Deep-Learning-Assisted Statistical Methods with Examples in R (Chapman & Hall/crc Data Science Series)

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Deep-Learning-Assisted Statistical Methods with Examples in R (Chapman & Hall/crc Data Science Series)

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  • 製本 Paperback:紙装版/ペーパーバック版/ページ数 186 p.
  • 言語 ENG
  • 商品コード 9781041158431

Full Description

This book explores how deep learning enhances statistical methods for hypothesis testing, point estimation, optimization, interpretation, and other aspects. It uniquely demonstrates leveraging deep learning to improve traditional statistical approaches, showcasing their superior performance in practical applications. Each topic includes essential background, clear method explanations, and detailed R code demonstrations through case studies. This allows readers to directly apply these methods to their own challenges and easily adapt the underlying principles to related problems.

This book delves into statistical inference, introducing advanced strategies for hypothesis testing and point estimation. These innovative methods ingeniously combine both artificial and human intelligence, offering robust solutions for scenarios where traditional optimal analytical solutions are elusive or non-existent. A prime example of their real-world impact is in adaptive clinical trials, where these computational approaches can be readily implemented to optimize trial design and outcomes. The author further explores the multifaceted benefits of deep-learning-assisted statistical methods, extending beyond mere statistical efficiency. It highlights crucial features such as integrity protection, ensuring the trustworthiness of results; computational efficiency, enabling faster and more scalable analyses; and interpretability, which is increasingly vital for transparent communication of complex findings in modern statistics. This section encourages readers to consider a broader spectrum of improvements for new statistical methods, focusing on attributes that enhance their practical utility and societal relevance. Finally, the reader is given a critical examination of the limitations and potential concerns associated with the methods presented in earlier chapters. Crucially, it doesn't just identify these issues but also offers constructive mitigation approaches. This equips readers with essential techniques to safeguard AI-based methodologies with their scientific expertise, ensuring responsible and valid application of these powerful computational tools in diverse scientific and practical domains.

This book is a valuable resource for students, practitioners, and researchers integrating statistics and data science techniques to solve impactful real-world problems.

Contents

I Introduction and Preparations

1. Introduction to Deep Neural Networks (DNNs)

2. How to Implement DNN in Regression

II Statistical Inference

3. Two-sample Parametric Hypothesis Testing

4. Point Estimation

III Numerical Methods

5. Optimization with Unavailable Gradient Information

6. Protect Integrity and Save Computational Time

7. Interpretable Models in Regression Analysis

IV Extensions

8. Substitutions of Other Methods for DNN

9. Limitations and Mitigations

10. Some Future Works

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