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A Local Search Approach for Incomplete Soft Constraint Problems: Experimental Results on Meeting Scheduling Problems

机译:不完全软约束问题的局部搜索方法:满足调度问题的实验结果

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We consider soft constraint problems where some of the preferences may be unspecified. In practice, some preferences may be missing when there is, for example, a high cost for computing the preference values, or an incomplete elicitation process. Within such a setting, we study how to find an optimal solution without having to wait for all the preferences. In particular, we define a local search approach that interleaves search and preference elicitation, with the goal to find a solution which is 'necessarily optimal', that is, optimal no matter the missing data, whilst asking the user to reveal as few preferences as possible. Previously, this problem has been tackled with a systematic branch & bound algorithm. We now investigate whether a local search approach can find good quality solutions to such problems with fewer resources. While the approach is general, we evaluate it experimentally on a class of meeting scheduling problems with missing preferences. The experimental results show that the local search approach returns solutions which are very close to optimality, whilst eliciting a very small percentage of missing preference values. In addition, local search is much faster than the systematic approach, especially as the number of meetings increases.
机译:我们考虑一些未指定偏好的软约束问题。实际上,例如,当存在用于计算偏好值的高成本或不完整的启发过程时,某些偏好可能会丢失。在这样的背景下,我们研究了如何找到最佳解决方案而不必等待所有偏好。特别是,我们定义了一种本地搜索方法,该方法将搜索和偏好激发交织在一起,目的是找到一种“必要最佳”的解决方案,也就是说,无论丢失数据如何,都可以最佳化,同时要求用户显示尽可能少的偏好可能。以前,此问题已通过系统的分支定界算法解决。现在,我们调查本地搜索方法是否可以用更少的资源找到解决此类问题的优质解决方案。虽然该方法很通用,但我们在缺少偏好的一类满足计划问题的实验上进行了评估。实验结果表明,局部搜索方法返回的解决方案非常接近于最优性,同时引起极少百分比的缺失偏好值。此外,本地搜索比系统搜索要快得多,尤其是随着会议数量的增加。

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