Library for implementing reservoir computing models (echo state networks) for multivariate time series classification and clustering.

Overview

Framework overview

This library allows to quickly implement different architectures based on Reservoir Computing (the family of approaches popularized in machine learning by Echo State Networks) for classification or clustering of univariate/multivariate time series.

Several options are available to customize the RC model, by selecting different configurations for each module.

  1. The reservoir module specifies the reservoir configuration (e.g., bidirectional, leaky neurons, circle topology);
  2. The dimensionality reduction module (optionally) applies a dimensionality reduction on the produced sequence of the reservoir's states;
  3. The representation module defines how to represent the input time series from the sequence of reservoir's states;
  4. The readout module specifies the model to use to perform the final classification.

The representations obtained at step 3 can also be used to perform clustering.

This library also implements the novel reservoir model space as representation for the time series. Details on the methodology can be found in the original paper (Arix version here).

Required libraries

  • sklearn (tested on version 0.22.1)
  • scipy

The code has been tested on Python 3.7, but lower versions should work as well.

Quick execution

Run the script classification_example.py or clustering_example.py to perform a quick execution on a benchmark dataset of multivariate time series.

For the clustering example, check also the notebook here.

Configure the RC-model

The main class RC_model contained in modules.py permits to specify, train and test an RC-model. The RC-model is configured by passing to the constructor of the class RC_model a set of parameters. To get an idea, you can check classification_example.py or clustering_example.py where the parameters are specified through a dictionary (config).

The available configuration hyperparameters are listed in the following and, for the sake of clarity, are grouped according to which module of the architecture they refer to.

1. Reservoir:

  • n_drop - number of transient states to drop
  • bidir - use a bidirectional reservoir (True or False)
  • reservoir - precomputed reservoir (object of class Reservoir in reservoir.py; if None, the following hyperparameters must be specified:
    • n_internal_units = number of processing units in the reservoir
    • spectral_radius = largest eigenvalue of the reservoir matrix of connection weights (to guarantee the Echo State Property, set spectral_radius <= leak <= 1)
    • leak = amount of leakage in the reservoir state update (optional, None or 1.0 --> no leakage)
    • circ = if True, generate a determinisitc reservoir with circle topology where each connection has the same weight
    • connectivity = percentage of nonzero connection weights (ignored if circ = True)
    • input_scaling = scaling of the input connection weights (note that weights are randomly drawn from {-1,1})
    • noise_level = deviation of the Gaussian noise injected in the state update

2. Dimensionality reduction:

  • dimred_method - procedure for reducing the number of features in the sequence of reservoir states; possible options are: None (no dimensionality reduction), 'pca' (standard PCA) or 'tenpca' (tensorial PCA for multivariate time series data)
  • n_dim - number of resulting dimensions after the dimensionality reduction procedure

3. Representation:

  • mts_rep - type of multivariate time series representation. It can be 'last' (last state), 'mean' (mean of all states), 'output' (output model space), or 'reservoir' (reservoir model space)
  • w_ridge_embedding - regularization parameter of the ridge regression in the output model space and reservoir model space representation; ignored if mts_rep is None

4. Readout:

  • readout_type - type of readout used for classification. It can be 'lin' (ridge regression), 'mlp' (multilayer perceptron), 'svm' (support vector machine), or None. If None, the input representations will be stored in the .input_repr attribute: this is useful for clustering and visualization. Also, if None, the other Readout hyperparameters can be left unspecified.
  • w_ridge - regularization parameter of the ridge regression readout (only when readout_type is 'lin')
  • mlp_layout - list with the sizes of MLP layers, e.g. [20,20,10] defines a MLP with 3 layers of 20, 20 and 10 units respectively (only when readout_type is 'mlp')
  • batch_size - size of the mini batches used during training (only when readout_type is 'mlp')
  • num_epochs - number of iterations during the optimization (only when readout_type is 'mlp')
  • w_l2 = weight of the L2 regularization (only when readout_type is 'mlp')
  • learning_rate = learning rate in the gradient descent optimization (only when readout_type is 'mlp')
  • nonlinearity = type of activation function; it can be {'relu', 'tanh', 'logistic', 'identity'} (only when readout_type is 'mlp')
  • svm_gamma = bandwith of the RBF kernel (only when readout_type is 'svm')
  • svm_C = regularization for the SVM hyperplane (only when readout_type is 'svm')

Train and test the RC-model for classification

The training and test function requires in input training and test data, which must be provided as multidimensional NumPy arrays of shape [N,T,V], with:

  • N = number of samples
  • T = number of time steps in each sample
  • V = number of variables in each sample

Training and test labels (Y and Yte) must be provided in one-hot encoding format, i.e. a matrix [N,C], where C is the number of classes.

