What's the Question? What's the Question?
Chapman & Hall/CRC Data Science Series

What's the Question‪?‬

Deciding What You Really Want to Know

    • ¥9,800
    • ¥9,800

発行者による作品情報

Statistics and data science aim to extract understanding from data and guide decision-making. However, before applying any analytical tools, we need absolute clarity about what we want to know or accomplish. Ambiguous objectives inevitably lead to mistaken conclusions and flawed actions. This book investigates the deeper challenges of formulating clear questions and matching analytical methods to those questions - issues that apply as much to elementary statistical tools as to sophisticated techniques. Rather than focusing on standard statistical misuses or data provenance issues, this work examines the critical step of ensuring your analysis actually answers the question you mean to ask.

Drawing from collaborative work across finance, medicine, government, manufacturing, defence, and other fields, the book deliberately emphasises basic and familiar tools so the fundamental issues are accessible to everyone. Following John Tukey's insight about the simplest problems of data analysis, the most detailed discussions centre on averages and comparisons between distributions, though the principles apply with even greater force to advanced methods that fewer people fully understand.

Key Features:

• Focusses on question formulation rather than computational techniques, addressing the step that precedes all successful data analysis

• Emphasises basic statistical tools (averages, comparisons) to make fundamental challenges visible to all practitioners

• Contains 130 text boxes presenting essential ideas in non-technical language, creating a "two-in-one" book accessible to both mathematical and non-mathematical readers

• Provides real-world examples drawn from diverse fields including finance, healthcare, government, manufacturing, and defence

• Offers a deep-dive analysis of a specific comparison method to illustrate the care required for precise statistical reasoning

• Presents a progression from general principles through detailed mathematical exploration to practical applications across various analytical scenarios

This book serves as an essential guide for statisticians, data scientists, researchers, and anyone who uses data to make decisions. Whether you're a practitioner seeking to improve your analytical approach or a student learning to think critically about statistical questions, this work will help you use data analytical tools more effectively and avoid the costly mistakes that arise from asking the wrong questions of your data.

ジャンル
科学/自然
発売日
2026年
5月21日
言語
EN
英語
ページ数
338
ページ
発行者
CRC Press
販売元
Taylor & Francis Group
サイズ
4.3
MB
The Improbability Principle The Improbability Principle
2014年
ROC Curves for Continuous Data ROC Curves for Continuous Data
2009年
Artificial Intelligence Frontiers in Statistics Artificial Intelligence Frontiers in Statistics
2020年
Analysis of Repeated Measures Analysis of Repeated Measures
2017年
Practical Longitudinal Data Analysis Practical Longitudinal Data Analysis
2017年
The Wellbeing of Nations The Wellbeing of Nations
2014年
Mathematical Engineering of Deep Learning Mathematical Engineering of Deep Learning
2024年
Explanatory Model Analysis Explanatory Model Analysis
2021年
Predictive Modelling for Football Analytics Predictive Modelling for Football Analytics
2025年
Models Demystified Models Demystified
2025年
How to Think about Data Science How to Think about Data Science
2022年
Real World AI Ethics for Data Scientists Real World AI Ethics for Data Scientists
2023年