2016
DOI: 10.1007/978-3-319-50137-6_3
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New Approaches to Constraint Acquisition

Abstract: In this chapter we present the recent results on constraint acquisition obtained by the Coconut team and their collaborators. In a first part we show how to learn constraint networks by asking the user partial queries. That is, we ask the user to classify assignments to subsets of the variables as positive or negative. We provide an algorithm, called QUACQ, that, given a negative example, finds a constraint of the target network in a number of queries logarithmic in the size of the example. In a second part, w… Show more

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Cited by 25 publications
(48 citation statements)
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“…Future work includes further improving the run-time of IN-CAL, for instance by incorporating warm starts [Bertsimas and Dunn, 2017] (e.g., exploiting incremental SMT solving also in the parameter learning step), using heuristics for example selection in the iterative step (e.g., by incorporating heuristics used in active learning) and learning from partial assignments [Bessiere et al, 2013]. We also plan to investigate learning from noisy labels by either tweaking the encoding or subsampling the dataset and supporting integer variables and equalities.…”
Section: Resultsmentioning
confidence: 99%
“…Future work includes further improving the run-time of IN-CAL, for instance by incorporating warm starts [Bertsimas and Dunn, 2017] (e.g., exploiting incremental SMT solving also in the parameter learning step), using heuristics for example selection in the iterative step (e.g., by incorporating heuristics used in active learning) and learning from partial assignments [Bessiere et al, 2013]. We also plan to investigate learning from noisy labels by either tweaking the encoding or subsampling the dataset and supporting integer variables and equalities.…”
Section: Resultsmentioning
confidence: 99%
“…Constraint learning facilitates this step by automatically extracting a model from data. Several constraint learning approaches have been designed for learning constraint programs and mathematical optimization models, see, e.g., (Rossi and Sperduti 2004;Bessiere et al 2005Bessiere et al , 2016Beldiceanu and Simonis 2012). TaCLe (Kolb et al 2017) is an approach specifically tailored for the spreadsheet setting.…”
Section: Predictive Spreadsheet Autocompletionmentioning
confidence: 99%
“…Many propose interactive constraint acquisition systems learning a complete CSP from examples by asking queries to the user. Among the most recent publications : Bessiere et al [10,15,14], Daoudi et al [20], and Arcangioli and Lazaar [1].…”
Section: Constraint Acquisitionmentioning
confidence: 99%