Characterization of neighborhood behaviours in a multi-neighborhood local search algorithm
March 12, 2016 Β· Declared Dead Β· π Learning and Intelligent Optimization
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Authors
Nguyen Thi Thanh Dang, Patrick De Causmaecker
arXiv ID
1603.06459
Category
cs.AI: Artificial Intelligence
Citations
4
Venue
Learning and Intelligent Optimization
Last Checked
4 months ago
Abstract
We consider a multi-neighborhood local search algorithm with a large number of possible neighborhoods. Each neighborhood is accompanied by a weight value which represents the probability of being chosen at each iteration. These weights are fixed before the algorithm runs, and are considered as parameters of the algorithm. Given a set of instances, off-line tuning of the algorithm's parameters can be done by automated algorithm configuration tools (e.g., SMAC). However, the large number of neighborhoods can make the tuning expensive and difficult even when the number of parameters has been reduced by some intuition. In this work, we propose a systematic method to characterize each neighborhood's behaviours, representing them as a feature vector, and using cluster analysis to form similar groups of neighborhoods. The novelty of our characterization method is the ability of reflecting changes of behaviours according to hardness of different solution quality regions. We show that using neighborhood clusters instead of individual neighborhoods helps to reduce the parameter configuration space without misleading the search of the tuning procedure. Moreover, this method is problem-independent and potentially can be applied in similar contexts.
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