Researcher Drop-Ins with the CSC, featuring Marjorie Mitchell, Copyright, Scholarly Communications, and Research Data Management Librarian

Library Building (LIB) 3287 University Way, Kelowna, BC, Canada

Researchers, meet your Okanagan research support team! Come join us to connect with friendly faces who are always there to support solutions for your scholarly communication and digital or data-intensive research needs.

Researcher Drop-Ins with the CSC, featuring the Office of Research Services and Writing and Academic Communication Support

Library Building (LIB) 3287 University Way, Kelowna, BC, Canada

Researchers, meet your Okanagan research support team! Come join us to connect with friendly faces who are always there to support solutions for your scholarly communication and digital or data-intensive research needs.

Population, Sampling, Sampling Distribution and Central Limit Theorem

Library Building (LIB) 3287 University Way, Kelowna, BC, Canada

This session will introduce participants to the foundational concepts of statistical inference, including population distributions and the process of random sampling. Attendees will learn how sampling distributions evolve towards normality as sample sizes increase and will visually explore the Central Limit Theorem.

By the end of the session, participants should be able to visualize and understand population distributions, illustrate random sampling processes, recognize the normalizing effect of larger samples on sampling distributions, and demonstrate the Central Limit Theorem visually.

Free

Fitting Linear Models in `R`

Library Building (LIB) 3287 University Way, Kelowna, BC, Canada

This workshop will illustrate how to fit linear models in R, diagnose any issues with model assumption violations, and interpret linear model summaries, including model coefficients, degrees of freedom, standard error estimates, t statistics, F statistics, p-values, R2, statistical significance, adjusted R2.

By the end of this session, participants will be able to fit linear models in R and interpret model outputs, including the output of the summary() function in R.

Free