A New Marine Disaster Assessment Model Combining Bayesian Network with Information Diffusion

There are two challenges in the comprehensive marine hazard assessment. The influencing mechanism of marine disaster is uncertain and disaster data are sparse. Aiming at the uncertain knowledge and small sample in assessment modeling, we combine the information diffusion algorithm and Bayesian network to propose a novel assessment model. The information diffusion algorithm is adopted to expand associated samples between disaster losses and environmental conditions. Then the expanded data sets are used to build the BN-based assessment model through structural learning, parameter learning and probabilistic reasoning. The proposed model is applied to the hazard assessment of marine disasters in Shanghai. Experimental comparison results show that it is capable of dealing with uncertainty effectively and achieving more accuracy risk assessment under the small sample condition.

[1]  David Maxwell Chickering,et al.  Large-Sample Learning of Bayesian Networks is NP-Hard , 2002, J. Mach. Learn. Res..

[2]  Hajo Eicken,et al.  Sea Ice: Hazards, Risks, and Implications for Disasters , 2015 .

[3]  J. D. Villasenor,et al.  Generalized versions of turbo decoding in the framework of Bayesian networks and Pearl's belief propagation algorithm , 1998, ICC '98. 1998 IEEE International Conference on Communications. Conference Record. Affiliated with SUPERCOMM'98 (Cat. No.98CH36220).

[4]  Rafael Rumí,et al.  Hybrid Bayesian network classifiers: Application to species distribution models , 2010, Environ. Model. Softw..

[5]  B. Efron Bootstrap Methods: Another Look at the Jackknife , 1979 .

[6]  Jean-Marie M. Dubois Remote Sensing for Hazard Monitoring and Disaster Assessment: Marine and Coastal Applications in the Mediterranean Region edited by Eric C. Barrett, Krystyna A. Brown, and Anton Micallef , 1994 .

[7]  Ming Li,et al.  Causality-Based Attribute Weighting via Information Flow and Genetic Algorithm for Naive Bayes Classifier , 2019, IEEE Access.

[8]  Judea Pearl,et al.  Bayesian Networks , 1998, Encyclopedia of Social Network Analysis and Mining. 2nd Ed..

[9]  Ming Li,et al.  Machine Learning Incorporated With Causal Analysis for Short-Term Prediction of Sea Ice , 2021, Frontiers in Marine Science.

[10]  Ren Zhang,et al.  A new information diffusion modelling technique based on vibrating string equation and its application in natural disaster risk assessment , 2015, Int. J. Gen. Syst..

[11]  Ren Zhang,et al.  Risk Assessment of Marine Environments Along the South China Sea and North Indian Ocean on the Basis of a Weighted Bayesian Network , 2021, Journal of Ocean University of China.

[12]  Ren Zhang,et al.  Improved Bayesian Network-Based Risk Model and Its Application in Disaster Risk Assessment , 2018, International Journal of Disaster Risk Science.

[13]  Ming Li,et al.  Probabilistic Prediction of Significant Wave Height Using Dynamic Bayesian Network and Information Flow , 2020, Water.

[14]  Ren Zhang,et al.  A New Ensemble Learning Algorithm Combined with Causal Analysis for Bayesian Network Structural Learning , 2020, Symmetry.