An official website of the United States government
Here's how you know
Official websites use .mil
A
.mil
website belongs to an official U.S. Department of Defense organization in the United States.
Secure .mil websites use HTTPS
A
lock (
lock
)
or
https://
means you’ve safely connected to the .mil website. Share sensitive information only on official, secure websites.
Skip to main content (Press Enter).
Toggle navigation
National Guard
Always Ready Always There
National Guard
Search National Guard:
Search
Search
Search National Guard:
Search
Home
News
Press Releases
Guard News
Overseas Operations
State Partnership Program
News Features
RSS Feeds
Transcripts
Features
Features by Year
Posture Statement
State Partnership Program
About the Guard
How We Began
Air National Guard
Army National Guard
DEERS Soldier Journey
History and Heritage
I am the Guard
NGB Official March
Leadership
CNGB
VCNGB
SEA
DANG
DARNG
Joint Staff
J-1
J-2
J-3
J-4
J-5
J-6
J-7
J-8
Personal Staff
Inspector General
General Counsel
National Guard Alternative Dispute Resolution
Public Affairs
Executive Support Services
Legislative Liaison
Special Staff
National Guard Office of Special Victims' Counsel
Office of the Provost Marshal
Office of the Joint Surgeon
Director of Acquisitions
Small Business Programs
Office of the Joint Chaplain
Senior Leader Management Office
Equal Opportunity Compliance
Comptroller
Resources
National Defense Strategy Implementation Guidance
Community Engagement
FOIA
Fact Sheets
Helpful Links
Image Gallery
News Images
Graphics
Historical Paintings
Legislative Liaison
Small Business Programs
Social Media
State Websites
Videos
Featured Videos
On Every Front
2019 Videos
2020 Videos
2021 Videos
Suicide Prevention
Family Programs
Environmental
Trial Defense Service
Holistic Wellness Challenge
Contact Us
Home
:
Features
:
2025
:
Wildfire Response
Latest News
National Guard Members Continue LA Wildfire Response
January 21, 2025
— LOS ANGELES – U.S. Army Sgt. Ricardo Hernandez watched from a cross street as sporadic traffic...
MORE
California Guardsman Helps Battle Wildfires in His Community
January 16, 2025
— CHANNEL ISLANDS AIR NATIONAL GUARD STATION, Calif. - Amid the wildfire crisis in California, an Air...
MORE
National Guard Bureau Chief Thanks Firefighting Guardsmen
January 14, 2025
— CHANNEL ISLANDS AIR NATIONAL GUARD STATION, Calif. – The National Guard is part of a multi-agency...
MORE
Wyoming, Nevada Guard Aircrews Assist California Firefighters
January 13, 2025
— CHEYENNE, Wyo. – Three Wyoming Air National Guard C-130s equipped with the U.S. Forest Service’s...
MORE
California, Nevada, Wyoming Guard Join Firefighting Battle
January 10, 2025
— MOFFETT AIR NATIONAL GUARD BASE, Calif. - Hundreds of National Guard members are now involved in...
MORE
Latest Photos
Latest Videos
Playlist:
Search Results
Video by Kevin D Schmidt
Player Embed Code:
Download
Embed
Share
Nikolaus Kriegeskorte - Comparing models by their predictions of representational geometries and topologies
Air Force Research Laboratory
May 10, 2024 | 01:23:26
Description: In this edition of QuEST, we will have an extended session with Niko Kriegeskorte on geometric analyses of brain representations
Abstract:
Understanding the brain-computational mechanisms underlying cognitive functions requires that we implement our theories in task-performing models and adjudicate among these models on the basis of their predictions of brain representations and behavioral responses. Previous studies have characterized brain representations by their representational geometry, which is defined by the representational dissimilarity matrix (RDM), a summary statistic that abstracts from the roles of individual neurons (or responses channels) and characterizes the discriminability of stimuli. The talk will cover (1) recent methodological advances implemented in Python in the open-source RSA3 toolbox that support unbiased estimation of representational distances and model-comparative statistical inference that generalizes simultaneously to the populations of subjects and stimuli from which the experimental subjects and stimuli have been sampled, and (2) topological representational similarity analysis (tRSA), an extension of representational similarity analysis (RSA) that uses a family of geo-topological summary statistics that generalizes the RDM to characterize the topology while de-emphasizing the geometry. Results show that topology-sensitive characterizations of population codes are robust to noise and interindividual variability and maintain excellent sensitivity to the unique representational signatures of different neural network layers and brain regions.
Key Moments and Questions in the video include:
Focus on methods development
RSA3 Toolbox: github.com/rsagroup/rsatoolbox
Representational Similarity Analysis version 3
Representational Similarity Analysis
Studying vision
Activity patterns as representations of the stimuli
Neural network model
Representational geometry, representational dissimilarity matrix
Euclidean distance
Representational dissimilarity matrix (RDM)
RDM estimator
Distance from noisy data are positively biased
Two true response patterns
Noisy response patterns
Removing Bias
Square Mahalanobis distance
Crossnobis distance estimator
RDM Comparator
Accounting for dependency among dissimilarity estimates by whitening
Dissimilarity estimation error covariance
Whitened Pearson RDM correlation
Whitened cosine RDM similarity
Topological RSA
Representational geodesics matrix (RGDM)
Turning an RDM into a weighted graph
Distance matrix
Geo-topological matrices
Adjacency matrix
Family of geo-topological distance transforms
Identifying subject’s brain regions
Identifying which layer of a neural network generated the data
RDM estimator
Biased distance estimators
Euclidean distance
Pearson correlation distance
Mahalanobis distance
Poisson-KL estimator
Unbiased:
Crossnobis estimator
Linear-discriminant t
Crossvalidated Poisson-KL estimator
Choosing a combination of RDM estimator and RDM comparator
Flexible RDM models
Data RDM
Selection model
Weighted component model
Manifold model
Fitting and testing in cross validation
Model evaluation
RSA3: new capabilities
More
Tags
quest
AFRL
Air Force Research Laboratory
Artificial Intelligence
consciousness
ACT3
More
Up Next
01:01:58
Kabrisky Memorial Lecture 2025
01:00:53
Michael Robinson - Topological Features in Large Language Models (and beyond?)
01:16:50
QuEST (2024-06-07) Benjamin Kuipers - Drinking From the Firehose of Experience
01:00:41
QuEST (2024-05-24 Joseph Houpt - Mathematical Psychology
Now Playing
Nikolaus Kriegeskorte - Comparing models by their predictions of representational geometries and topologies
01:10:36
Lila Davachi - Temporal Integration and Separation of Sequential Events in Memory
01:18:31
Dr. Yubei Chen
01:00:12
Anna Schapiro - Learning representations of specifics and generalities over time
59:49
Chris Baldassano - Studying memory in the brain with the Method of Loci
59:55
Memory Palace
More Videos
Resources
California Wildfire Response
FEMA Wildfires Response
National Interagency Fire Center News
California Wildfires USA Gov