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Parent Assignment Is Hard for the MDL, AIC, and NML Costs

机译:家长分配对于MDL,AIC和NML成本来说很难

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摘要

Several hardness results are presented for the parent assignment problem: Given m observations of n attributes x_1,..., x_n, find the best parents for x_n, that is, a subset of the preceding attributes so as to minimize a fixed cost function. This attribute or feature selection task plays an important role, e.g., in structure learning in Bayesian networks, yet little is known about its computational complexity. In this paper we prove that, under the commonly adopted full-multinomial likelihood model, the MDL, BIC, or AIC cost cannot be approximated in polynomial time to a ratio less than 2 unless there exists a polynomial-time algorithm for determining whether a directed graph with n nodes has a dominating set of size log n, a LOGSNP-complete problem for which no polynomial-time algorithm is known; as we also show, it is unlikely that these penalized maximum likelihood costs can be approximated to within any constant ratio. For the NML (normalized maximum likelihood) cost we prove an NP-completeness result. These results both justify the application of existing methods and motivate research on heuristic and super-polynomial-time algorithms.
机译:针对母体分配问题,给出了几种硬度结果:给定n个属性x_1,...,x_n的m个观测值,找到x_n的最佳母体,即上述属性的子集,以最小化固定成本函数。该属性或特征选择任务在例如贝叶斯网络中的结构学习中起重要作用,但对其计算复杂性知之甚少。在本文中,我们证明,在普遍采用的全多项式似然模型下,除非存在用于确定是否有向参数的多项式时间算法,否则无法在多项式时间内将MDL,BIC或AIC成本近似为小于2的比率。具有n个节点的图具有一个大小为log n的支配集,这是一个LOGSNP完全问题,尚不知道多项式时间算法。正如我们还显示的那样,这些受罚的最大似然成本不太可能近似于任何恒定比率。对于NML(归一化最大似然)成本,我们证明了NP完整性结果。这些结果既证明了现有方法的应用合理性,又激发了对启发式和超多项式时间算法的研究。

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