Title :
Similarity comparison and analysis of sequential data
Author :
Liu, James ; Goss, Simon ; Murray, Graeme
Author_Institution :
Aeronaut. Res. Lab., DSTO, Fishermens Bend, Vic., Australia
Abstract :
This paper discusses approaches to problems associated with the processing of experimental data for complex domains in such areas as the behavioural and social sciences. It explores computational techniques which are to be implemented to build tools bringing higher levels of computational intelligence to the analysis of coded event sequences. Approaches in which inherent redundancy, recurrency, or dependency in sequences may be exploited include pattern recognition, information theory based methods, and Petri nets. Experimental examples which illustrate the matching, alignment and identification of patterns in sequences are presented
Keywords :
behavioural sciences computing; data analysis; pattern recognition; social sciences computing; statistical analysis; Petri nets; behavioural sciences; coded event sequences; complex domains; dependency; experimental data; expert system development; information theory based methods; knowledge representation; pattern recognition; recurrency; redundancy; sequence analysis; sequential data; social sciences; Costs; DNA; Data analysis; Expert systems; Frequency estimation; Humans; Pattern analysis; Petri nets; Proteins; Sequences;
Conference_Titel :
Expert Systems for Development, 1994., Proceedings of International Conference on
Conference_Location :
Bangkok
Print_ISBN :
0-8186-5780-4
DOI :
10.1109/ICESD.1994.302292