Unsupervised Activity Discovery and Characterization From Event-Streams

07/04/2012
by   Rafay Hammid, et al.
0

We present a framework to discover and characterize different classes of everyday activities from event-streams. We begin by representing activities as bags of event n-grams. This allows us to analyze the global structural information of activities, using their local event statistics. We demonstrate how maximal cliques in an undirected edge-weighted graph of activities, can be used for activity-class discovery in an unsupervised manner. We show how modeling an activity as a variable length Markov process, can be used to discover recurrent event-motifs to characterize the discovered activity-classes. We present results over extensive data-sets, collected from multiple active environments, to show the competence and generalizability of our proposed framework.

READ FULL TEXT

page 2

page 5

page 6

research
11/03/2017

Discovering More Precise Process Models from Event Logs by Filtering Out Chaotic Activities

Process Discovery is concerned with the automatic generation of a proces...
research
12/06/2019

Upscaling human activity data: an ecological perspective

In recent years we have witnessed an explosion of data collected for dif...
research
03/19/2021

Discovering Redundant Activities in Event Logs for the Simplification of Process Models

Process mining acts as a valuable tool to analyse the behaviour of an or...
research
04/25/2017

Event Stream-Based Process Discovery using Abstract Representations

The aim of process discovery, originating from the area of process minin...
research
10/10/2016

Heuristic Approaches for Generating Local Process Models through Log Projections

Local Process Model (LPM) discovery is focused on the mining of a set of...
research
01/14/2022

A Novel Skeleton-Based Human Activity Discovery Technique Using Particle Swarm Optimization with Gaussian Mutation

Human activity discovery aims to distinguish the activities performed by...
research
08/17/2023

Online Transition-Based Feature Generation for Anomaly Detection in Concurrent Data Streams

In this paper, we introduce the transition-based feature generator (TFGe...

Please sign up or login with your details

Forgot password? Click here to reset