In this paper we combine the k-means and/or k-means type algorithms with a hill climbing algorithm in stages to solve the joint stratification and sample allocation problem. This is a combinatorial optimisation problem in which we search for the optimal stratification from the set of all possible stratifications of basic strata. Each stratification being a solution the quality of which is measured by its cost. This problem is intractable for larger sets. Furthermore evaluating the cost of each solution is expensive. A number of heuristic algorithms have already been developed to solve this problem with the aim of finding acceptable solutions in reasonable computation times. However, the heuristics for these algorithms need to be trained in order to optimise performance in each instance. We compare the above multi-stage combination of algorithms with three recent algorithms and report the solution costs, evaluation times and training times. The multi-stage combinations generally compare well with the recent algorithms both in the case of atomic and continuous strata and provide the survey designer with a greater choice of algorithms to choose from.
翻译:在本文中,我们将k-points和/或k-points 类型算法与山坡攀爬算法相结合,分阶段解决联合分层和抽样分配问题。这是一个组合式优化问题,我们从所有可能的基本阶层分层中寻找最佳分层。每个分层是其质量按成本衡量的解决方案。对于较大的组别来说,这个问题是难以解决的。此外,评估每种解决办法的成本是昂贵的。已经开发了一些超潮式算法,以解决这个问题,目的是在合理的计算时间找到可接受的解决办法。然而,这些算法的偏重性需要经过培训,才能在每种情况下优化性能。我们将以上多阶段的算法组合与三种最近的算法、评估时间和培训时间进行比较,并报告解决方案的成本、评估时间、培训时间。多阶段组合一般都与原子和连续层的最新算法进行比较,并为调查设计者提供选择的更多算法选择。