Log-space transducer

In computational complexity theory, a log space transducer (LST) is a type of Turing machine used for log-space reductions.

A log space transducer, M {\displaystyle M} , has three tapes:

  • A read-only input tape.
  • A read/write work tape (bounded to at most O ( log n ) {\displaystyle O(\log n)} symbols).
  • A write-only, write-once output tape.

M {\displaystyle M} will be designed to compute a log-space computable function f : Σ Σ {\displaystyle f\colon \Sigma ^{\ast }\rightarrow \Sigma ^{\ast }} (where Σ {\displaystyle \Sigma } is the alphabet of both the input and output tapes). If M {\displaystyle M} is executed with w {\displaystyle w} on its input tape, when the machine halts, it will have f ( w ) {\displaystyle f(w)} remaining on its output tape.

A language A Σ {\displaystyle A\subseteq \Sigma ^{\ast }} is said to be log-space reducible to a language B Σ {\displaystyle B\subseteq \Sigma ^{\ast }} if there exists a log-space computable function f {\displaystyle f} that will convert an input from problem A {\displaystyle A} into an input to problem B {\displaystyle B} in such a way that w A f ( w ) B {\displaystyle w\in A\iff f(w)\in B} .

This seems like a rather convoluted idea, but it has two useful properties that are desirable for a reduction:

  1. The property of transitivity holds. (A reduces to B and B reduces to C implies A reduces to C).
  2. If A reduces to B, and B is in L, then we know A is in L.

Transitivity holds because it is possible to feed the output tape of one reducer (A→B) to another (B→C). At first glance, this seems incorrect because the A→C reducer needs to store the output tape from the A→B reducer onto the work tape in order to feed it into the B→C reducer, but this is not true. Each time the B→C reducer needs to access its input tape, the A→C reducer can re-run the A→B reducer, and so the output of the A→B reducer never needs to be stored entirely at once.

References

  • Szepietowski, Andrzej (1994), Turing Machines with Sublogarithmic Space , Springer Press, ISBN 3-540-58355-6. Retrieved on 2008-12-03.
  • Sipser, Michael (2012), Introduction to the Theory of Computation, Cengage Learning, ISBN 978-0-619-21764-8.


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