bookmate game
Books
Fouad Sabry

Data Mining

Data mining is a cornerstone in the rapidly evolving field of robotics science, enabling robots and systems to efficiently process vast amounts of data to make intelligent decisions. This book, Data Mining, provides a comprehensive exploration of the concepts and techniques used in data mining within the context of robotics, machine learning, and artificial intelligence. Whether you're a professional in the field, a student, or a passionate enthusiast, this book offers valuable insights into transforming data into actionable knowledge that drives innovation.

1: Data mining: This chapter introduces the fundamentals of data mining, focusing on how algorithms and tools are applied to analyze large datasets in robotics.

2: Machine learning: Explores the intersection of data mining and machine learning, demonstrating how models can be trained to recognize patterns and make predictions in robotic systems.

3: Text mining: Delves into text mining, showing how robotic systems can extract useful information from unstructured textual data.

4: Association rule learning: Introduces association rule mining techniques to uncover hidden relationships in data, crucial for improving decisionmaking in robots.

5: Unstructured data: Discusses the challenges and methods for dealing with unstructured data, such as images or audio, in the context of robotics.

6: Concept drift: This chapter explains how machine learning models adapt over time as new data introduces changes, impacting robot performance.

7: Weka (software): Covers the use of Weka, a popular opensource software for data mining, to implement various mining algorithms in robotic applications.

8: Profiling (information science): Focuses on profiling techniques used to understand the behavior of systems and predict future actions, enhancing robotics decisionmaking.

9: Data analysis for fraud detection: Explores how data mining can help robots identify fraud and anomalies in various fields, such as finance or security.

10: ELKI: Provides a deep dive into the ELKI framework, useful for advanced data mining techniques and applied to robotics systems.

11: Educational data mining: Investigates how educational data mining can improve robotassisted learning environments and personalized education.

12: Knowledge extraction: Examines the process of extracting valuable insights from large datasets, guiding robots to make better decisions.

13: Data science: Introduces data science as an integral part of robotics, offering the foundation for building smarter, more capable robots.

14: Massive Online Analysis: Discusses techniques for processing massive datasets in realtime, ensuring robots can adapt to new information instantaneously.

15: Examples of data mining: This chapter presents realworld examples of data mining applications in robotics, showcasing its practical utility.

16: Artificial intelligence: Explores how artificial intelligence integrates with data mining techniques to empower robots with advanced decisionmaking capabilities.

17: Supervised learning: Focuses on supervised learning models and how they are used to train robots for specific tasks through labeled data.

18: Neural network (machine learning): Introduces neural networks and how they mimic human brain functions, essential for advanced robotics and autonomous systems.

19: Pattern recognition: Discusses pattern recognition techniques that allow robots to identify objects, gestures, or speech from raw data.

20: Unsupervised learning: Covers unsupervised learning techniques that allow robots to learn from data without predefined labels, enabling greater autonomy.

21: Training, validation, and test data sets: Explains the crucial role of data sets in evaluating and refining machine learning models, improving robotic accuracy and reliability.
399 printed pages
Original publication
2024
Publication year
2024

Other versions

Have you already read it? How did you like it?
👍👎
fb2epub
Drag & drop your files (not more than 5 at once)