Motif Detection Inspired by Immune Memory (JORS)

05/31/2013
by   William Wilson, et al.
0

The search for patterns or motifs in data represents an area of key interest to many researchers. In this paper we present the Motif Tracking Algorithm, a novel immune inspired pattern identification tool that is able to identify variable length unknown motifs which repeat within time series data. The algorithm searches from a neutral perspective that is independent of the data being analysed and the underlying motifs. In this paper we test the flexibility of the motif tracking algorithm by applying it to the search for patterns in two industrial data sets. The algorithm is able to identify a population of meaningful motifs in both cases, and the value of these motifs is discussed.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/22/2010

Motif Detection Inspired by Immune Memory

The search for patterns or motifs in data represents an area of key inte...
research
06/08/2010

The Motif Tracking Algorithm

The search for patterns or motifs in data represents a problem area of k...
research
02/02/2010

Detecting Motifs in System Call Sequences

The search for patterns or motifs in data represents an area of key inte...
research
02/16/2021

Pattern Sampling for Shapelet-based Time Series Classification

Subsequence-based time series classification algorithms provide accurate...
research
07/25/2022

Benchmark time series data sets for PyTorch – the torchtime package

The development of models for Electronic Health Record data is an area o...
research
08/31/2020

VALMOD: A Suite for Easy and Exact Detection of Variable Length Motifs in Data Series

Data series motif discovery represents one of the most useful primitives...
research
12/19/2014

Simplified firefly algorithm for 2D image key-points search

In order to identify an object, human eyes firstly search the field of v...

Please sign up or login with your details

Forgot password? Click here to reset