Data Analytics and Computation 603 - Intro to Quantitative Analysis
Fall
2023
01
3.00
Min Pang
M W 10:00AM 11:15AM
UMass Amherst
83082
Machmer Hall room W-13
mrpang@umass.edu
85932
This course serves as a rigorous introduction to quantitative empirical research methods, designed for doctoral students in social science and master?s students with a data analytics or computational social science focus. The material covered will include a brief introduction to the problem of causality, followed by modules on (1) measurement, (2) prediction, (3) exploratory data analysis (discovery), (4) probability (including distributions of random variables), and (5) uncertainty (including estimation theory, confidence intervals, hypothesis testing, power). Along the way, we will encounter linear regression and classification as tools of descriptive data summary, prediction and inference, and as part of a broader strategy of causal analysis. Simulations and data analysis will be conducted in the R statistical environment. This course is a required core course for the graduate certificate and the master?s degree in Data Analytics and Computational Social Science (DACSS).
Open to DACSS masters students and SBS PhD students only DACSS 601 This course is a required core course for the Masters of Science and the Graduate Certificate in Data Analytics and Computational Social Science (DACSS). Open to DACSS masters and DACSS certificate students and SBS PhD students only, or by permission of the instructor. Please contact the instructor and DACSS@UMass.edu if you would like to enroll in this class and are not in one of the groups listed.
This course assumes a working knowledge of R. If you do not have a strong background in R (e.g., have not already taken and passed DACSS 601 Data Science Fundamentals or an equivalent), please contact the instructor to discuss strategies for preparing for this course.
Permission is required for interchange registration during the add/drop period only.