Latent Factor (LF) models are effective in representing high-dimension and sparse (HiDS) data via low-rank matrices approximation. Hessian-free (HF) optimization is an efficient method to utilizing second-order information of an LF model's objective function and it has been utilized to optimize second-order LF (SLF) model. However, the low-rank representation ability of a SLF model heavily relies on its multiple hyperparameters. Determining these hyperparameters is time-consuming and it largely reduces the practicability of an SLF model. To address this issue, a practical SLF (PSLF) model is proposed in this work. It realizes hyperparameter self-adaptation with a distributed particle swarm optimizer (DPSO), which is gradient-free and parallelized. Experiments on real HiDS data sets indicate that PSLF model has a competitive advantage over state-of-the-art models in data representation ability.
翻译:低位要素模型(LF)在通过低位基质近似值代表高分量和稀少(HIDS)数据方面是有效的。无Hossian(HF)优化是利用低位模型客观功能的二阶信息的一种有效方法,并被用于优化二阶低位LF(SLF)模型。然而,低位代表能力在很大程度上依赖其多个超参数。确定这些超度参数耗时,大大降低了低位模型的实用性。为解决这一问题,在这项工作中提出了实用的SLF(PLF)模型。它实现了使用分布式粒子温优化器(DPSO)的超度参数自我适应,该优化器是无梯度和平行的。对真实的HDS数据集的实验表明,在数据代表能力方面,PSLF模型比最先进的模型具有竞争优势。