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An Introduction to Statistical Learning: with Applications in Python (Springer Texts in Statistics)
JPY 12221
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An Introduction to Statistical Learning provides an accessible overview of the field of statistical learning
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製品詳細
| Item Weight | 1.4 lbs (640 grams) |
どんな人にお勧めですか?
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Beginner Students
Ideal for students new to statistical learning and looking for clear explanations and practical applications using Python.
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Data Scientists
Useful for data scientists seeking to enhance their statistical analysis skills with hands-on Python projects and exercises.
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Educators
Great resource for instructors who want a comprehensive textbook for teaching statistical learning methodologies in Python.
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Advanced Statisticians
May not meet the needs of advanced statisticians looking for in-depth theoretical insights beyond practical applications.
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Casual Readers
Not suitable for those seeking light reading; the content requires focused study and engagement with statistical concepts.
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Non-Python Users
Readers unfamiliar with Python programming may struggle to grasp the applications and examples presented throughout the book.
製品説明書
An Introduction to Statistical Learning: with Applications in Python (Springer Texts in Statistics)
顧客の質問と回答
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質問:
What topics are covered in 'An Introduction to Statistical Learning: with Applications in Python'?
答え: This book covers a comprehensive range of topics essential to statistical learning, including regression methods, classification, resampling methods, and variable selection. In addition, it delves into advanced concepts such as ensemble learning, tree-based methods, and support vector machines. Each topic is illustrated with practical examples using Python, making it a suitable resource for data enthusiasts and professionals looking to refine their analytical skills. By learning these techniques, readers can enhance their ability to make data-driven decisions in fields like finance, healthcare, and marketing. -
質問:
Who is the target audience for this book?
答え: The book is primarily aimed at undergraduate and graduate students in statistics, data science, and related disciplines, as well as professionals who seek to understand practical applications of statistical learning techniques. It is written in an accessible manner, making it beneficial for individuals with a fundamental background in statistics or programming. Readers can enhance their statistical knowledge and apply these concepts in real-life scenarios, fostering a deeper understanding of data analysis and interpretation. -
質問:
How does this edition differ from previous editions?
答え: The 2023rd edition includes updated content that reflects the latest developments and trends in statistical learning and data science. It features enhanced Python applications with more practical examples, improving the reader's ability to apply theorized concepts to real-world problems. New chapters may also be introduced, offering insights into current techniques and methodologies that have emerged since earlier editions, allowing readers to stay abreast of advancements in the field. -
質問:
Is prior knowledge of programming required to understand this book?
答え: While having a basic understanding of programming can be beneficial, the book is designed for readers with varying levels of experience. It introduces core concepts of Python and provides step-by-step guidance on how to implement statistical techniques using the language. This approach allows beginners to grasp fundamental programming skills alongside statistical learning while giving more experienced programmers the tools to apply their knowledge effectively in data analysis contexts. -
質問:
Can this book be useful for self-taught data scientists?
答え: Absolutely! 'An Introduction to Statistical Learning: with Applications in Python' is particularly useful for self-taught data scientists seeking a structured approach to learning statistical concepts and methodologies. With its clear explanations, practical examples, and hands-on exercises, learners can gradually build their expertise in key areas of statistical learning. This book serves as both a study guide and a reference, making it an invaluable resource for those pursuing a career in data science independently. -
質問:
What are some practical applications of the techniques discussed in the book?
答え: The techniques covered in this book have wide-ranging applications across various industries. For instance, regression analysis can be used in finance for risk assessment and forecasting, while classification techniques are essential in healthcare for predicting patient outcomes. Moreover, machine learning algorithms discussed can enhance customer segmentation in marketing, optimize supply chains in logistics, and improve fraud detection in banking. These methodologies empower professionals to leverage data effectively for informed decision-making. -
質問:
Are there any supplementary materials included with the book?
答え: Yes, the book often includes supplementary materials such as datasets, code snippets, and a companion website. These resources enhance the learning experience by providing hands-on practice and tools that readers can use to apply the concepts discussed in each chapter. They offer a practical avenue for experimenting with the techniques taught in the book, supporting deeper understanding and retention of the material as readers work through real datasets. -
質問:
Does this book include practical exercises?
答え: Yes, 'An Introduction to Statistical Learning: with Applications in Python' includes numerous exercises at the end of each chapter. These exercises are designed to reinforce the concepts learned and encourage hands-on experience with statistical techniques using Python. By engaging in these exercises, readers can gain practical insights and deepen their understanding, preparing them for real-world applications of statistical learning in their professional careers or studies. -
質問:
What is the significance of Python in this book?
答え: Python plays a central role in this book as it is one of the most widely used programming languages in data science and statistical analysis. The authors have chosen Python to demonstrate statistical concepts because of its readability, versatility, and robust libraries like NumPy, Pandas, and Scikit-learn. By learning statistical techniques through Python, readers can acquire valuable programming skills alongside their statistical knowledge, allowing for comprehensive data analysis and model development. -
質問:
Where can I buy 'An Introduction to Statistical Learning: with Applications in Python' in Japan?
答え: You can purchase 'An Introduction to Statistical Learning: with Applications in Python, Springer Texts in Statistics 2023rd Edition' conveniently through Ubuy, which offers a wide selection of books and educational material. Ubuy provides a user-friendly platform for finding academic literature, and you can explore their range of titles to secure your copy. Enjoy a seamless shopping experience with Ubuy, making it your go-to for academic and professional resources.
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JPY 12221
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特徴と利点
- Accessible overview of statistical learning
- Covers important modeling and prediction techniques
- Includes real-world examples
- Targeted at statisticians and non-statisticians
- Python-based alternative to ISLR
- Useful labs for novices and experienced users
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