Python implementation of the Learning Time-Series Shapelets method, that learns a shapelet-based time-series classifier with gradient descent.

Overview

shaplets

Python implementation of the Learning Time-Series Shapelets method by Josif Grabocka et al., that learns a shapelet-based time-series classifier with gradient descent.

This implementation views the model as a layered graph, where each layer implements a forward, backword and parameters update methods (see below diagram). This abstraction simplifies thinking about the algorithm and implementing it. Network diagram

Differences from the paper

  • This implmenetation employs two (LinearLayer + SigmoidLayer) pairs instead of one (LinearLayer + SigmoidLayer) pair as in the paper (and shown in above diagram). This (using two pairs) has yielded improved results on some datasets. To have a similar setup as in the paper, simply update shapelets_lts/classification/shapelet_models.py:LtsShapeletClassifier._init_network().
  • The loss in this implementation is an updated version of the one in the paper to allow training a single model for all the classes in the dataset (rather than one model/class). The impact on performance was not analysed. For details check shapelets_lts/network/cross_entropy_loss_layer.py

Installation

git clone [email protected]:mohaseeb/shaplets-python.git
cd shaplets-python
pip install .
# or, for dev
# pip install .[dev]

Usage

from shapelets_lts.classification import LtsShapeletClassifier

# create an LtsShapeletClassifier instance
classifier = LtsShapeletClassifier(
    K=20,
    R=3,
    L_min=30,
    epocs=50,
    lamda=0.01,
    eta=0.01,
    shapelet_initialization='segments_centroids',
    plot_loss=True
)

# train the classifier. 
# train_data.shape -> (# train samples X time-series length) 
# train_label.shape -> (# train samples)
classifier.fit(train_data, train_label, plot_loss=True)

# evaluate on test data. 
# test_data.shape -> (# test samples X time-series length)
prediction = classifier.predict(test_data)

# retrieve the learnt shapelets
shapelets = classifier.get_shapelets()


# and plot sample shapelets
from shapelets_lts.util import plot_sample_shapelets
plot_sample_shapelets(shapelets=shapelets, sample_size=36)

Also have a look at example.py. For a stable training, the samples might need to be scaled.

Example plot from plot_sample_shapelets. sample_shapelets

Owner
Mohamed Haseeb
Mohamed Haseeb
Whole-day timezone comparison

Timezone Converter Compare a full day of your local timezone with foreign ones $ timezone-converter tijuana --zone $ timezone-converter tijuana new_yo

Iago Alonso 12 Nov 24, 2022
AIST++ API This repo contains starter code for using the AIST++ dataset.

Explainability for Vision Transformers (in PyTorch) This repository implements methods for explainability in Vision Transformers

Google 260 Dec 30, 2022
Architecture example simulator

SCADA architecture Example of a SCADA-like console application, used to serve as a minimal example of a standard architecture of an IIoT system. Insta

1 Nov 06, 2021
Flow control is the order in which statements or blocks of code are executed at runtime based on a condition. Learn Conditional statements, Iterative statements, and Transfer statements

03_Python_Flow_Control Introduction 👋 The control flow statements are an essential part of the Python programming language. A control flow statement

Milaan Parmar / Милан пармар / _米兰 帕尔马 209 Oct 31, 2022
Create standalone, installable R Shiny apps using Electron

WARNING This is still very much a work in progress and nothing can be assumed stable in any way Temp notes: Two types of created installer, based on w

Chase Clark 5 Dec 24, 2021
A set of simple functions to upload and fetch pastes on paste.uploadgram.me

pastegram-py A set of simple functions to upload and fetch pastes on paste.uploadgram.me. API Documentation Methods upload_paste(contents: bytes, file

Uploadgram 3 Sep 13, 2022
Simulation simplifiée du fonctionnement du protocole RIP

