Cold-start and sparsity problem are two key intrinsic problems to recommender systems. During the past two decades, researchers and industrial practitioners have spent considerable amount of efforts trying to solve the problems. However, for cold-start problem, most research relies on importing side information to transfer knowledge. A notable exception is ZeroMat, which uses no extra input data. Sparsity is a lesser noticed problem. In this paper, we propose a new algorithm named DotMat that relies on no extra input data, but is capable of solving cold-start and sparsity problems. In experiments, we prove that like ZeroMat, DotMat can achieve competitive results with recommender systems with full data, such as the classic matrix factorization algorithm.
翻译:冷点启动和宽度问题是建议系统的两个关键内在问题。 在过去二十年中,研究人员和工业从业人员花费了大量精力试图解决问题。然而,对于冷点启动问题,大多数研究依靠进口侧面信息来转移知识。一个显著的例外是零Mat,它不使用额外的输入数据。公平性是一个不太引人注意的问题。在本文中,我们提出了一个名为DotMat的新算法,它不依赖额外的输入数据,但能够解决冷点启动和缓存问题。在实验中,我们证明像ZeroMat, DotMat这样的建议系统可以取得具有竞争力的结果,它拥有完整的数据,例如典型的矩阵要素化算法。