If you're attending #cogsci2023 don't miss some excellent research from the http://hmc-lab.com ! 🧵thread
Human and Machine Cognition Lab

Human and Machine Cognition Lab What makes humans so uniquely intelligent? How do people make the best use of limited cognit...

Human and Machine Cognition lab at the University of Tübingen
First up,
@AlexTheWitty will be presenting a new model of how we can flexibly use social information despite individual differences in payoffs/preferences *Talk session T.15* 👉 preprint: https://psyarxiv.com/c3fuq/ and summary thread: https://twitter.com/alexandrawitt_/status/1657032319297789955
@WataruToyokawa
At *Talk session T.27*
@valerio_rubino
will be presenting exciting new work using time pressure and trial-by-trial modeling to examine the cognitive costs of compositional reasoning
👉preprint: https://psyarxiv.com/z2648/ summary thread: https://twitter.com/valerio_rubino/status/1683415530491846656?s=20
In a virtual poster VP-Z-637-1719 Andria Smith and Simon Heuschkel present agent-based models showing how bias can arise from rational learning due historic privilege, but can be undone through an intervention. 👉preprint to be presented at
#CCN2023 https://t.co/4spDtEw1kj
Constructing and deconstructing bias: modeling privilege and mentorship in agent-based simulations

Bias exists in how we pick leaders, who we perceive as being influential, and who we interact with, not only in society, but in organizational contexts. Drawing from leadership emergence and social influence theories, we investigate potential interventions that support diverse leaders. Using agent-based simulations, we model a collective search process on a fitness landscape. Agents combine individual and social learning, and are represented as a feature vector blending relevant (e.g., individual learning characteristics) and irrelevant (e.g., race or gender) features. Agents use rational principles of learning to estimate feature weights on the basis of performance predictions, which are used to dynamically define social influence in their network. We show how biases arise based on historic privilege, but can be drastically reduced through the use of an intervention (e.g. mentorship). This work provides important insights into the cognitive mechanisms underlying bias construction and deconstruction, while pointing towards real-world interventions to be tested in future empirical work.

arXiv.org
At Poster session P.3 Fien Goetmaeckers in collab. with Tom Verguts and
@sennebraem will present new work on how generalization and exploration are sensitive to environmental contexts, exploring the flexibility (and limits) of human adaptation