Digging out the latent information from large-scale incomplete matrices is a key issue with challenges. The Latent Factor Analysis (LFA) model has been investigated in depth to an alyze the latent information. Recently, Swarm Intelligence-related LFA models have been proposed and adopted widely to improve the optimization process of LFA with high efficiency, i.e., the Particle Swarm Optimization (PSO)-LFA model. However, the hyper-parameters of the PSO-LFA model have to tune manually, which is inconvenient for widely adoption and limits the learning rate as a fixed value. To address this issue, we propose an Adam-enhanced Hierarchical PSO-LFA model, which refines the latent factors with a sequential Adam-adjusting hyper-parameters PSO algorithm. First, we design the Adam incremental vector for a particle and construct the Adam-enhanced evolution process for particles. Second, we refine all the latent factors of the target matrix sequentially with our proposed Adam-enhanced PSO's process. The experimental results on four real datasets demonstrate that our proposed model achieves higher prediction accuracy with its peers.
翻译:从大规模不完全矩阵中挖掘潜伏信息是一个具有挑战性的关键问题。对隐性系数分析模型(LFA)进行了深入调查,以解析潜性信息。最近,Swarm Intelling相关LFA模型被提出并广泛采用,以便高效地改进LFA的优化进程,即Pater Swarm优化(PSO)-LFA模型。然而,PSO-LFA模型的超参数必须手工调和,这不利于广泛采用,并限制学习率,将其作为固定值。为解决这一问题,我们提议了亚当加固的高等级PSO-LFA模型,该模型通过顺序调整的亚当调整超参数PSOVA算法来完善潜伏因素。首先,我们为颗粒设计了亚当增量矢量矢量矢量器,为颗粒构建了亚当增强的进化过程。第二,我们按照我们提议的Adam-enhanc PSO进程,按顺序完善目标矩阵的所有潜在因素。我们提出的四个实际数据预测结果显示我们提议的模型的准确性。