Bayesian belief networks are shown to be natural and efficient knowledge representation tools for modelling and manipulating uncertainties in developing expert systems. They provide a basis for probabilistic inference, to calculate the changes in probabilistic belief as new evidence is obtained. However, their use in real problem domains is hampered by the difficulties facing the construction of such belief networks, particularly in domains where neither sufficient data nor human expertise is available. In this paper, we will show that this problem can be circumvented by exploiting knowledge from existing mathematical models. An application of belief networks to assess the impact of climate change on potato production is used as an illustra...
<div><p>Land-use and land-cover change modeling helps us to understand the driving factors and impac...
Belief networks, also called Bayesian networks or probabilistic causal networks, were developed in t...
In mountain forests of Central Europe, storm and snow breakage as well as bark beetles are the preva...
Bayesian belief networks are shown to be natural and efficient knowledge representation tools for mo...
Future climate change may bring risk or benefit to crop production. In this paper, the possible impa...
Past accumulated data supported by the predictions of climate models suggest that our world is getti...
Efficiencies in farming practice in many parts of South East Asia can make substantial, positive dif...
Probabilistic thinking can often be unintuitive. This is the case even for simple problems, let alon...
Bayesian belief networks are a popular tool for reasoning under uncertainty. Certain advantages make...
Belief networks, also referred to as Bayesian networks, are a form of artificial intelligence that i...
In all forecasts we find an element of uncertainty. Therefore, it is of paramount importance that an...
A sequential approach to combining two established modeling techniques (systems thinking and Bayesia...
International audienceSevere large-scale diseases in agricultural regions have caused significant ec...
Modeling farmers intensication decision requires a model that considers the dependencies between the...
AbstractA Bayesian belief network (BBN) was developed to assess preferred combinations of trees in l...
<div><p>Land-use and land-cover change modeling helps us to understand the driving factors and impac...
Belief networks, also called Bayesian networks or probabilistic causal networks, were developed in t...
In mountain forests of Central Europe, storm and snow breakage as well as bark beetles are the preva...
Bayesian belief networks are shown to be natural and efficient knowledge representation tools for mo...
Future climate change may bring risk or benefit to crop production. In this paper, the possible impa...
Past accumulated data supported by the predictions of climate models suggest that our world is getti...
Efficiencies in farming practice in many parts of South East Asia can make substantial, positive dif...
Probabilistic thinking can often be unintuitive. This is the case even for simple problems, let alon...
Bayesian belief networks are a popular tool for reasoning under uncertainty. Certain advantages make...
Belief networks, also referred to as Bayesian networks, are a form of artificial intelligence that i...
In all forecasts we find an element of uncertainty. Therefore, it is of paramount importance that an...
A sequential approach to combining two established modeling techniques (systems thinking and Bayesia...
International audienceSevere large-scale diseases in agricultural regions have caused significant ec...
Modeling farmers intensication decision requires a model that considers the dependencies between the...
AbstractA Bayesian belief network (BBN) was developed to assess preferred combinations of trees in l...
<div><p>Land-use and land-cover change modeling helps us to understand the driving factors and impac...
Belief networks, also called Bayesian networks or probabilistic causal networks, were developed in t...
In mountain forests of Central Europe, storm and snow breakage as well as bark beetles are the preva...