# Design of Bayesian networks: Understanding the difference between “States” and “Nodes”

I'm designing a small Bayesian Network using the program "Hugin Lite". The problem is that I have difficulty understanding the difference between "Nodes"(visual circles) and "States"(witch are the "fields" of a node).

I will write an example where it is clear,and another which I can't understand.

The example I understand:
There are two women (W1 and W2) and one men (M).
M get a child with W1. Child's name is: C1
Then M get a child with W2. Child's name is: C2

The resulting network is:

The four possibles STATES of every Node (W1,W2,M,C1,C2) are:

• AA: the person has two genes "A"
• Aa/aA: the person has one gene "A" and one gene "a"
• aa: the person has two genes "a"

Now the example that I can't understand:

The data given:

• Total(authorized or not) of payments while a person is in a foreign country (travelling): 5% (of course the 95% of transactions are transactions made in the home country)
• NOT AUTHORIZED payments while TRAVELLING: 1%
• NOT AUTHORIZED payments while in HOME COUNTRY: 0,2%
• NOT AUTHORIZED payments while in HOME COUNTRY and to a FOREIGN COMPANY: 10%
• AUTHORIZED payments while in HOME COUNTRY and to a FOREIGN COMPANY: 1%
• TOTAL (authorized of not authorized) payments while TRAVELLING and to a FOREIGN country: 90%

What I've drawn is the following.

But I'm not sure if it's correct or not. What do you think? Then I'm supposed to fulfill a "probability table" for each node. But what should I write?

Probability table:

Any hint about the network correctness and how to fullfill the table is really appreciated.

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