ProjetRIPlay v2 Simulation simplifiée du fonctionnement du protocole RIP par Eric Buonocore le 18/01/2022 Sur la base de l'exercice 5 du sujet zéro du

Eric Buonocore 2 Feb 15, 2022
Ant Colony Optimization for Traveling Salesman Problem

tsp-aco Ant Colony Optimization for Traveling Salesman Problem Dependencies Python 3.8 tqdm numpy matplotlib To run the solver run main.py from the p

Baha Eren YALDIZ 4 Feb 03, 2022
Repository voor verhalen over de woningbouw-opgave in Nederland

Analyse plancapaciteit woningen In deze notebook zetten we cijfers op een rij om de woningbouwplannen van Nederlandse gemeenten in kaart te kunnen bre

Follow the Money 10 Jun 30, 2022
Remote execution of a simple function on the server

FunFetch Remote execution of a simple function on the server All types of Python support objects.

Decave 4 Jun 30, 2022
Search and Find Jobs in Ethiopia

✨ EthioJobs ✨ Search and Find Jobs in Ethiopia Easy start critical warning Use pycharm No vscode No sublime No Vim No nothing when you want to use

Abdimk 12 Nov 09, 2022
Python Service for MISP Feed Management

Python Service for MISP Feed Management This set of scripts is designed to offer better reliability and more control over the fetching of feeds into M

Chris 7 Aug 24, 2022
MiniJVM is simple java virtual machine written by python language, it can load class file from file system and run it.

MiniJVM MiniJVM是一款使用python编写的简易JVM,能够从本地加载class文件并且执行绝大多数指令。 支持的功能 1.从本地磁盘加载class并解析 2.支持绝大多数指令集的执行 3.支持虚拟机内存分区以及对象的创建 4.支持方法的调用和参数传递 5.支持静态代码块的初始化 不支

keguoyu 60 Apr 01, 2022
1. 네이버 카페 댓글을 빨리 다는 기능

naver_autoprogram 기능 설명 네이버 카페 댓글을 빨리 다는 기능 네이버 카페 자동 출석 체크 기능 동작 방식 카페 댓글 기능 기본 동작은 주기적인 스케쥴 동작으로 해당 카페 ID 와 특정 API 주소로 대상이 새글을 작성했는지 체크. 해당 대상이 새글 등

1 Dec 22, 2021
📦 A Human's Ultimate Guide to setup.py.

📦 setup.py (for humans) This repo exists to provide an example setup.py file, that can be used to bootstrap your next Python project. It includes som

Navdeep Gill 5k Jan 04, 2023
DC619/DC858 Mainframe Environment/Lab

DC619 Training LPAR The file DC619 - Mainframe Overflows Hands On.pdf contains the labs and walks through how to perform them. Use docker You can use

Soldier of FORTRAN 9 Jun 27, 2022
Install Firefox from Mozilla.org easily, complete with .desktop file creation.

firefox-installer Install Firefox from Mozilla.org easily, complete with .desktop file creation. Dependencies Python 3 Python LXML Debian/Ubuntu: sudo

rany 7 Nov 04, 2022
This repository provides a set of easy to understand and tested Python samples for using Acronis Cyber Platform API.

Base Acronis Cyber Platform API operations with Python !!! info Copyright © 2019-2021 Acronis International GmbH. This is distributed under MIT licens

Acronis International GmbH 3 Aug 11, 2022
This repository contains each day of Advent of Code 2021 that I've done.

Advent of Code - 2021 I will use this repository as my Advent of Code1 (AoC) repo for the 2021 challenge. I'm changing how I am tackling the problems

Brett Chapin 2 Jan 12, 2022
Exploiting Linksys WRT54G using a vulnerability I found.

Exploiting Linksys WRT54G Exploit # Install the requirements. pip install -r requirements.txt ROUTER_HOST=192.169.1.1 ROUTER_USERNAME=admin ROUTER_P

Elon Gliksberg 31 May 29, 2022