1st-Order Approximation (Mean Field Theory)



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1st-Order Approximation (Mean Field Theory)

The next order of Markov approximation is also known as the mean field theory [14][13]. The mean field theory, like the 0th-order approximation, encodes only the combinatorial information contained in the cellular automaton map from neighborhood blocks to the states of single cells. The mean field theory, like the 0th-order approximation, represents the action of a cellular automaton on general measures by its action on 1-step Markov measures. The mean field theory is superior to the 0th-order approximation in two respects: 1) The initial measure is allowed to be any 1-step Markov measure, and 2) any number of applications of the map from the set of 1-step Markov measures into itself can be considered.

Let #0(B) and #1(B) be the number of 0's and 1's respectively in a block B. In the mean field theory, the probability of a block B is given by

Equation (5) is exact in the case in which the states of different cells are completely uncorrelated. Two blocks B and which have the same number of cells in states 0 and 1 will be said to be of the same 1st-order type. Blocks of the same 1st-order type are assigned the same probability by equation (5).

Substituting equation (5) into the equation of the form (2) for the evolution of the probability of a 1, we have the mean field equation

Observe that any two blocks B and contribute the same probability to the sum if 1) they both lead to a 1 under the rule, and 2) they are of the same 1st-order type. Let be the number of neighborhood blocks which lead to a 1 under a rule and also contain i 1's (are of the same 1st-order type). Equation (6) can now be rewritten as

The coefficients may have any integer value in the range 0- inclusive. This polynomial equation is a model of the evolution of any cellular automaton which yields the coefficient values . A fixed point in the range [0,1] of equation (7) is an estimate of the invariant density of any cellular automata which yield the coefficient values .

Observe that many different rules of a given radius may have the same values for the coefficients. Such rules are indistinguishable at the level of mean field theory. A collection of rules with the same mean field coefficient values will be referred to as a 1st-order (or mean field) class determined by the coefficient values .

All rules in a given mean field class also lie in the same 0th-order class. That is, the mean field theory supplies a classification of cellular automata which is a strict refinement of the 0th-order classification. The value for the 0th-order class which contains a mean field class determined by coefficient values is given by .



next up previous
Next: 2nd-Order Markov Approximation Up: THE MARKOV APPROXIMATION Previous: 0th-Order Markov Approximation




Thu Nov 10 12:16:46 GMT 1994