Training

RC_model.train(X, Y)

Inputs:

  • X, Y: training data and respective labels

Outputs:

  • tr_time: time (in seconds) used to train the classifier

Test

RC_module.test(Xte, Yte)

Inputs:

  • Xte, Yte: test data and respective labels

Outputs:

  • accuracy, F1 score: metrics achieved on the test data

Train the RC-model for clustering

As in the case of classification, the data must be provided as multidimensional NumPy arrays of shape [N,T,V]

Training

RC_model.train(X)

Inputs:

  • X: time series data

Outputs:

  • tr_time: time (in seconds) used to generate the representations

Additionally, the representations of the input data X are stored in the attribute RC_model.input_repr

Time series datasets

A collection of univariate and multivariate time series dataset is available for download here. The dataset are provided both in MATLAB and Python (Numpy) format. Original raw data come from UCI, UEA, and UCR public repositories.

Citation

Please, consider citing the original paper if you are using this library in your reasearch

@article{bianchi2020reservoir,
  title={Reservoir computing approaches for representation and classification of multivariate time series},
  author={Bianchi, Filippo Maria and Scardapane, Simone and L{\o}kse, Sigurd and Jenssen, Robert},
  journal={IEEE Transactions on Neural Networks and Learning Systems},
  year={2020},
  publisher={IEEE}
}

Tensorflow version

In the latest version of the repository there is no longer a dependency from Tensorflow, reducing the dependecies of this repository only to scipy and scikit-learn. The MLP readout is now based on the scikit-learn implementation that, however, does not support dropout and the two custom activation functions, Maxout and Kafnets. These functionalities are still available in the branch "Tensorflow". Checkout it to use the Tensorflow version of this repository.

License

The code is released under the MIT License. See the attached LICENSE file.

Owner
Filippo Bianchi
Filippo Bianchi
Code and data for the paper "Hearing What You Cannot See"

Hearing What You Cannot See: Acoustic Vehicle Detection Around Corners Public repository of the paper "Hearing What You Cannot See: Acoustic Vehicle D

TU Delft Intelligent Vehicles 26 Jul 13, 2022
LoveDA: A Remote Sensing Land-Cover Dataset for Domain Adaptive Semantic Segmentation (NeurIPS2021 Benchmark and Dataset Track)

LoveDA: A Remote Sensing Land-Cover Dataset for Domain Adaptive Semantic Segmentation by Junjue Wang, Zhuo Zheng, Ailong Ma, Xiaoyan Lu, and Yanfei Zh

Kingdrone 174 Dec 22, 2022
Image morphing without reference points by applying warp maps and optimizing over them.

Differentiable Morphing Image morphing without reference points by applying warp maps and optimizing over them. Differentiable Morphing is machine lea

Alex K 380 Dec 19, 2022
DI-HPC is an acceleration operator component for general algorithm modules in reinforcement learning algorithms

DI-HPC: Decision Intelligence - High Performance Computation DI-HPC is an acceleration operator component for general algorithm modules in reinforceme

OpenDILab 185 Dec 29, 2022
Enhancing Knowledge Tracing via Adversarial Training

Enhancing Knowledge Tracing via Adversarial Training This repository contains source code for the paper "Enhancing Knowledge Tracing via Adversarial T

Xiaopeng Guo 14 Oct 24, 2022
FPGA: Fast Patch-Free Global Learning Framework for Fully End-to-End Hyperspectral Image Classification

FPGA & FreeNet Fast Patch-Free Global Learning Framework for Fully End-to-End Hyperspectral Image Classification by Zhuo Zheng, Yanfei Zhong, Ailong M

Zhuo Zheng 92 Jan 03, 2023
This is the code for "HyperNeRF: A Higher-Dimensional Representation for Topologically Varying Neural Radiance Fields".

HyperNeRF: A Higher-Dimensional Representation for Topologically Varying Neural Radiance Fields This is the code for "HyperNeRF: A Higher-Dimensional

Google 702 Jan 02, 2023
๐Ÿฅ‡ LG-AI-Challenge 2022 1์œ„ ์†”๋ฃจ์…˜ ์ž…๋‹ˆ๋‹ค.

