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NOTE: Course information changes frequently, including Methods of Instruction. Please revisit these pages periodically for the most recent and up-to-date course information.


Fall 2023 Quantitative Methods: Social Sciences GR5058 section 001
DATA MINING FOR SOCIAL SCIENCE
DATA MINING FOR SOCIAL SC

Call Number 13809
Day & Time
Location
T 8:10pm-10:00pm
Points 4
Grading Mode Standard
Approvals Required None
Instructor Benjamin K Goodrich
Type SEMINAR
Method of Instruction In-Person
Course Description The class is roughly divided into three parts: 1) programming best practices and exploratory data analysis (EDA); 2) supervised learning including regression and classification methods and 3) unsupervised learning and clustering methods. In the first part of the course we will focus writing R programs in the context of simulations, data wrangling, and EDA. Supervised learning deals with prediction problems where the outcome variable is known such as predicting a price of a house in a certain neighborhood or an outcome of a congressional race. The section on unsupervised learning is focused on problems where the outcome variable is not known and the goal of the analysis is to find hidden structure in data such as different market segments from buying patterns or human population structure from genetics data.
Web Site Vergil
Department Quantitative Methods/Social Sciences
Enrollment 10 students (50 max) as of 12:07PM Thursday, May 2, 2024
Subject Quantitative Methods: Social Sciences
Number GR5058
Section 001
Division Graduate School of Arts and Sciences
Campus Morningside
Note PRIORITY QMSS STUDENTS
Section key 20233QMSS5058G001

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SIS update 05/02/24 12:07    web update 08/03/23 08:15