Ido Ben-Artzi
@idoba.bsky.social
95 followers 330 following 10 posts
Computational Neuroscience PhD student at Tel Aviv University, trying to figure out how people represent their decision environments. Also a chess international master.
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Reposted by Ido Ben-Artzi
paulbsharp.bsky.social
🚨 Want to research the computational & neural mechanisms of planning and its disruption in mental health? If so, join our lab!

Here's one prestigious postdoc fellowship that just opened: azrielifoundation.org/azrieli-fell...

reach out w/your CV to [email protected]

lab: sharplabbiu.github.io
Lab Website
sharplabbiu.github.io
idoba.bsky.social
Many thanks to my PhD supervisor, @shaharnitzan.bsky.social, and to our collaborators Rani Moran, Maayan Pereg and Roy Luria for their invaluable contributions.
Read the preprint here:
osf.io/preprints/ps...
idoba.bsky.social
On a practical note, some of what appears to be “random exploration” could be explained by modeling humans associating rewards with random noise in the task.
idoba.bsky.social
Do humans automatically assign credit to all task-relevant (but outcome-irrelevant) features?
Does outcome-irrelevant learning persist even when the cost of it goes up?
Do high working memory individuals encode irrelevant values but inhibit them from influencing choices, or ignore them altogether?
idoba.bsky.social
Computational modeling shows that outcome-irrelevant learning is quite reliable across sessions, yet not everyone does this equally. Working memory capacity strongly predicts outcome-irrelevant learning. Suggesting working memory is central for maintaining a causal structure guiding learning.
idoba.bsky.social
To examine the possibility that participants are not convinced by the instructions, in Experiment 2, we gave 600 trials across three days, allowing them to infer that locations should be neglected. But, we find they keep assigning credit to outcome-irrelevant locations.
idoba.bsky.social
So we created a “magical forest” narrative, telling participants that the offered leaves are randomly driven to their locations by the wind. We find participants still show outcome-irrelevant learning, leading them to choose suboptimally and win a smaller money bonus.
idoba.bsky.social
Experiment 1 (N=504) was aimed at ensuring people truly understand the causal structure of the task. Previously, it was suggested that such credit assignment is due to participants forming a wrong model of the task, rather than due to an automatic model-free credit assignment.
idoba.bsky.social
We asked participants to choose cards to win rewards. Some cards had higher chances of winning than others, but the card locations on the screen were completely irrelevant. No matter how hard we tried, people still assigned value to locations.
idoba.bsky.social
Excited to share our new preprint! 🚨
Does human learning have an automatic aspect? Is it possible that we learn things that are counterproductive and only lead to reduced gains?
idoba.bsky.social
Excited to be in #NeurIPS2024

Visit my poster at the Behavioral ML workshop or just come say Hi

openreview.net/forum?id=JAD...
Reposted by Ido Ben-Artzi