
I’m incredibly proud to report that I recently advanced to candidacy! In our department, that means passing a qualifying paper defense (which I did in July 2020) as well as successfully “defending” a dissertation proposal paper and presentation.
My dissertation, “Evidence of Innocence: The Psychology of Lineup Rejections,” will comprise of three published or to-be-published studies. The first study was published in Law and Human Behavior earlier this year. The second and third studies will be basic-science studies investigating 1) why the confidence-accuracy relationship for lineup rejections ranges from negligible to slightly-positive and 2) the specific decision variable that is used for confidence during a lineup rejection.
Thank you to my committee: Drs. John Wixted (Chair), Tim Brady, Uma Karmarkar, John Serences, and Angela Yu.
Every year, the 
I will be presenting a flash talk at CogSci 2022! The talk is entitled: “Decision Variables in the Case of Police Lineup Rejections.” If you’re interested in learning about the decision rules which participants may use when rejecting a set of stimuli for a recognition memory task, come on by. The 4-5 minute talk will be uploaded virtually for those not going to the in-person conference in Toronto, Canada.
Data science proficiency goes hand-in-hand with Ph.D-level research. For most of us, however, we don’t enter graduate school with strong programming skills. Instead, we’re likely thrown into a two-in-one, programming-and-statistical-methods course during our first year of graduate school, using any number of possible languages (MatLab, R, SPSS, etc.). Personally, I’m of the belief that learning R is invaluable. I think the learning curve is steeper compared to other languages, but as you develop proficiency and confidence, I find it to be a dynamic language that can do most-anything you’ll need within the scope of a Ph.D program. (A bonus: It’s heavily used in industry as well.)