CTN: Tanya Sharpee
Zuckerman Institute - L5-084 3227 Broadway, New York, NY, United StatesSeminar Time: 11:30am Date: 11/8/2024 Location: JLG, L5-084 Host: Krishan Kumar Title: Building mechanistic models of neural computations with simulation-based machine learnin
Continual Learning Working Group: Nikita Rajaneesh
CEPSR 6LW4 Computer Science Department 500 West 120 StreetTitle: Wandering Within a World A discussion on Wandering Within a World: Online Contextualized Few-Shot Learning, this 2021 paper by our very own Rich Zemel leverages contextual information in a continually changing environment to improve model performance in realistic settings. Zoom Link: https://columbiauniversity.zoom.us/j/97176853843?pwd=VLZdh6yqHBcOQhdf816lkN5ByIpIsF.1
CTN: Catherine Hartley
Zuckerman Institute - L5-084 3227 Broadway, New York, NY, United StatesTitle: TBD Abstract: TBD
CTN: Seminar Speaker Alessandro Ingrosso
Zuckerman Institute - L3-079 3227 Broadway, New York, NY, United StatesTitle: Statistical mechanics of transfer learning in the proportional limit Abstract: Transfer learning (TL) is a well-established machine learning technique to boost the generalization performance on a specific (target) task using information gained from a related (source) task, and it crucially depends on the ability of a network to learn useful features. I will present…
Lecture in AI: Danqi Chen
Davis Auditorium 530 W 120th St, New York, NY 10027, New York, NYTitle: Training Language Models in Academic: Research Questions and Opportunities Abstract: Large language models have emerged as transformative tools in artificial intelligence, demonstrating unprecedented capabilities in understanding and generating human language. While these models have achieved remarkable performance across a wide range of benchmarks and enabled groundbreaking applications, their development has been predominantly concentrated within…
CTN Seminar: Andrew Leifer
Zuckerman Institute - L5-084 3227 Broadway, New York, NY, United StatesTitle: TBD Abstract: TBD
Continual Learning Working Group: Lea Duncker
CEPSR 620 Schapiro 530 W. 120th StTitle: Task-dependent low-dimensional population dynamics for robustness and learning Abstract: Biological systems face dynamic environments that require flexibly deploying learned skills and continual learning of new tasks. It is not well understood how these systems balance the tension between flexibility for learning and robustness for memory of previous behaviors. Neural activity underlying single, highly controlled…
CTN Lab: Ashok Litwin-Kumar
Zuckerman Institute - L5-084 3227 Broadway, New York, NY, United StatesTitle: Searching for symmetries in connectome data Abstract: I will talk about work with Haozhe Shan on identifying structure in connectome data that suggests a cell type encodes one or a handful of variables, like heading direction or retinotopy. We are framing the problem as learning a graph embedding, but I will also mention other…
CTN: Mazviita Chirimuuta
Zuckerman Institute - L5-084 3227 Broadway, New York, NY, United StatesTitle: Neuromorphic Computing and the Significance of Medium Dependence Abstract: The increasingly prohibitive cost of energy demanded by large artificial neural networks (ANNs) is giving new impetus to research and development on neuromorphic computing. Importantly, there is an open question over how brain-like the hardware will have to be in order for an artificial intelligence…
CTN: Mehdi Azabou, ARNI Postdoctorate Research Scientist
Zuckerman Institute - L5-084 3227 Broadway, New York, NY, United StatesTitle: Building foundation models for neuroscience Abstract: Current methodologies for recording brain activity often provide narrow views of the brain's function. This fragmentation of datasets has hampered the development of robust and comprehensive computational models that generalize across diverse conditions, tasks, and individuals. Our work is motivated by the need for a large-scale foundation model…
CTN: Adam Cohen
Zuckerman Institute - L5-084 3227 Broadway, New York, NY, United StatesTitle: Mapping bioelectrical signals, from dendrites to circuits Abstract: Neuronal dendrites are excitable, but what are these excitations for? Are dendritic excitations involved in integration? Or in mediating back-propagation? What are their footprints, and what patterns of spiking and synaptic inputs can activate them? We mapped bioelectrical signals throughout dendritic arbors of pyramidal cells in behaving…
CTN: Jonathan Pillow
Zuckerman Institute - L5-084 3227 Broadway, New York, NY, United StatesTitle: Disentangling the Roles of Distinct Cell Classes with Cell-Type Dynamical Systems Abstract: Latent dynamical systems have been widely used to characterize the dynamics of neural population activity in the brain. However, these models typically ignore the fact that the brain contains multiple cell types, which limits their ability to capture the functional roles of…