Full Iso-recursive Types
July 01, 2024 Β· Declared Dead Β· π Proc. ACM Program. Lang.
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Authors
Litao Zhou, Qianyong Wan, Bruno C. d. S. Oliveira
arXiv ID
2407.00941
Category
cs.PL: Programming Languages
Citations
4
Venue
Proc. ACM Program. Lang.
Last Checked
4 months ago
Abstract
There are two well-known formulations of recursive types: iso-recursive and equi-recursive types. Abadi and Fiore [1996] have shown that iso- and equi-recursive types have the same expressive power. However, their encoding of equi-recursive types in terms of iso-recursive types requires explicit coercions. These coercions come with significant additional computational overhead, and complicate reasoning about the equivalence of the two formulations of recursive types. This paper proposes a generalization of iso-recursive types called full iso-recursive types. Full iso-recursive types allow encoding all programs with equi-recursive types without computational overhead. Instead of explicit term coercions, all type transformations are captured by computationally irrelevant casts, which can be erased at runtime without affecting the semantics of the program. Consequently, reasoning about the equivalence between the two approaches can be greatly simplified. We present a calculus called $Ξ»^ΞΌ_{Fi}$, which extends the simply typed lambda calculus (STLC) with full iso-recursive types. The $Ξ»^ΞΌ_{Fi}$ calculus is proved to be type sound, and shown to have the same expressive power as a calculus with equi-recursive types. We also extend our results to subtyping, and show that equi-recursive subtyping can be expressed in terms of iso-recursive subtyping with cast operators.
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