LGAIPLOct 19, 2021

Using Program Synthesis and Inductive Logic Programming to solve Bongard Problems

arXiv:2110.09947v17 citations
Originality Incremental advance
AI Analysis

This addresses analogical reasoning in AI, but it is incremental as it builds on existing methods like Dreamcoder and ILP for specific, synthetic tasks.

The paper tackled the problem of solving Bongard problems, which test analogical reasoning, by using Dreamcoder for program synthesis and inductive logic programming to learn interpretable theories, achieving success on synthetic problems with concepts like 'above/below'.

The ability to recognise and make analogies is often used as a measure or test of human intelligence. The ability to solve Bongard problems is an example of such a test. It has also been postulated that the ability to rapidly construct novel abstractions is critical to being able to solve analogical problems. Given an image, the ability to construct a program that would generate that image is one form of abstraction, as exemplified in the Dreamcoder project. In this paper, we present a preliminary examination of whether programs constructed by Dreamcoder can be used for analogical reasoning to solve certain Bongard problems. We use Dreamcoder to discover programs that generate the images in a Bongard problem and represent each of these as a sequence of state transitions. We decorate the states using positional information in an automated manner and then encode the resulting sequence into logical facts in Prolog. We use inductive logic programming (ILP), to learn an (interpretable) theory for the abstract concept involved in an instance of a Bongard problem. Experiments on synthetically created Bongard problems for concepts such as 'above/below' and 'clockwise/counterclockwise' demonstrate that our end-to-end system can solve such problems. We study the importance and completeness of each component of our approach, highlighting its current limitations and pointing to directions for improvement in our formulation as well as in elements of any Dreamcoder-like program synthesis system used for such an approach.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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