论文标题
加权总和最大化,并因因果推断而进行潜在干扰估计
Weighted Sum-Rate Maximization With Causal Inference for Latent Interference Estimation
论文作者
论文摘要
该论文研究了已知网络之外的潜在干扰来源的加权总和最大化(WSRM)问题,其功率分配策略被隐藏起来,无法控制而无法控制。该论文在因果推理框架下扩展了著名的替代优化算法加权最小均方误差(WMMSE)[1],以使用WSRM解决。具体而言,由于可能在隐藏网络中移动电力策略的可能性,因此仅基于观察到的干扰固有地计算迭代方向,这意味着在决策中忽略了反事实。一种称为合成控制(SC)的方法用于估计反事实。对于已知网络中的任何链接,SC构建了干扰其他链接的凸组合,并将其用作反事实的估计值。考虑到观察到的干扰及其反事实,进行了拟议的SC-WMMSE中的功率迭代。在优化阶段,SC-WMMSE不需要更多的信息。据我们所知,这是第一篇论文探讨了SC在协助数学优化解决经典无线优化问题方面的潜力。数值结果表明,在收敛和客观中,SC-WMMSE优于原始的优势。
The paper investigates the weighted sum-rate maximization (WSRM) problem with latent interfering sources outside the known network, whose power allocation policy is hidden from and uncontrollable to optimization. The paper extends the famous alternate optimization algorithm weighted minimum mean square error (WMMSE) [1] under a causal inference framework to tackle with WSRM. Specifically, with the possibility of power policy shifting in the hidden network, computing an iterating direction based only on the observed interference inherently implies that counterfactual is ignored in decision making. A method called synthetic control (SC) is used to estimate the counterfactual. For any link in the known network, SC constructs a convex combination of the interference on other links and uses it as an estimate for the counterfactual. Power iteration in the proposed SC-WMMSE is performed taking into account both the observed interference and its counterfactual. SC-WMMSE requires no more information than the original WMMSE in the optimization stage. To our best knowledge, this is the first paper explores the potential of SC in assisting mathematical optimization in addressing classic wireless optimization problems. Numerical results suggest the superiority of the SC-WMMSE over the original in both convergence and objective.