A Causal Perspective on the Analysis of Signal and Noise Correlations and Their Role in Population Coding
Published 2014 View Full Article
- Home
- Publications
- Publication Search
- Publication Details
Title
A Causal Perspective on the Analysis of Signal and Noise Correlations and Their Role in Population Coding
Authors
Keywords
-
Journal
NEURAL COMPUTATION
Volume 26, Issue 6, Pages 999-1054
Publisher
MIT Press - Journals
Online
2014-04-01
DOI
10.1162/neco_a_00588
References
Ask authors/readers for more resources
Related references
Note: Only part of the references are listed.- Dynamic reconfiguration of human brain functional networks through neurofeedback
- (2013) Sven Haller et al. NEUROIMAGE
- On the spectral formulation of Granger causality
- (2012) D. Chicharro BIOLOGICAL CYBERNETICS
- Low error discrimination using a correlated population code
- (2012) Greg Schwartz et al. JOURNAL OF NEUROPHYSIOLOGY
- Perceptual Inference Predicts Contextual Modulations of Sensory Responses
- (2012) T. Lochmann et al. JOURNAL OF NEUROSCIENCE
- Framework to study dynamic dependencies in networks of interacting processes
- (2012) Daniel Chicharro et al. PHYSICAL REVIEW E
- When Two Become One: The Limits of Causality Analysis of Brain Dynamics
- (2012) Daniel Chicharro et al. PLoS One
- Modeling the impact of common noise inputs on the network activity of retinal ganglion cells
- (2011) Michael Vidne et al. JOURNAL OF COMPUTATIONAL NEUROSCIENCE
- Fast reconfiguration of high-frequency brain networks in response to surprising changes in auditory input
- (2011) Ruth M. Nicol et al. JOURNAL OF NEUROPHYSIOLOGY
- The Architecture of Functional Interaction Networks in the Retina
- (2011) E. Ganmor et al. JOURNAL OF NEUROSCIENCE
- The Effect of Noise Correlations in Populations of Diversely Tuned Neurons
- (2011) A. S. Ecker et al. JOURNAL OF NEUROSCIENCE
- What can spike train distances tell us about the neural code?
- (2011) Daniel Chicharro et al. JOURNAL OF NEUROSCIENCE METHODS
- A novel test to determine the significance of neural selectivity to single and multiple potentially correlated stimulus features
- (2011) Robin A.A. Ince et al. JOURNAL OF NEUROSCIENCE METHODS
- Effective connectivity: Influence, causality and biophysical modeling
- (2011) Pedro A. Valdes-Sosa et al. NEUROIMAGE
- Information Loss Associated with Imperfect Observation and Mismatched Decoding
- (2011) Masafumi Oizumi et al. Frontiers in Computational Neuroscience
- Mismatched Decoding in the Brain
- (2010) M. Oizumi et al. JOURNAL OF NEUROSCIENCE
- Sparse coding and high-order correlations in fine-scale cortical networks
- (2010) Ifije E. Ohiorhenuan et al. NATURE
- Noise correlations improve response fidelity and stimulus encoding
- (2010) Jon Cafaro et al. NATURE
- Information-theoretic methods for studying population codes
- (2010) Robin A.A. Ince et al. NEURAL NETWORKS
- Decorrelated Neuronal Firing in Cortical Microcircuits
- (2010) A. S. Ecker et al. SCIENCE
- Stimulus-Dependent Correlations and Population Codes
- (2009) Krešimir Josić et al. NEURAL COMPUTATION
- Generating Coherent Patterns of Activity from Chaotic Neural Networks
- (2009) David Sussillo et al. NEURON
- Pairwise Maximum Entropy Models for Studying Large Biological Systems: When They Can Work and When They Can't
- (2009) Yasser Roudi et al. PLoS Computational Biology
- A Maximum Entropy Model Applied to Spatial and Temporal Correlations from Cortical Networks In Vitro
- (2008) A. Tang et al. JOURNAL OF NEUROSCIENCE
- Low-Frequency Local Field Potentials and Spikes in Primary Visual Cortex Convey Independent Visual Information
- (2008) A. Belitski et al. JOURNAL OF NEUROSCIENCE
- On the use of information theory for the analysis of the relationship between neural and imaging signals
- (2008) Stefano Panzeri et al. MAGNETIC RESONANCE IMAGING
- Mutual Information Expansion for Studying the Role of Correlations in Population Codes: How Important Are Autocorrelations?
- (2008) A. Scaglione et al. NEURAL COMPUTATION
Create your own webinar
Interested in hosting your own webinar? Check the schedule and propose your idea to the Peeref Content Team.
Create NowBecome a Peeref-certified reviewer
The Peeref Institute provides free reviewer training that teaches the core competencies of the academic peer review process.
Get Started