Response of Lyapunov exponents to diffusion state of biological networks
The topologies of protein-protein interaction networks are uncertain and noisy. The network topology determines the reliability of computational knowledge acquired from noisy networks and can impose the deterministic and non-deterministic character of the resulting data. In this study, we analyze th...
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doaj-a0a5e9d8f6a84e3c8be4532dda5c6cf92021-09-06T19:41:54ZengSciendoInternational Journal of Applied Mathematics and Computer Science2083-84922020-12-0130468970210.34768/amcs-2020-0051amcs-2020-0051Response of Lyapunov exponents to diffusion state of biological networksAltuntas Volkan0Gok Murat1Kocal Osman Hilmi2Department of Information Technologies, Bursa Technical University, Bursa, 16310, TurkeyDepartment of Computer Engineering, Yalova University, Yalova, 77200, TurkeyDepartment of Computer Engineering, Yalova University, Yalova, 77200, TurkeyThe topologies of protein-protein interaction networks are uncertain and noisy. The network topology determines the reliability of computational knowledge acquired from noisy networks and can impose the deterministic and non-deterministic character of the resulting data. In this study, we analyze the effect of the network topology on Lyapunov exponents and its relationship with network stability. We define the methodology to convert the network data into signal data and obtain the Lyapunov exponents for a variety of networks. We then compare the Lyapunov exponent response and the stability results. Our technique can be applied to all types of network topologies as demonstrated with our experiments, conducted on both synthetic and real networks from public databases. For the first time, this article presents findings where Lyapunov exponents are evaluated under topological mutations and used for network analysis. Experimental results show that Lyapunov exponents have a strong correlation with network stability and both are correlatively affected by the network model. Hence we develop a novel coefficient, termed LEC, to measure the robustness of biological networks. LEC can be applied to real or synthetic biological networks rapidly. Results are a striking indication that the Lyapunov exponent is a potential candidate measure for network analysis.https://doi.org/10.34768/amcs-2020-0051synthetic networksbiological networksdiffusionstabilitylyapunov exponents |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Altuntas Volkan Gok Murat Kocal Osman Hilmi |
spellingShingle |
Altuntas Volkan Gok Murat Kocal Osman Hilmi Response of Lyapunov exponents to diffusion state of biological networks International Journal of Applied Mathematics and Computer Science synthetic networks biological networks diffusion stability lyapunov exponents |
author_facet |
Altuntas Volkan Gok Murat Kocal Osman Hilmi |
author_sort |
Altuntas Volkan |
title |
Response of Lyapunov exponents to diffusion state of biological networks |
title_short |
Response of Lyapunov exponents to diffusion state of biological networks |
title_full |
Response of Lyapunov exponents to diffusion state of biological networks |
title_fullStr |
Response of Lyapunov exponents to diffusion state of biological networks |
title_full_unstemmed |
Response of Lyapunov exponents to diffusion state of biological networks |
title_sort |
response of lyapunov exponents to diffusion state of biological networks |
publisher |
Sciendo |
series |
International Journal of Applied Mathematics and Computer Science |
issn |
2083-8492 |
publishDate |
2020-12-01 |
description |
The topologies of protein-protein interaction networks are uncertain and noisy. The network topology determines the reliability of computational knowledge acquired from noisy networks and can impose the deterministic and non-deterministic character of the resulting data. In this study, we analyze the effect of the network topology on Lyapunov exponents and its relationship with network stability. We define the methodology to convert the network data into signal data and obtain the Lyapunov exponents for a variety of networks. We then compare the Lyapunov exponent response and the stability results. Our technique can be applied to all types of network topologies as demonstrated with our experiments, conducted on both synthetic and real networks from public databases. For the first time, this article presents findings where Lyapunov exponents are evaluated under topological mutations and used for network analysis. Experimental results show that Lyapunov exponents have a strong correlation with network stability and both are correlatively affected by the network model. Hence we develop a novel coefficient, termed LEC, to measure the robustness of biological networks. LEC can be applied to real or synthetic biological networks rapidly. Results are a striking indication that the Lyapunov exponent is a potential candidate measure for network analysis. |
topic |
synthetic networks biological networks diffusion stability lyapunov exponents |
url |
https://doi.org/10.34768/amcs-2020-0051 |
work_keys_str_mv |
AT altuntasvolkan responseoflyapunovexponentstodiffusionstateofbiologicalnetworks AT gokmurat responseoflyapunovexponentstodiffusionstateofbiologicalnetworks AT kocalosmanhilmi responseoflyapunovexponentstodiffusionstateofbiologicalnetworks |
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1717765152436125696 |