Data Analysis in the Psychological Sciences: A Practical, Applied, Multimedia Approach

Author: Leyre Castro, J. Toby Mordkoff

*Wait a few seconds for the document to load, the time may vary depending on your internet connection. If you prefer, you can download the file by clicking on the link below.

Data Analysis in the Psychological Sciences: A Practical, Applied, Multimedia Approach is a practical textbook that introduces statistical analysis of psychological data. It covers topics such as statistics, managing data, descriptive statistics, statistical software (Excel and R), correlational analysis, and linear regression.
Download

* If you have doubts about how to download free books from InfoBooks, visit our guide to downloading books.

This may interest you

Social Data Analysis

Mikaila Mariel Lemonik Arthur and Roger Clark

Social Data Analysis by Mikaila Mariel Lemonik Arthur and Roger Clark provides an overview of both qualitative and quantitative approaches to data analysis. The book covers topics such as data preparation, univariate and bivariate analysis, hypothesis testing, multivariate analysis, correlation and regression, qualitative data analysis, and more.

Open Data Structures: An Introduction

Pat Morin

Open Data Structures: An Introduction is a comprehensive guide to data structures in computer science. It covers various topics such as interfaces, mathematical background, array-based lists, linked lists, skiplists, and more. The book provides insights into efficient data organization and manipulation.

Advanced Data Analysis from an Elementary Point of View

Cosma Rohilla Shalizi

Advanced Data Analysis from an Elementary Point of View provides a comprehensive guide to regression analysis, model evaluation, smoothing techniques, simulation, bootstrap, logistic regression, splines, and other advanced topics in data analysis. It covers essential concepts and techniques for understanding and analyzing data.

Mathematical Foundations for Data Analysis

Jeff M. Phillips

Mathematical Foundations for Data Analysis by Jeff M. Phillips is a self-contained course book that introduces fundamental principles and techniques for modern data analysis. It covers key conceptual tools, basic techniques in supervised and unsupervised learning, and topics like concentration of measure, cross-validation, gradient descent, principal component analysis, and graphs.