Platform

  • Search
  • Seminars
  • Conferences
  • Jobs

Resources

  • Submit Content
  • About Us

© 2025 World Wide

Open knowledge for all • Started with World Wide Neuro • A 501(c)(3) Non-Profit Organization

Analytics consent required

World Wide relies on analytics signals to operate securely and keep research services available. Accept to continue, or leave the site.

Review the Privacy Policy for details about analytics processing.

World Wide
SeminarsConferencesWorkshopsCoursesJobsMapsFeedLibrary
Back to SeminarsBack
SeminarPast EventNeuroscience

Cognitive maps as expectations learned across episodes – a model of the two dentate gyrus blades

Andrej Bicanski

Dr

Max Planck Institute for Human Cognitive and Brain Sciences

Schedule
Wednesday, March 12, 2025

Showing your local timezone

Schedule

Wednesday, March 12, 2025

12:00 PM Europe/London

Host: NeuroAI UCL

Access Seminar

Event Information

Domain

Neuroscience

Original Event

View source

Host

NeuroAI UCL

Duration

70 minutes

Abstract

How can the hippocampal system transition from episodic one-shot learning to a multi-shot learning regime and what is the utility of the resultant neural representations? This talk will explore the role of the dentate gyrus (DG) anatomy in this context. The canonical DG model suggests it performs pattern separation. More recent experimental results challenge this standard model, suggesting DG function is more complex and also supports the precise binding of objects and events to space and the integration of information across episodes. Very recent studies attribute pattern separation and pattern integration to anatomically distinct parts of the DG (the suprapyramidal blade vs the infrapyramidal blade). We propose a computational model that investigates this distinction. In the model the two processing streams (potentially localized in separate blades) contribute to the storage of distinct episodic memories, and the integration of information across episodes, respectively. The latter forms generalized expectations across episodes, eventually forming a cognitive map. We train the model with two data sets, MNIST and plausible entorhinal cortex inputs. The comparison between the two streams allows for the calculation of a prediction error, which can drive the storage of poorly predicted memories and the forgetting of well-predicted memories. We suggest that differential processing across the DG aids in the iterative construction of spatial cognitive maps to serve the generation of location-dependent expectations, while at the same time preserving episodic memory traces of idiosyncratic events.

Topics

NeuroAIcognitiondentate gyrusentorhinal cortexepisodic memoryinfrapyramidal bladepattern integrationpattern separationprediction errorsuprapyramidal blade

About the Speaker

Andrej Bicanski

Dr

Max Planck Institute for Human Cognitive and Brain Sciences

Contact & Resources

No additional contact information available

Related Seminars

Seminar60%

Pancreatic Opioids Regulate Ingestive and Metabolic Phenotypes

neuro

Jan 12, 2025
Washington University in St. Louis
Seminar60%

Exploration and Exploitation in Human Joint Decisions

neuro

Jan 12, 2025
Munich
Seminar60%

The Role of GPCR Family Mrgprs in Itch, Pain, and Innate Immunity

neuro

Jan 12, 2025
Johns Hopkins University
January 2026
Full calendar →