The code for replicating the experiments from the LFI in SSMs with Unknown Dynamics paper.

Overview

Likelihood-Free Inference in State-Space Models with Unknown Dynamics

This package contains the codes required to run the experiments in the paper. The simulators used for the State-Space Models in the experiments are implemented based on Engine for Likelihood-free Inference (ELFI) models.

Installation

We recommend using an Anaconda environment. To create and activate the conda environment with all dependencies installed, run:

conda create -c conda-forge --name env --file lfi-requirements.txt
conda activate env
pip install -e .
pip install sbi blitz-bayesian-pytorch stable_baselines3

For the GP-SSM and PR-SSM methods, we recommend creating a separate environment, in which one should install tensorflow, and then clone the 'custom_multiouput' branch of the GPflow from https://github.com/ialong/GPflow. Once GPflow is installed, one should clone GPt from https://github.com/ialong/GPt and execute 'experiments/run_gpssms.py', the code will complete 30 repletions of experiments with tractable likelihoods.

Running the experiments

The experiment scripts can be found in the 'experiments/' folder. To run the experiments on one of the considered SSM, one should run the 'run_experiment.py' script with the following arguments (options are in the parentheses): --sim ('lgssm', 'toy', 'sv', 'umap', 'gaze'), --meth ('bnn', 'qehvi', 'blr', 'SNPE', 'SNLE', 'SNRE'), --seed (any seed number), --budget (available simulation budget for each new state), --tasks (number of tasks considered/ moving window size for LMC-BNN, LMC-qEHVI and LMC-BLR methods). For instance:

python3 experiments/run_experiment.py --sim=lgssm --meth=bolfi --seed=0 --budget=2 --tasks=2

The results will be saved in the corresponding folders 'experiments/[sim]/[meth]-w[tasks]-s[budget]/'. To build plots and output the results, one should run 'collect_plots.py' script with specified arguments: --type ('inf' in case of evaluating state inference quality or 'traj' in case of evaluating the generated trajectories), --tasks (the number of tasks used by the methods). For example:

python3 experiments/collect_results.py --type=inf --tasks=2

The plots with experiment results will be stored in 'experiments/plots'.

Implementing custom simulators

The simulators for all experiments can be found in elfi/examples. Example implementations used in the paper are found in gaze_selection.py, umap_tasks.py, LGSSM.py (LG), dynamic_toy_model.py (NN), and stochastic_volatility.py (SV). To create a new SSM, implement a new class that inherits from elfi.DynamicProcess with custom generating function for observations, create_model(), and update_dynamic().

The code for all methods can be found in 'elfi/methods/dynamic_parameter_inference.py' and 'elfi/methods/bo/mogp.py'.

Citation


Owner
Alex Aushev
Alex Aushev
Tensorflow 2.x implementation of Vision-Transformer model

Vision Transformer Unofficial Tensorflow 2.x implementation of the Transformer based Image Classification model proposed by the paper AN IMAGE IS WORT

Soumik Rakshit 16 Jul 20, 2022
Edge-aware Guidance Fusion Network for RGB-Thermal Scene Parsing

EGFNet Edge-aware Guidance Fusion Network for RGB-Thermal Scene Parsing Dataset and Results Test maps: 百度网盘 提取码:zust Citation @ARTICLE{ author={Zhou,

ShaohuaDong 10 Dec 08, 2022
Boostcamp CV Serving For Python

Boostcamp-CV-Serving Prerequisites MySQL GCP Cloud Storage GCP key file Sentry Streamlit Cloud Secrets: .streamlit/secrets.toml #DO NOT SHARE THIS I

Jungwon Seo 19 Feb 22, 2022
For medical image segmentation

LeViT_UNet For medical image segmentation Our model is based on LeViT (https://github.com/facebookresearch/LeViT). You'd better gitclone its codes. Th

13 Dec 24, 2022
Code for "Modeling Indirect Illumination for Inverse Rendering", CVPR 2022

Modeling Indirect Illumination for Inverse Rendering Project Page | Paper | Data Preparation Set up the python environment conda create -n invrender p

ZJU3DV 116 Jan 03, 2023
A highly modular PyTorch framework with a focus on Neural Architecture Search (NAS).

