mackelab / smc_rnnsLinks
Code accompanying Inferring stochastic low-rank RNNs from neural data. @matthijspals
☆24Updated 5 months ago
Alternatives and similar repositories for smc_rnns
Users that are interested in smc_rnns are comparing it to the libraries listed below
Sorting:
- Package for the data-driven representation of non-linear dynamics over manifolds based on a statistical distribution of local phase portr…☆86Updated 2 months ago
- ☆59Updated 3 years ago
- Library to perform Slice Tensor Component Analysis (sliceTCA)☆54Updated 6 months ago
- State space models for decoding hippocampal trajectories and determining their type using sorted or clusterless data☆49Updated last week
- NEural MOdelS, a statistical modeling framework for neuroscience.☆106Updated this week
- A Guide to Reconstructing Dynamical Systems from Neural Measurements Using Recurrent Neural Networks☆38Updated last year
- jPCA for Neural Data Analysis in Python☆50Updated 2 years ago
- Preferential Subspace Identification Algorithm☆54Updated 4 months ago
- Code to train and analyze multi-region data-constrained RNNs and perform Current-Based Decomposition (CURBD)☆54Updated 4 years ago
- Sparse Component Analysis: An unsupervised method for recovering interpretable latent factors☆28Updated 7 months ago
- Open-source, graph-based Python code generator and analysis toolbox for dynamical systems (pre-implemented and custom models). Most pre-i…☆84Updated last month
- ☆26Updated 4 months ago
- A very simple and barebones tensor decomposition library for CP decomposition a.k.a. PARAFAC a.k.a. TCA☆39Updated last year
- A dimensionality reduction framework for disentangling the flow of signals between populations of neurons☆33Updated last month
- Code to reproduce figures for "Mice alternate between discrete strategies during perceptual decision-making" from Ashwood, Roy, Stone, IB…☆50Updated 2 years ago
- Supplementary code for the paper "Linking connectivity, dynamics and computations in low-rank recurrent neural networks" by F. Mastrogius…☆35Updated 7 years ago
- Tools for analyzing spiking data from single-neuron recodings.☆29Updated last month
- ☆54Updated 7 months ago
- Code for "Cortical areas interact through a communication subspace", Semedo et al. (Neuron, 2019)☆47Updated 6 years ago
- Decoding and geometrical analysis of neural activity with built-in best practices☆45Updated 5 months ago
- A dimensionality reduction framework for characterizing the multi-dimensional, concurrent flow of signals across multiple neuronal popula…☆16Updated 6 months ago
- Fitting and analysis of trial-based neural spike responses with Generalized Linear Model (GLM).☆72Updated 5 years ago
- code to fit GLMs, HMMs, and GLM-HMMs (aka IO-HMMs)☆31Updated last year
- Dynamical Similarity Analysis code accompanying the paper "Beyond Geometry: comparing the temporal structure of computation in neural cir…☆66Updated last month
- Tutorial☆11Updated 4 years ago
- Neyman-Scott point process model to identify sequential firing patterns in high-dimensional spike trains☆69Updated 2 years ago
- A repository of neural manifold techniques described and compared in "Neural manifold analysis of brain circuit dynamics in health and di…☆29Updated 2 years ago
- Fitting and simulation of Poisson generalized linear model for single and multi-neuron spike trains (Pillow et al 2008).☆43Updated 6 years ago
- A PyTorch implementation of Latent Factor Analysis via Dynamical Systems (LFADS) and AutoLFADS.☆114Updated 8 months ago
- GLMCC: The generalized linear model for spike cross-correlation (Kobayashi et al., Nature Communications, 2019)☆36Updated 3 years ago