👨‍💼 CUSTOMER CARE NO +918468865271

⭐ TOP RATED SELLER ON AMAZON, FLIPKART, EBAY & WALMART

🏆 TRUSTED FOR 10+ YEARS

  • From India to the World — Discover Our Global Stores

🚚 Extra 10% + Free Shipping? Yes, Please!

Shop above ₹5000 and save 10% instantly—on us!

THANKYOU10

Hypothesis Testing and Model Selection in the Social Sciences (Methodology in the Social Sciences)

Sale price Rs.3,536.00 Regular price Rs.4,714.00
Tax included


Genuine Products Guarantee

We guarantee 100% genuine products, and if proven otherwise, we will compensate you with 10 times the product's cost.

Delivery and Shipping

Products are generally ready for dispatch within 1 day and typically reach you in 3 to 5 days.

Get 100% refund on non-delivery or defects

On Prepaid Orders

Book Details

  • Publisher: GUILFORD PRESS

  • Author: David L. Weakliem

  • Language: English

  • Edition: 1

  • ISBN: 9781462525652

  • Pages: 202

  • Cover: Hardcover, Illustrated

  • Dimensions: 9.4 x 6.4 x 0.7 inches


About the Book

"Statistical Methods for Model Selection: A Practical Guide for Social Scientists" provides an insightful exploration into the core concepts of hypothesis testing and model selection, blending statistical theory with real-world social science examples. Written by David L. Weakliem, this book offers an in-depth examination of the major approaches to hypothesis testing, including both classical (frequentist) and Bayesian methods. It not only explains how these approaches are applied but also delves into the ways they can be reconciled, addressing key controversies and criticisms along the way.

The book covers the importance of hypothesis testing in theory evaluation and explores the intricate relationship between hypothesis tests and confidence intervals. A significant focus is placed on the role of prior knowledge in Bayesian estimation and hypothesis testing. Additionally, the book introduces two practical alternatives to standard hypothesis testing: the Akaike Information Criterion (AIC) and Bayesian Information Criterion (BIC), providing detailed discussion on their usage.

What sets this book apart is its thoughtful treatment of the philosophical arguments surrounding hypothesis testing and the historical context of model selection problems. Rather than simply asking which statistical test to use, it encourages readers to consider how model specification, estimation, and statistical analysis can enhance the understanding of particular research questions.

Filled with accessible explanations and applicable to applied quantitative research in social sciences, this book serves as an indispensable resource for researchers and practitioners. Additionally, the companion website offers valuable data and syntax files to aid with the examples presented in the book, making it a highly practical guide for both students and seasoned researchers.