CS计算机代考程序代写 ////////////////////////////////////////////////////////////////////////

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// A simple propositional 2-slice DBN (variables are not parameterized).
//
// Author: Scott Sanner (ssanner [at] gmail.com)
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domain prop_dbn {

requirements = { reward-deterministic };

pvariables {
p : { state-fluent, bool, default = false };
q : { state-fluent, bool, default = false };
r : { state-fluent, bool, default = false };
a : { action-fluent, bool, default = false };
};

cpfs {
// Some standard Bernoulli conditional probability tables
p’ = if (p ^ r) then Bernoulli(.9) else Bernoulli(.3);

q’ = if (q ^ r) then Bernoulli(.9)
else if (a) then Bernoulli(.3) else Bernoulli(.8);

// KronDelta is like a DiracDelta, but for discrete data (boolean or int)
r’ = if (~q) then KronDelta(r) else KronDelta(r <=> q);
};

// A boolean functions as a 0/1 integer when a numerical value is needed
reward = p + q – r; // a boolean functions as a 0/1 integer when a numerical value is needed
}

instance inst_dbn {

domain = prop_dbn;
init-state {
p = true; // could also just say ‘p’ by itself
q = false; // default so unnecessary, could also say ‘~q’ by itself
r; // same as r = true
};

max-nondef-actions = 1;
horizon = 20;
discount = 0.9;
}