Efficiently Approximable Real-Valued Functions

2000; Society for Industrial and Applied Mathematics; Volume: 7; Linguagem: Inglês

ISSN

1433-8092

Autores

Valentine Kabanets, Charles Rackoff, Stephen Cook,

Tópico(s)

Algorithms and Data Compression

Resumo

We define a class, denoted APP, of real-valued functions f : {0, 1}n → [0, 1] such that f can be approximated to within any > 0 by a probabilistic Turing machine running in time poly(n, 1/ ). The class APP can be viewed as a generalization of BPP. We argue that APP is more natural and more important than BPP, and that most results about BPP are better stated as results about APP. We show that APP contains a natural complete problem: computing the acceptance probability of a given Boolean circuit. In contrast, no complete problem is known for BPP. We observe that all known complexity-theoretic assumptions under which BPP can be derandomized also allow APP to be derandomized. On the other hand we construct an oracle under which BPP = P but APP does not collapse to the corresponding deterministic class AP. (However any oracle collapsing APP to AP also collapses BPP to P.)

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