📚

Survey Methodology

by Robert M. Groves, Floyd J. Fowler Jr., Jill Eltinge, and Elin L. Singer

A comprehensive guide that explores the principles of survey design and methodology, essential for integrating AI effectively.

📚

Machine Learning for Data Streams

by Albert Bifet, Ricard Gavalda, and Jesse Read

Focuses on machine learning techniques tailored for real-time data, crucial for adaptive survey frameworks.

📚

The Art of Survey Design

by Paul S. Levy and Stanley Lemeshow

Offers foundational insights into survey design principles, essential for understanding traditional methodologies before integrating AI.

📚

Adaptive Surveys: A New Approach to Data Collection

by M. D. (Murray) Smith

Explores innovative survey techniques that adapt to respondent behavior, directly relevant to our course focus.

📚

Data Science for Business

by Foster Provost and Tom Fawcett

Provides a practical understanding of data science concepts, including machine learning applications in business contexts.

📚

Ethics of Artificial Intelligence and Robotics

by Vincent C. Müller

Examines ethical considerations in AI, crucial for developing responsible survey methodologies.

📚

Designing Data Reports That Work

by Nancy Duarte

Teaches effective communication of data insights, key for presenting findings from AI-enhanced surveys.

📚

The Survey Research Handbook

by Arlene Fink

A practical guide to conducting surveys, providing essential knowledge before applying AI technologies.

📚

Predictive Analytics: The Power to Predict Who Will Click, Buy, Lie, or Die

by Eric Siegel

Delves into predictive modeling techniques, vital for enhancing data analysis in surveys.

📚

The Data Warehouse Toolkit: The Definitive Guide to Dimensional Modeling

by Ralph Kimball and Margy Ross

Focuses on data modeling techniques that can greatly enhance survey data organization and analysis.

Embrace these insightful reads to deepen your understanding and apply their wisdom in your professional journey. Happy reading!