Parameter learning is an important aspect of learning in Bayesian networks. Although the maximum likelihood algorithm is often effective, it suffers from overfitting when there is insufficient data. To address this, prior distributions of model parameters are often imposed. When training a Bayesian network, the parameters of the network are optimized to fit the data. However, imposing prior distributions can reduce the fitness between parameters and data. Therefore, a trade-off is needed between fitting and overfitting. In this study, a new algorithm, named MiniMax Fitness (MMF) is developed to address this problem. The method includes three main steps. First, the maximum a posterior estimation that combines data and prior distribution is d...
Learning accurate classifiers from preclassified data is a very active research topic in machine lea...
We propose an efficient family of algorithms to learn the parameters of a Bayesian network from inco...
The task of learning models for many real-world problems requires incorporating domain knowledge in...
Parameter learning is an important aspect of learning in Bayesian networks. Although the maximum lik...
To improve the learning accuracy of the parameters in a Bayesian network from a small data set, doma...
One of the essential problems on Bayesian networks (BNs) is parameter learning. When purely data-dri...
This paper addresses the estimation of parameters of a Bayesian network from incomplete data. The ta...
AbstractWe consider the problem of learning Bayesian network models in a non-informative setting, wh...
Small data sets make the statistical information in Bayesian network parameter learning inaccurate, ...
\u3cp\u3eThis paper describes a new approach to unify constraints on parameters with training data t...
PhDOne of the hardest challenges in building a realistic Bayesian network (BN) model is to construc...
Purely data-driven methods often fail to learn accurate conditional probability table (CPT) paramete...
Bayesian networks (BNs) are representative causal models and are expressed as directedacyclic graphs...
\u3cp\u3eThis chapter addresses the problem of estimating the parameters of a Bayesian network from ...
Abstract. Lack of relevant data is a major challenge for learning Bayesi-an networks (BNs) in real-w...
Learning accurate classifiers from preclassified data is a very active research topic in machine lea...
We propose an efficient family of algorithms to learn the parameters of a Bayesian network from inco...
The task of learning models for many real-world problems requires incorporating domain knowledge in...
Parameter learning is an important aspect of learning in Bayesian networks. Although the maximum lik...
To improve the learning accuracy of the parameters in a Bayesian network from a small data set, doma...
One of the essential problems on Bayesian networks (BNs) is parameter learning. When purely data-dri...
This paper addresses the estimation of parameters of a Bayesian network from incomplete data. The ta...
AbstractWe consider the problem of learning Bayesian network models in a non-informative setting, wh...
Small data sets make the statistical information in Bayesian network parameter learning inaccurate, ...
\u3cp\u3eThis paper describes a new approach to unify constraints on parameters with training data t...
PhDOne of the hardest challenges in building a realistic Bayesian network (BN) model is to construc...
Purely data-driven methods often fail to learn accurate conditional probability table (CPT) paramete...
Bayesian networks (BNs) are representative causal models and are expressed as directedacyclic graphs...
\u3cp\u3eThis chapter addresses the problem of estimating the parameters of a Bayesian network from ...
Abstract. Lack of relevant data is a major challenge for learning Bayesi-an networks (BNs) in real-w...
Learning accurate classifiers from preclassified data is a very active research topic in machine lea...
We propose an efficient family of algorithms to learn the parameters of a Bayesian network from inco...
The task of learning models for many real-world problems requires incorporating domain knowledge in...