- Home Page /
- Books /
- Computers & Technology /
- Databases & Big Data /
- Data Mining /
- Machine Learning: An Algorithmic Perspective ...
Machine Learning: An Algorithmic Perspective Chapman & HallCrc Machine Learning & Pattern Recognition 1st Edition
AOA 12038
Price Details
Excluding Shipping & Custom charges ( Shipping and custom charges will be calculated on checkout )
*All items will import from US
Ubuy works hard to protect your security and privacy. Our advanced payment security system ensures confidentiality by encrypting your information during transmission using AES (Advanced Encryption Standards) and SSL (Secure Socket Layer) protocols. Your payment details are 100% secure as we do not share your payment details with third party sellers.
Machine Learning: An Algorithmic Perspective is the text that demonstrates how to use algorithms while providing the background needed to understand how and why they work.
Fast
Shipping
Free
Return*
Secure Packaging
100% Original Products
PCI DSS Compliance
ISO 27001 Certified
What Stands Out
Product Details
| Item Weight | 1.5 lbs (680 grams) |
Who Should Buy?
-
Graduate Students
Ideal for graduate students pursuing advanced studies in machine learning and requiring a comprehensive understanding of algorithms.
-
Data Scientists
Data scientists looking to enhance their algorithmic knowledge and practical implementation of machine learning techniques.
-
Research Professionals
Research professionals focused on developing new machine learning techniques and looking for theoretical and practical insights.
-
Beginner Users
May overwhelm beginners with its technical depth; not suitable for those with little background in machine learning.
-
Casual Readers
Not recommended for casual readers seeking light introductions or non-technical overview of machine learning concepts.
-
Business Executives
Business executives looking for strategic insights rather than technical details may not find this book beneficial.
Product Description
Machine Learning: An Algorithmic Perspective Chapman & HallCrc Machine Learning & Pattern Recognition 1st Edition
Customer Questions & Answers
-
Question:
What is 'Machine Learning: An Algorithmic Perspective' about?
Answer: This book offers an in-depth exploration of the principles and techniques involved in machine learning from an algorithmic viewpoint. Authored by experts in the field, it covers major algorithms, methodologies, and frameworks essential for understanding how machines learn from data. Readers will gain insights into classification, regression, clustering, and more, making it a valuable resource for both beginners and seasoned practitioners. -
Question:
Who is the target audience for this book?
Answer: The primary audience includes students, researchers, and professionals in computer science and data science domains. Its comprehensive approach makes it suitable for graduate-level courses and those seeking to deepen their understanding of machine learning algorithms. Practical applications of the concepts encourage real-world usage, making it a great fit for anyone looking to apply machine learning in various industries. -
Question:
How does this book differ from other machine learning texts?
Answer: Unlike other machine learning books that focus on broad concepts, 'Machine Learning: An Algorithmic Perspective' emphasizes algorithmic intricacies with a mathematical basis. It dives deeply into the inner workings of key algorithms and their applications, which is beneficial for readers wanting to understand the mechanics behind the models they utilize. This specific focus aids in developing stronger analytical and problem-solving skills. -
Question:
Is prior knowledge of programming necessary to understand this book?
Answer: While a basic understanding of programming will enhance your learning experience, the book is designed to be accessible to readers with various levels of expertise. Key algorithms are explained in a conceptual manner, aiding readers in grasping foundational concepts before diving into code. Those looking to implement models will benefit greatly from knowing programming languages like Python or R. -
Question:
What kind of machine learning topics are covered in this book?
Answer: The book delves into a broad range of topics, including supervised and unsupervised learning, neural networks, decision trees, support vector machines, and deep learning architectures. Each topic is dissected methodically, complete with illustrative examples and problem-solving techniques. This breadth prepares readers to tackle diverse challenges in machine learning applications across various fields, including healthcare, finance, and technology. -
Question:
Are there practical examples and case studies included?
Answer: Yes, the book is rich with practical examples and case studies that help bridge the gap between theory and real-world application. These examples provide context for how machine learning algorithms are utilized in various industries, illustrating their effectiveness and encouraging you to think critically about problem-solving. This feature equips readers not only with theoretical knowledge but also practical skills for implementation. -
Question:
How can this book benefit my career in data science?
