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Cost-Sensitive Bayesian Network Learning Using Sampling (2014)
Book Chapter
Nashnush, E., & Vadera, S. (2014). Cost-Sensitive Bayesian Network Learning Using Sampling. In Recent Advances on Soft Computing and Data Mining (467-476). Springer. https://doi.org/10.1007/978-3-319-07692-8_44

A significant advance in recent years has been the development of cost-sensitive decision tree learners, recognising that real world classification problems need to take account of costs of misclassification and not just focus on accuracy. The litera... Read More about Cost-Sensitive Bayesian Network Learning Using Sampling.

A layered any time approach to sensor validation (1997)
Book Chapter
Ibarguengoyatia, P., Vadera, S., & Sucar, E. (1997). A layered any time approach to sensor validation. In Lecture Notes in AI. Springer

Sensors are the most usual source of information in many
automatic systems such as automatic control

These computerised systems utilise different models of the process being served which usually assume the value of the variables as a correct read... Read More about A layered any time approach to sensor validation.