics skills using one of the most commonly used business analytics applications in industry and government today.

In this Data mining course, you will learn the following:

  • Use R software for data import and export, data exploration and visualization, and data analysis tasks, including performing a comprehensive set of data mining operations.
  • Effectively use a number of popular, contemporary data mining methods and techniques in demand by industry, including (1) Decision, classification, and regression trees (CART); (2) Random forests; (3) Linear and logistic regression; and (4) Various cluster analysis techniques.
  • Apply the dozens of included "hands-on" cases and examples using real data and R scripts to new and unique data analysis and data mining problems.

Additionally, this course provides training and instruction on "best practices" for using R software, how to install and use RStudio, the characteristics of R's basic data types and structures, as well as how to input data into an R session using the keyboard, using user prompts, or by importing files from a computer.

  • Course rating: 4.7 out of 5.0 (403 rating total)
  • Duration: 12h
  • Certificate: Certificate on completion

4. Data Science: Data Mining & Natural Language Processing in R

This course will help you learn how to perform preprocessing, visualization, and machine-learning tasks in R language, such as clustering, classification, and regression. The insights you can gather from text data and Twitter will give your company an edge over its competitors.

In this Data mining course, you will learn the following:

  • Perform the most important pre-processing tasks needed prior to machine learning in R.
  • Carry out data visualization in R.
  • Use machine learning for unsupervised classification in R.
  • Carry out supervised learning by building classification and regression models in R.
  • Evaluate the accuracy of supervised machine learning algorithms and compare their performance in R.
  • Carry out sentiment analysis using text data in R.

This course provides easy-to-follow, hands-on methods to understand and apply the most important R Data Science basics and techniques. You will utilize popular packages such as caret, dplyr, and the common NLP packages to work with real data and extract meaningful insights from text data. By the end of this course, you will have the confidence to enhance your R skills to the next level.

  • Course rating: 4.9 out of 5.0 (365 rating total)
  • Duration: 13h 15m
  • Certificate: Certificate on completion

5. Data Science Foundations: Data Mining

Data mining is an essential part of the data science process, providing a framework to collect, search, and filter raw data in an organized manner to ensure good data from the start. This course is designed to equip students with the tools, techniques, and tactical thinking needed to effectively parse large data sets and uncover the most meaningful and useful information.

In this Data mining course, you will learn the following topics:

  • Preliminaries
  • Data Reduction
  • Clustering
  • Classification
  • Anomaly Detection
  • Association Analysis
  • Regression Analysis
  • Sequential Patterns
  • Text Mining

This course is for those looking to join the data science workforce or who need to gain more experience in data mining. It covers data sources and types, the languages and software used in data mining, such as R and Python, and provides task-based lessons to practice the most common techniques, such as text mining, data clustering, and association analysis.

  • Course rating: 4.4 out of 5.0 (103,002 total enrollments)
  • Duration: 4h 40m
  • Certificate: Certificate on completion

6. Master Data Mining in Data Science & Machine Learning

If you're looking to gain a comprehensive understanding of Data Mining and Machine Learning, then this course is perfect for you. You'll learn about industry-standard models and algorithms, Data Mining standard processes, Survival Analysis, Clustering Analysis, various algorithms, and much more - giving you strong foundations in this field.

In this Data mining course, you will learn the following:

  • Get started with Data Mining.
  • Learn about different Data Mining Standard Processes.
  • Learn the concept of Survival Analysis.
  • Learn about the concept of Cox Hazards Regression.
  • Perform Clustering Analysis.
  • Learn about Dimensionality reduction.
  • Learn about the concept of Association Rule Learning.
  • Learn about the Predictive Modelling.
  • Learn everything about Data Mining and its applications.
  • Understand Machine Learning and its connections with Data Mining.
  • Learn all Machine Learning algorithms, their types, and their usage.
  • Practical use of Data Mining.
  • Use real-world examples of Data Mining.

This course will provide you with advanced knowledge about data mining. During this course, you will learn about the basics of data mining. Moreover, having a basic understanding of both Statistics and Python is essential; Statistics provides the foundation for data analysis, and Python gives the ability to manipulate and interpret data.

  • Course rating: 4.3 out of 5.0 (125 rating total)
  • Duration: 6h
  • Certificate: Certificate on completion

Hey! We hope you have found this Best Data Mining Courses Online list helpful and intriguing. Since you've made it this far then certainly you are willing to learn more and here at Coursesity, it is our duty to enlighten people with knowledge on topics they are eager to learn.

Here are some more topics that we think will be interesting for you!