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arxiv: 1201.1119 · v1 · pith:US5IBUHSnew · submitted 2012-01-05 · 💻 cs.CC · cs.LO

Implicit complexity for coinductive data: a characterization of corecurrence

classification 💻 cs.CC cs.LO
keywords characterizationcorecurrencedatacoinductiveframeworkimplicitproductivityprograms
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We propose a framework for reasoning about programs that manipulate coinductive data as well as inductive data. Our approach is based on using equational programs, which support a seamless combination of computation and reasoning, and using productivity (fairness) as the fundamental assertion, rather than bi-simulation. The latter is expressible in terms of the former. As an application to this framework, we give an implicit characterization of corecurrence: a function is definable using corecurrence iff its productivity is provable using coinduction for formulas in which data-predicates do not occur negatively. This is an analog, albeit in weaker form, of a characterization of recurrence (i.e. primitive recursion) in [Leivant, Unipolar induction, TCS 318, 2004].

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