论文标题
局部近似方面的依赖依赖的高斯专家
Aggregating Dependent Gaussian Experts in Local Approximation
论文作者
论文摘要
分布式高斯过程(DGP)是将高斯流程(GPS)扩展到大数据集的突出的局部近似方法。他们不是全球估计,而是通过将训练集分为子集的培训,从而降低了时间的复杂性。该策略基于条件独立性假设,这基本上意味着本地专家之间存在完美的多样性。但是,实际上,这种假设经常受到侵犯,专家的聚集会导致次优和不一致的解决方案。在本文中,我们提出了一种新颖的方法,用于通过发现强烈侵犯有条件独立性的情况来汇总高斯专家。专家之间的依赖性是通过使用高斯图形模型确定的,该模型得出精度矩阵。精确矩阵编码专家之间的条件依赖性,并用于检测强烈依赖的专家并构建改进的聚合。我们的实验评估同时使用合成数据集,这表明我们的新方法的表现优于其他最先进的DGP方法,同时比SOTA方法更耗时,而SOTA方法是建立在独立专家的基础上。
Distributed Gaussian processes (DGPs) are prominent local approximation methods to scale Gaussian processes (GPs) to large datasets. Instead of a global estimation, they train local experts by dividing the training set into subsets, thus reducing the time complexity. This strategy is based on the conditional independence assumption, which basically means that there is a perfect diversity between the local experts. In practice, however, this assumption is often violated, and the aggregation of experts leads to sub-optimal and inconsistent solutions. In this paper, we propose a novel approach for aggregating the Gaussian experts by detecting strong violations of conditional independence. The dependency between experts is determined by using a Gaussian graphical model, which yields the precision matrix. The precision matrix encodes conditional dependencies between experts and is used to detect strongly dependent experts and construct an improved aggregation. Using both synthetic and real datasets, our experimental evaluations illustrate that our new method outperforms other state-of-the-art (SOTA) DGP approaches while being substantially more time-efficient than SOTA approaches, which build on independent experts.