The Handbook of Data Analysis

Author: Melissa Hardy and Alan Bryman

*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.

Information

Description: The Handbook of Data Analysis por Melissa Hardy and Alan Bryman offers a comprehensive exploration of diverse data analysis techniques. It's a valuable resource for anyone seeking to understand both quantitative and qualitative approaches, enriching their analytical skills.

Pages: 73

Megabytes: 0.79 MB

Download

This may interest you

Introduction to Data Analysis Handbook

Introduction to Data Analysis Handbook

Extension: PDF | 112 pages

Introduction to Data Analysis Handbook por Migrant & Seasonal Head Start is a comprehensive guide focusing on data analysis methods tailored for Head Start programs. It provides practical strategies for understanding and utilizing data to improve program services.

Introduction to data analysis with R

Introduction to data analysis with R

Extension: PDF | 411 pages

Introduction to data analysis with R por Anonymous is a guide to using R for data analysis. It offers practical examples in public health and epidemiology, making it a valuable resource for beginners.

Introduction to Statistics and Data Analysis for Physicists

Introduction to Statistics and Data Analysis for Physicists

Extension: PDF | 412 pages

Introduction to Statistics and Data Analysis for Physicists por Gerhard Bohm, Günter Zech, delivers a comprehensive overview of statistical methods. It emphasizes modern applications in physics, making it a valuable resource for anyone analyzing experimental data.

Computational Topology for Data Analysis

Computational Topology for Data Analysis

Extension: PDF | 375 pages

Computational Topology for Data Analysis by Tamal Krishna Dey, Yusu Wang is a valuable resource for understanding topological methods in data science. It offers insights into applying algebraic topology for shape analysis, data processing, and feature extraction, making it relevant for AI applications.

Mathematical Foundations for Data Analysis

Mathematical Foundations for Data Analysis

Extension: PDF | 175 pages

Mathematical Foundations for Data Analysis by Jeff M. Phillips provides a solid mathematical background. It's an essential guide for grasping modern data analysis principles and techniques.