LG-AI-Challenge-for-Plant-Classification Dacon์—์„œ ์ง„ํ–‰๋œ ๋†์—… ํ™˜๊ฒฝ ๋ณ€ํ™”์— ๋”ฐ๋ฅธ ์ž‘๋ฌผ ๋ณ‘ํ•ด ์ง„๋‹จ AI ๊ฒฝ์ง„๋Œ€ํšŒ ์— ๋Œ€ํ•œ ์ฝ”๋“œ์ž…๋‹ˆ๋‹ค. (colab directory์— ์ฝ”๋“œ๊ฐ€ ์ž˜ ์ •๋ฆฌ ๋˜์–ด์žˆ์Šต๋‹ˆ๋‹ค.) Requirements python

siwooyong 10 Jun 30, 2022
Invariant Causal Prediction for Block MDPs

MISA Abstract Generalization across environments is critical to the successful application of reinforcement learning algorithms to real-world challeng

Meta Research 41 Sep 17, 2022
The official start-up code for paper "FFA-IR: Towards an Explainable and Reliable Medical Report Generation Benchmark."

FFA-IR The official start-up code for paper "FFA-IR: Towards an Explainable and Reliable Medical Report Generation Benchmark." The framework is inheri

Mingjie 28 Dec 16, 2022
A framework that allows people to write their own Rocket League bots.

YOU PROBABLY SHOULDN'T PULL THIS REPO Bot Makers Read This! If you just want to make a bot, you don't need to be here. Instead, start with one of thes

543 Dec 20, 2022
General Assembly Capstone: NBA Game Predictor

Project 6: Predicting NBA Games Problem Statement Can I predict the results of NBA games from the back-half of a season from the opening half of the s

Adam Muhammad Klesc 1 Jan 14, 2022
Jiminy Cricket Environment (NeurIPS 2021)

Jiminy Cricket This is the repository for "What Would Jiminy Cricket Do? Towards Agents That Behave Morally" by Dan Hendrycks*, Mantas Mazeika*, Andy

Dan Hendrycks 15 Aug 29, 2022
Real-Time High-Resolution Background Matting

Real-Time High-Resolution Background Matting Official repository for the paper Real-Time High-Resolution Background Matting. Our model requires captur

Peter Lin 6.1k Jan 03, 2023
Pseudo lidar - (CVPR 2019) Pseudo-LiDAR from Visual Depth Estimation: Bridging the Gap in 3D Object Detection for Autonomous Driving

Pseudo-LiDAR from Visual Depth Estimation: Bridging the Gap in 3D Object Detection for Autonomous Driving This paper has been accpeted by Conference o

Yan Wang 881 Dec 27, 2022
ใ€ŠRethinking Sptil Dimensions of Vision Trnsformersใ€‹(2021)

Rethinking Spatial Dimensions of Vision Transformers Byeongho Heo, Sangdoo Yun, Dongyoon Han, Sanghyuk Chun, Junsuk Choe, Seong Joon Oh | Paper NAVER

NAVER AI 224 Dec 27, 2022
Readings for "A Unified View of Relational Deep Learning for Polypharmacy Side Effect, Combination Therapy, and Drug-Drug Interaction Prediction."

Polypharmacy - DDI - Synergy Survey The Survey Paper This repository accompanies our survey paper A Unified View of Relational Deep Learning for Polyp

AstraZeneca 79 Jan 05, 2023
Classical OCR DCNN reproduction based on PaddlePaddle framework.

Paddle-SVHN Classical OCR DCNN reproduction based on PaddlePaddle framework. This project reproduces Multi-digit Number Recognition from Street View I

1 Nov 12, 2021
Introduction to Statistics and Basics of Mathematics for Data Science - The Hacker's Way

HackerMath for Machine Learning โ€œStudy hard what interests you the most in the most undisciplined, irreverent and original manner possible.โ€ โ€• Richard

Amit Kapoor 1.4k Dec 22, 2022
ViSER: Video-Specific Surface Embeddings for Articulated 3D Shape Reconstruction

ViSER: Video-Specific Surface Embeddings for Articulated 3D Shape Reconstruction. NeurIPS 2021.

Gengshan Yang 59 Nov 25, 2022