Results 101 to 110 of about 6,464,053 (197)

GHSOM intrusion detection based on Dempster-Shafer theory

open access: yesTongxin xuebao, 2015
On the basis of incremental GHSOM,the GHSOM neural network intrusion detection based on the theory of evidence reasoning method was put forward.It can deal with the uncertainty caused by randomness and fuzziness,as well as can constantly narrowing ...
Jie SU   +4 more
doaj   +2 more sources

Relative accuracy of spatial predictive models for lynx Lynx canadensis derived using logistic regression-AIC, multiple criteria evaluation and Bayesian approaches

open access: yesCurrent Zoology, 2009
We compared probability surfaces derived using one set of environmental variables in three Geographic Information Systems (GIS)-based approaches: logistic regression and Akaike’s Information Criterion (AIC), Multiple Criteria Evaluation (MCE), and ...
Shelley M. ALEXANDER, Hejun KANG
doaj  

Un procedimiento para elaborar mapas de riesgos naturales aplicado a Honduras

open access: yesAnales de Geografía de la Universidad Complutense, 2003
A method based on the theory of Evidence of Dempster-Shafer to build risk maps is proposed. Procedures to create maps of flooding exposition and to measure territorial vulnerability are explained.
Ismael Ahamdanech Zarco   +6 more
doaj  

Estimation of Vessel Collision Risk Under Uncertainty Using Interval Type-2 Fuzzy Inference Systems and Dempster–Shafer Evidence Theory

open access: yesJournal of Marine Science and Engineering
This study proposes a collision-risk assessment framework that combines an interval type-2 fuzzy inference system with Dempster–Shafer evidence theory to more reliably evaluate vessel collision risk under the uncertainty inherent in AIS-based marine ...
Jinwan Park
doaj   +1 more source

A novel approach to emotion recognition using local subset feature selection and modified Dempster-Shafer theory. [PDF]

open access: yesBehav Brain Funct, 2018
Zangeneh Soroush M   +3 more
europepmc   +1 more source

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