2024 Spring NEUROSC 299 001 SEM 001

Spring 2024

NEUROSC 299 001 - SEM 001

Seminars

Applied Statistics for Neuroscience

Daniel E Feldman

Jan 16, 2024 - May 03, 2024
Mo, We
05:00 pm - 06:29 pm
Social Sciences Building 174
Class #:25385
Units: 1to3

Instruction Mode: In-Person Instruction

Current Enrollment

Total Open Seats: 9
Enrolled: 19
Waitlisted: 0
Capacity: 28
Waitlist Max: 25
No Reserved Seats

Hours & Workload

1 to 3 hours of student-instructor coverage of course materials per week, and 2 to 6 hours of outside work hours per week.

Other classes by Daniel E Feldman

Course Catalog Description

Course that focuses on topical subjects in specific fields of neuroscience.

Class Description

This is an intermediate-level statistics class geared toward PhD students in neuroscience and related fields. This is a cooperatively run course in which students take the lead in collaboratively learning, presenting material, and doing hands-on exercises, under the guidance of a GSI with assistance from a faculty member. Students will come away from this class understanding the concepts and practice of commonly-used statistical and data modeling methods in neuroscience, when to use different methods, what assumptions they make, and how they relate to one another. Students learn the caveats and limitations of various methods, and the role of statistical analysis in the larger process of good experimental design. The first half of the course covers traditional statistics in a moderate level of detail (descriptive statistics, data visualization, t-tests, ANOVA, correlation, non-parametric tests, and bootstrapping). The second half of the course covers concepts in modeling of data (specifying, fitting, and evaluating models, with a focus on the general linear model), as well as resampling methods, classification, and clustering. Weekly exercises teach students how to implement statistical methods in Python, using real data.

Class Notes

Prerequisites: Students are expected to have an undergraduate introductory statistics course (psych stats, bio stats) or equivalent. If you don’t have this background, you should be able to catch up with extra readings each week. No programming experience is required.

Rules & Requirements

Repeat Rules

Reserved Seats

Current Enrollment

No Reserved Seats

Textbooks & Materials

See class syllabus or https://calstudentstore.berkeley.edu/textbooks for the most current information.

Textbook Lookup

Guide to Open, Free, & Affordable Course Materials

eTextbooks

Associated Sections

None