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But how can I compute all those probabilities for the input variables? How can I decide, with what probability the rock of a burned forest is permeable or impermeable? |
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Easy! You look at the source of your data and decide how reliable it is. Stassopoulou, Petrou and Kittler in a paper they published in the International Journal of Geographical Information Science, 1998, vol 12, no 1, pp 23-45, discussed in detail how to estimate the uncertainty in each input variable. |
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And how can I compute all those conditional probabilities? |
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That is the problem! You need lots and lots of training data to cover all possible combinations of states of conditions and effects. Stassopoulou and Petrou in a paper published in the International Journal of Pattern Recognition and Artificial Intelligence (Click here for an acrobat version of the paper), mapped such a probabilistic network on a neural network, in order to take advantage of the ability of a neural network to be trained. |
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So, let me understand: I construct a probabilistic network. I map it on to a neural network, that is I find the correspondence between the conditional probabilities used by the probabilistic network and the weights used by the neural network. Then I train the neural network using the training data that are available, which means I determine the values of the weights of the neural network. Then from the values of the weights I determine the values of the conditional probabilities of the probabilistic network, and then I use the probabilistic network to make decisions! |
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Exactly!! |
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