English

Abstracting Abstract Machines: A Systematic Approach to Higher-Order Program Analysis

Programming Languages 2011-05-10 v1

Abstract

Predictive models are fundamental to engineering reliable software systems. However, designing conservative, computable approximations for the behavior of programs (static analyses) remains a difficult and error-prone process for modern high-level programming languages. What analysis designers need is a principled method for navigating the gap between semantics and analytic models: analysis designers need a method that tames the interaction of complex languages features such as higher-order functions, recursion, exceptions, continuations, objects and dynamic allocation. We contribute a systematic approach to program analysis that yields novel and transparently sound static analyses. Our approach relies on existing derivational techniques to transform high-level language semantics into low-level deterministic state-transition systems (with potentially infinite state spaces). We then perform a series of simple machine refactorings to obtain a sound, computable approximation, which takes the form of a non-deterministic state-transition systems with finite state spaces. The approach scales up uniformly to enable program analysis of realistic language features, including higher-order functions, tail calls, conditionals, side effects, exceptions, first-class continuations, and even garbage collection.

Keywords

Cite

@article{arxiv.1105.1743,
  title  = {Abstracting Abstract Machines: A Systematic Approach to Higher-Order Program Analysis},
  author = {David Van Horn and Matthew Might},
  journal= {arXiv preprint arXiv:1105.1743},
  year   = {2011}
}

Comments

Communications of the ACM, Research Highlight

R2 v1 2026-06-21T18:04:42.559Z