Answer: By utilizing this book, you will gain a solid foundation in machine learning algorithms, essential for advancing your career in data science. Understanding these concepts equips you with the analytical skills to make data-driven decisions, essential in today’s data-centric job market. The knowledge acquired will enable you to tackle complex challenges and build effective machine learning models that are highly sought after in various industries. -
Question:
What prerequisites should I have before reading this book?
Answer: A basic understanding of linear algebra, calculus, and statistics will enhance your grasp of the material. Familiarity with programming concepts, especially in Python or R, will also be helpful as the book may include algorithm implementations in code. These prerequisites ensure you have the foundational knowledge necessary to fully engage with the advanced topics covered. -
Question:
Can this book be used for academic purposes?
Answer: Absolutely, 'Machine Learning: An Algorithmic Perspective' is ideal for academic settings. Its structured content, comprehensive coverage of machine learning algorithms, and clear explanations make it suitable for course adoption in universities. Whether in a formal classroom or informal study group, the book serves as an excellent reference for those keen on mastering machine learning principles. -
Question:
Where can I buy 'Machine Learning: An Algorithmic Perspective'?
Answer: You can purchase 'Machine Learning: An Algorithmic Perspective' from Ubuy, a reliable online shopping platform. Ubuy offers a seamless shopping experience and access to a wide range of products, including this essential machine learning book. Just visit Ubuy and search for the title to find your copy.
Data Mining Editorial Review
If you're looking for an introductory machine learning book with a balance of theory and algorithmic descriptions, then Stephen Marsland's Machine Learning: An Algorithmic Perspective is for you. It presents a wide range of ML techniques, including artificial neural networks (ANNs), support vector machines (SVMs), and Bayesian networks, and covers topics not found in other introductory ML books. The author's writing is clear and not condescending, with an emphasis on building understanding gradually. It's well-suited for Junior/Senior level college students who have a working knowledge of Python programming and solid foundations in mathematics, including statistics. However, the book is not without its flaws. Readers should be warned that some of the codes in the book have bugs, and not all of the mathematical concepts are correctly presented, such as the universal approximation theorem for ANNs.
Customer Reviews & Ratings
-
5 Star
100%
-
4 Star
0%
-
3 Star
0%
-
2 Star
0%
-
1 Star
0%
Review this product
Share your thoughts with other customers
Pros
- Presents a wide range of ML techniques and covers topics not found in other introductory ML books
- Clear and not condescending writing style
- Builds understanding gradually
- Well-suited for Junior/Senior level college students who have a working knowledge of Python programming and solid foundations in mathematics, including statistics
Cons
- Some of the codes in the book have bugs
Product Price History
Important information
- Limitations : For products shipped internationally, please note that any manufacturer warranty may not be valid; manufacturer service options may not be available; product manuals, instructions, and safety warnings may not be in destination country languages; the products (and accompanying materials) may not be designed in accordance with destination country standards, specifications, and labeling requirements; and the products may not conform to destination country voltage and other electrical standards (requiring use of an adapter or converter if appropriate). The recipient is responsible for assuring that the product can be lawfully imported to the destination country. When ordering from Ubuy or its affiliates, the recipient is the importer of record and must comply with all laws and regulations of the destination country.
- Not all the products listed on Ubuy are for sale, as Ubuy is a global search engine. Products are subject to export/trade regulations.
AOA 12038
Currently unavailable.
We don't know when or if this item will be back in stock.
This item is not restrict in my country.(Please click on above link if this item is not restrict in your country, So our team will review and allow.)
Ubuy works hard to protect your security and privacy. Our advanced payment security system ensures confidentiality by encrypting your information during transmission using AES (Advanced Encryption Standards) and SSL (Secure Socket Layer) protocols. Your payment details are 100% secure as we do not share your payment details with third party sellers.
Features & Benefits
- Combines theory with practical examples for a deeper understanding of machine learning.
- Covers a wide range of topics including neural networks, optimization, and reinforcement learning.
- Strikes a balance between academic rigor and accessible information.
- Includes code examples and a companion website with Python implementations.
- Demonstrates applicability across multiple fields including finance, biology, and engineering.
- Ideal for students with basic mathematical knowledge seeking to apply machine learning algorithms.