Handbook of Probabilistic Models (PDF) thoroughly analyzes the application of advanced probabilistic models in standard engineering fields. In this extensive handbook, scientists, specialists, and researchers will discover comprehensive applications of the proposed approaches, descriptions of technical principles, and the particular clinical methods required to resolve the issue. This ebook offers an interdisciplinary technique that produces sophisticated probabilistic models for engineering fields, varying from standard fields of civil engineering and mechanical engineering electrical, earth sciences, to electronic devices, farming, environment, mathematical sciences, water resource, and computer technology. Specific subjects covered consist of minimax likelihood device regression, significance vector device, stochastic limited aspect approach, Monte Carlo simulations, random matrix, logistic regression, Kalman filter, stochastic optimization, optimum probability, Gaussian procedure regression, Bayesian upgrade, Bayesian reasoning, copula-analytical models, kriging, and more.
- Applies probabilistic modeling to emerging locations in engineering
- Explains the application of advanced probabilistic models incorporating multidisciplinary research study
- Provides an interdisciplinary technique to probabilistic models and their applications, therefore fixing a large range of useful issues
NOTE: This only consists of the ebook Handbook of Probabilistic Models in PDF.
Reviews
There are no reviews yet.