A deterministic FSM (DFA) is one where the next state is uniquely determinied by a single input event. The next state of a nondeterministic FSM (NFA) depends not only on the current input event, but also on an arbitrary number of subsequent input events. Until these subsequent events occur it is not possible to determine which state the machine is in.
It is possible to automatically translate any nondeterministic FSM into a deterministic one which will produce the same output given the same input. Each state in the DFA represents the set of states the NFA might be in at a given time.
In a probabilistic FSM [proper name?], there is a predetermined probability of each next state given the current state and input (compare Markov chain).
The terms "acceptor" and "transducer" are used particularly in language theory where automata are often considered as abstract machines capable of recognising a language (certain sequences of input events). An acceptor has a single Boolean output and accepts or rejects the input sequence by outputting true or false respectively, whereas a transducer translates the input into a sequence of output events.
FSMs are used in computability theory and in some practical applications such as regular expressions and digital logic design.
See also state transition diagram, Turing Machine.
[J.H. Conway, "regular algebra and finite machines", 1971, Eds Chapman & Hall].
[S.C. Kleene, "Representation of events in nerve nets and finite automata", 1956, Automata Studies. Princeton].
[Hopcroft & Ullman, 1979, "Introduction to automata theory, languages and computations", Addison-Wesley].
[M. Crochemore "tranducters and repetitions", Theoritical. Comp. Sc. 46, 1986].
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