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The Inductive Constraint Programming Loop

12 October 2015
C. Bessiere
Luc de Raedt
Tias Guns
Lars Kotthoff
M. Nanni
Siegfried Nijssen
Barry O'Sullivan
Anastasia Paparrizou
D. Pedreschi
Helmut Simonis
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Abstract

Constraint programming is used for a variety of real-world optimisation problems, such as planning, scheduling and resource allocation problems. At the same time, one continuously gathers vast amounts of data about these problems. Current constraint programming software does not exploit such data to update schedules, resources and plans. We propose a new framework, that we call the Inductive Constraint Programming loop. In this approach data is gathered and analyzed systematically, in order to dynamically revise and adapt constraints and optimization criteria. Inductive Constraint Programming aims at bridging the gap between the areas of data mining and machine learning on the one hand, and constraint programming on the other hand.

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