Back to Search Start Over

Using Small MUSes to Explain How to Solve Pen and Paper Puzzles

Authors :
Espasa, Joan
Gent, Ian P.
Hoffmann, Ruth
Jefferson, Christopher
Lynch, Alice M.
Salamon, András
McIlree, Matthew J.
Publication Year :
2021

Abstract

In this paper, we present Demystify, a general tool for creating human-interpretable step-by-step explanations of how to solve a wide range of pen and paper puzzles from a high-level logical description. Demystify is based on Minimal Unsatisfiable Subsets (MUSes), which allow Demystify to solve puzzles as a series of logical deductions by identifying which parts of the puzzle are required to progress. This paper makes three contributions over previous work. First, we provide a generic input language, based on the Essence constraint language, which allows us to easily use MUSes to solve a much wider range of pen and paper puzzles. Second, we demonstrate that the explanations that Demystify produces match those provided by humans by comparing our results with those provided independently by puzzle experts on a range of puzzles. We compare Demystify to published guides for solving a range of different pen and paper puzzles and show that by using MUSes, Demystify produces solving strategies which closely match human-produced guides to solving those same puzzles (on average 89% of the time). Finally, we introduce a new randomised algorithm to find MUSes for more difficult puzzles. This algorithm is focused on optimised search for individual small MUSes.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2104.15040
Document Type :
Working Paper