SEJul 23, 2019

Enhancing Dynamic Symbolic Execution by Automatically Learning Search Heuristics

arXiv:1907.09700v115 citations
Originality Highly original
AI Analysis

This addresses the problem of suboptimal and unstable path exploration in dynamic symbolic execution for software testing, offering an automated solution that enhances code coverage and bug detection.

The paper tackles the challenge of manually designing effective search heuristics for dynamic symbolic execution by automatically learning optimal heuristics, resulting in significant improvements in branch coverage and bug-finding compared to existing manually-crafted heuristics.

We present a technique to automatically generate search heuristics for dynamic symbolic execution. A key challenge in dynamic symbolic execution is how to effectively explore the program's execution paths to achieve high code coverage in a limited time budget. Dynamic symbolic execution employs a search heuristic to address this challenge, which favors exploring particular types of paths that are most likely to maximize the final coverage. However, manually designing a good search heuristic is nontrivial and typically ends up with suboptimal and unstable outcomes. The goal of this paper is to overcome this shortcoming of dynamic symbolic execution by automatically learning search heuristics. We define a class of search heuristics, namely a parametric search heuristic, and present an algorithm that efficiently finds an optimal heuristic for each subject program. Experimental results with industrial-strength symbolic execution tools (e.g., KLEE) show that our technique can successfully generate search heuristics that significantly outperform existing manually-crafted heuristics in terms of branch coverage and bug-finding.

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