UniNAS A highly modular PyTorch framework with a focus on Neural Architecture Search (NAS). under development (which happens mostly on our internal Gi

Cognitive Systems Research Group 19 Nov 23, 2022
Official Pytorch implementation of Scene Representation Networks: Continuous 3D-Structure-Aware Neural Scene Representations

Scene Representation Networks This is the official implementation of the NeurIPS submission "Scene Representation Networks: Continuous 3D-Structure-Aw

Vincent Sitzmann 365 Jan 06, 2023
Code for ICCV 2021 paper: ARAPReg: An As-Rigid-As Possible Regularization Loss for Learning Deformable Shape Generators..

ARAPReg Code for ICCV 2021 paper: ARAPReg: An As-Rigid-As Possible Regularization Loss for Learning Deformable Shape Generators.. Installation The cod

Bo Sun 132 Nov 28, 2022
Face Mask Detection is a project to determine whether someone is wearing mask or not, using deep neural network.

face-mask-detection Face Mask Detection is a project to determine whether someone is wearing mask or not, using deep neural network. It contains 3 scr

amirsalar 13 Jan 18, 2022
Learning Multiresolution Matrix Factorization and its Wavelet Networks on Graphs

Project Learning Multiresolution Matrix Factorization and its Wavelet Networks on Graphs, https://arxiv.org/pdf/2111.01940.pdf. Authors Truong Son Hy

5 Jun 28, 2022
Detecting and Tracking Small and Dense Moving Objects in Satellite Videos: A Benchmark

This dataset is a large-scale dataset for moving object detection and tracking in satellite videos, which consists of 40 satellite videos captured by Jilin-1 satellite platforms.

Qingyong 87 Dec 22, 2022
Manim is an engine for precise programmatic animations, designed for creating explanatory math videos

Manim is an engine for precise programmatic animations, designed for creating explanatory math videos. Note, there are two versions of manim. This rep

Grant Sanderson 49k Jan 09, 2023
TabNet for fastai

TabNet for fastai This is an adaptation of TabNet (Attention-based network for tabular data) for fastai (=2.0) library. The original paper https://ar

Mikhail Grankin 116 Oct 21, 2022
Code for "Layered Neural Rendering for Retiming People in Video."

Layered Neural Rendering in PyTorch This repository contains training code for the examples in the SIGGRAPH Asia 2020 paper "Layered Neural Rendering

Google 154 Dec 16, 2022
Benchmarks for Model-Based Optimization

Design-Bench Design-Bench is a benchmarking framework for solving automatic design problems that involve choosing an input that maximizes a black-box

Brandon Trabucco 43 Dec 20, 2022
Code for TIP 2017 paper --- Illumination Decomposition for Photograph with Multiple Light Sources.

Illumination_Decomposition Code for TIP 2017 paper --- Illumination Decomposition for Photograph with Multiple Light Sources. This code implements the

QAY 7 Nov 15, 2020
Laplace Redux -- Effortless Bayesian Deep Learning

Laplace Redux - Effortless Bayesian Deep Learning This repository contains the code to run the experiments for the paper Laplace Redux - Effortless Ba

Runa Eschenhagen 28 Dec 07, 2022
Convnext-tf - Unofficial tensorflow keras implementation of ConvNeXt

ConvNeXt Tensorflow This is unofficial tensorflow keras implementation of ConvNe

29 Oct 06, 2022
An atmospheric growth and evolution model based on the EVo degassing model and FastChem 2.0

EVolve Linking planetary mantles to atmospheric chemistry through volcanism using EVo and FastChem. Overview EVolve is a linked mantle degassing and a

Pip Liggins 2 Jan 17, 2022
Improving Machine Translation Systems via Isotopic Replacement

CAT (Improving Machine Translation Systems via Isotopic Replacement) Machine translation plays an essential role in people’s daily international commu

Zeyu Sun 10 Nov 30, 2022