The generative capacity of probabilistic splicing systems

The concept of probabilistic splicing system was introduced as a model for stochastic processes using DNA computing techniques. In this paper we introduce splicing systems endowed with different continuous and discrete probabilistic distributions and call them as probabilistic splicing systems. We s...

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Main Authors: Selvarajoo, Mathuri, Turaev, Sherzod, Wan, Heng Fong, Sarmin, Nor Haniza
Format: Article
Published: Natural Sciences Publishing Co. 2015
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Online Access:http://eprints.utm.my/id/eprint/58939/
http://www.naturalspublishing.com/files/published/3f38bdgky76695.pdf
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Institution: Universiti Teknologi Malaysia
id my.utm.58939
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spelling my.utm.589392021-08-03T07:14:09Z http://eprints.utm.my/id/eprint/58939/ The generative capacity of probabilistic splicing systems Selvarajoo, Mathuri Turaev, Sherzod Wan, Heng Fong Sarmin, Nor Haniza QA Mathematics The concept of probabilistic splicing system was introduced as a model for stochastic processes using DNA computing techniques. In this paper we introduce splicing systems endowed with different continuous and discrete probabilistic distributions and call them as probabilistic splicing systems. We show that any continuous distribution does not increase the generative capacity of the probabilistic splicing systems with finite components, meanwhile, some discrete distributions increase their generative capacity up to context-sensitive languages. Finally, we associate certain thresholds with probabilistic splicing systems and this increases the computational power of splicing systems with finite components. Natural Sciences Publishing Co. 2015 Article PeerReviewed Selvarajoo, Mathuri and Turaev, Sherzod and Wan, Heng Fong and Sarmin, Nor Haniza (2015) The generative capacity of probabilistic splicing systems. Applied Mathematics and Information Science, 9 (3). pp. 1191-1198. ISSN 1935-0090 http://www.naturalspublishing.com/files/published/3f38bdgky76695.pdf
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic QA Mathematics
spellingShingle QA Mathematics
Selvarajoo, Mathuri
Turaev, Sherzod
Wan, Heng Fong
Sarmin, Nor Haniza
The generative capacity of probabilistic splicing systems
description The concept of probabilistic splicing system was introduced as a model for stochastic processes using DNA computing techniques. In this paper we introduce splicing systems endowed with different continuous and discrete probabilistic distributions and call them as probabilistic splicing systems. We show that any continuous distribution does not increase the generative capacity of the probabilistic splicing systems with finite components, meanwhile, some discrete distributions increase their generative capacity up to context-sensitive languages. Finally, we associate certain thresholds with probabilistic splicing systems and this increases the computational power of splicing systems with finite components.
format Article
author Selvarajoo, Mathuri
Turaev, Sherzod
Wan, Heng Fong
Sarmin, Nor Haniza
author_facet Selvarajoo, Mathuri
Turaev, Sherzod
Wan, Heng Fong
Sarmin, Nor Haniza
author_sort Selvarajoo, Mathuri
title The generative capacity of probabilistic splicing systems
title_short The generative capacity of probabilistic splicing systems
title_full The generative capacity of probabilistic splicing systems
title_fullStr The generative capacity of probabilistic splicing systems
title_full_unstemmed The generative capacity of probabilistic splicing systems
title_sort generative capacity of probabilistic splicing systems
publisher Natural Sciences Publishing Co.
publishDate 2015
url http://eprints.utm.my/id/eprint/58939/
http://www.naturalspublishing.com/files/published/3f38bdgky76695.pdf
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