automatise

Automatise: A Multiple Aspect Trajectory Data Mining Tool Library


Keywords
data-science, machine-learning, data-mining, trajectory, multiple-trajectory, trajectory-classification, movelet, movelet-visualization
Licenses
CNRI-Python-GPL-Compatible/Sendmail
Install
pip install automatise==0.1b21

Documentation

Automatise: Multiple Aspect Trajectory Data Mining Tool Library


Welcome to Automatise Framework for Multiple Aspect Trajectory Analysis.

The present application offers a tool, called AutoMATise, to support the user in the classification task of multiple aspect trajectories, specifically for extracting and visualizing the movelets, the parts of the trajectory that better discriminate a class. The AutoMATise integrates into a unique platform the fragmented approaches available for multiple aspects trajectories and in general for multidimensional sequence classification into a unique web-based and python library system. Offers both movelets visualization and a complete configuration of classification experimental settings.

  • Analysis: Multiple Aspect Trajectory Analysis Tool;
  • Methods: Methods for trajectory classification and movelet extraction;
  • Datasets: Datasets descriptions and files;
  • Experiments: Experiments on trajectory datasets and method rankings;
  • Publications: Multiple Aspect Trajectory Analysis related publications.

To use Automatise as a python library, find examples in this sample Jupyter Notebbok: Automatise_Sample_Code.ipynb

Install:

pip install automatise

Reference:

Portela, Tarlis Tortelli; Bogorny, Vania; Bernasconi, Anna; Renso, Chiara. AutoMATitse: Multiple Aspect Trajectory Data Mining Tool Library. 2022. 23rd IEEE International Conference on Mobile Data Management (MDM), 2022, pp. xxx-xxx, doi: xxx.