
Lori Holt Talks Crow...
Lori Holt Talks Crowd Noise on CBS News Sunday Morning Lori Holt speaks with CBS’ David Pogue about the sounds of the Super Bowl. Although sporting events have continued in t
Lori Holt Talks Crowd Noise on CBS News Sunday Morning Lori Holt speaks with CBS’ David Pogue about the sounds of the Super Bowl. Although sporting events have continued in t
The American Psychological Association (APA) has awarded Nazbanou (Bonnie) Nozari an award for Distinguished Scientific Early Career Contributions to Psychology, in the area of h
The Cognitive Science Society announced seven research scientists, including Carnegie Mellon University’s Cleotilde Gonzalez, as 2021 Fellows. Gonzalez joins a selected group
Neuroscience/Neurobiology Seminar Series
For Zoom information, see email sent to cnbc-all list or contact christi@cmu.edu.
January 13:
Dr. Anne ChurchlandProfessor of Neurobiology
UCLA
Single-trial neural dynamics are dominated by richly varied movements
January 27:
Dr. Jessica Cardin
Associate Professor of Neuroscience
Yale University
State-dependent cortical circuits
February 17:Dr. Yi Zuo
Professor of Molecular, Cell, & Developmental Biology
UC Santa Cruz
Experience-dependent synapse reorganization in the living brain
March 24:
Dr. Kwabena Boahen
Professor of Bioengineering and Electrical Engineering
Stanford University
TBD (topic: Brains in Silicon)
April 14:
Dr. Julie Fudge
Professor of Neuroscience and Psychiatry
University of Rochester Medical Center
Cortical granularity shapes information flow to the amygdala and beyond: lessons from nonhuman primates
April 21:
Dr. Takao Hensch
Professor of Molecular & Cellular BIology, and Neurology
Harvard University
TBD
April 28:
Dr. Kamran Khodakhah
Professor of Neuroscience, Psychiatry & Behavioral Sciences
Albert Einstein College of Medicine
Cerebellar modulation of dopaminergic signaling
Neuroscience/Neurobiology Seminar Series
For Zoom information, see email sent to cnbc-all list or contact christi@cmu.edu.
January 13:
Dr. Anne ChurchlandProfessor of Neurobiology
UCLA
Single-trial neural dynamics are dominated by richly varied movements
January 27:
Dr. Jessica Cardin
Associate Professor of Neuroscience
Yale University
State-dependent cortical circuits
February 17:Dr. Yi Zuo
Professor of Molecular, Cell, & Developmental Biology
UC Santa Cruz
Experience-dependent synapse reorganization in the living brain
March 24:
Dr. Kwabena Boahen
Professor of Bioengineering and Electrical Engineering
Stanford University
TBD (topic: Brains in Silicon)
April 14:
Dr. Julie Fudge
Professor of Neuroscience and Psychiatry
University of Rochester Medical Center
Cortical granularity shapes information flow to the amygdala and beyond: lessons from nonhuman primates
April 21:
Dr. Takao Hensch
Professor of Molecular & Cellular BIology, and Neurology
Harvard University
TBD
April 28:
Dr. Kamran Khodakhah
Professor of Neuroscience, Psychiatry & Behavioral Sciences
Albert Einstein College of Medicine
Cerebellar modulation of dopaminergic signaling
Latent causes, prediction errors, and the organization of memory
Bio:
Yael Niv received her MA in Psychobiology from Tel Aviv University and her PhD in Computational Neuroscience from the Hebrew University in Jerusalem, having conducted a major part of her thesis research at the Gatsby Computational Neuroscience Unit in UCL. She is currently a professor at Princeton University, at the Psychology Department and the Princeton Neuroscience Institute. Her lab studies the neural and computational processes underlying reinforcement learning and decision making, with a particular focus on how the cognitive processes of attention, memory and learning interact in constructing task representations that allow efficient learning and decision making. She is co-founder and co-director of the Rutgers-Princeton Center for Computational Cognitive Neuropsychiatry, where she is applying ideas from reinforcement learning to questions pertaining to psychiatric disorders within the new field of computational psychiatry.
Abstract:
Latent causes, prediction errors, and the organization of memory
In recent years, my lab has suggested that incoming information is parsed into separate clusters (“states” in reinforcement learning parlance) — all events that are assigned to one cluster are learned about together, whereas events in different clusters do not interfere with each other in learning. Moreover, we have suggested that prediction errors are key to this separation into clusters. In this talk, I will revisit these ideas building not only on behavioral experiments showing evidence for clustering, but also experiments that show the effects of prediction errors on episodic memory. I will attempt to tie the different findings together into a hypothesis about how prediction errors affect not only learning, but also the organization of memory.