Guided Bottom-Up Interactive Constraint Acquisition

07/12/2023
by   Dimos Tsouros, et al.
0

Constraint Acquisition (CA) systems can be used to assist in the modeling of constraint satisfaction problems. In (inter)active CA, the system is given a set of candidate constraints and posts queries to the user with the goal of finding the right constraints among the candidates. Current interactive CA algorithms suffer from at least two major bottlenecks. First, in order to converge, they require a large number of queries to be asked to the user. Second, they cannot handle large sets of candidate constraints, since these lead to large waiting times for the user. For this reason, the user must have fairly precise knowledge about what constraints the system should consider. In this paper, we alleviate these bottlenecks by presenting two novel methods that improve the efficiency of CA. First, we introduce a bottom-up approach named GrowAcq that reduces the maximum waiting time for the user and allows the system to handle much larger sets of candidate constraints. It also reduces the total number of queries for problems in which the target constraint network is not sparse. Second, we propose a probability-based method to guide query generation and show that it can significantly reduce the number of queries required to converge. We also propose a new technique that allows the use of openly accessible CP solvers in query generation, removing the dependency of existing methods on less well-maintained custom solvers that are not publicly available. Experimental results show that our proposed methods outperform state-of-the-art CA methods, reducing the number of queries by up to 60 methods work well even in cases where the set of candidate constraints is 50 times larger than the ones commonly used in the literature.

READ FULL TEXT
research
09/13/2021

Efficient Multiple Constraint Acquisition

Constraint acquisition systems such as QuAcq and MultiAcq can assist non...
research
09/08/2021

Formal Query Building with Query Structure Prediction for Complex Question Answering over Knowledge Base

Formal query building is an important part of complex question answering...
research
11/18/2021

Interactive Set Discovery

We study the problem of set discovery where given a few example tuples o...
research
09/08/2016

Towards Better Response Times and Higher-Quality Queries in Interactive Knowledge Base Debugging

Many AI applications rely on knowledge encoded in a locigal knowledge ba...
research
12/01/2019

Area Queries Based on Voronoi Diagrams

The area query, to find all elements contained in a specified area from ...
research
03/14/2020

Partial Queries for Constraint Acquisition

Learning constraint networks is known to require a number of membership ...
research
09/23/2021

Exact Learning of Qualitative Constraint Networks from Membership Queries

A Qualitative Constraint Network (QCN) is a constraint graph for represe...

Please sign up or login with your details

Forgot password? Click here to reset