Many researchers jump from data collection directly into testing hypothesis without realizing these tests can go profoundly wrong without clean data. This book provides a clear, accessible, step-by-step process of important ...

Buy Now From Amazon

Many researchers jump from data collection directly into testing hypothesis without realizing these tests can go profoundly wrong without clean data. This book provides a clear, accessible, step-by-step process of important best practices in preparing for data collection, testing assumptions, and examining and cleaning data in order to decrease error rates and increase both the power and replicability of results.

Jason W. Osborne, author of the handbook Best Practices in Quantitative Methods (SAGE, 2008) provides easily-implemented suggestions that are evidence-based and will motivate change in practice by empirically demonstrating—for each topic—the benefits of following best practices and the potential consequences of not following these guidelines.

Similar Products

Database Systems: A Practical Approach to Design, Implementation, and ManagementPython for Data Analysis: Data Wrangling with Pandas, NumPy, and IPythonIntroduction to Machine Learning with Python: A Guide for Data ScientistsModeling Techniques in Predictive Analytics with Python and R: A Guide to Data Science (FT Press Analytics)Introducing Python: Modern Computing in Simple PackagesRegression Analysis by Example (Wiley Series in Probability and Statistics Book 991)Competing on Analytics: Updated, with a New Introduction: The New Science of Winning