The common item-based collaborative filtering framework becomes a typical recommendation method when equipped with a certain item-to-item similarity measurement. On one hand, we realize that a well-designed similarity measurement is the key to providing satisfactory recommendation services. On the other hand, similarity measurements designed for sequential recommendation are rarely studied by the recommender systems community. Hence in this paper, we focus on devising a novel similarity measurement called position-aware similarity (PAS) for sequential recommendation. The proposed PAS is, to our knowledge, the first count-based similarity measurement that concurrently captures the sequential patterns from the historical user behavior data and from the item position information within the input sequences. We conduct extensive empirical studies on four public datasets, in which our proposed PAS-based method exhibits competitive performance even compared to the state-of-the-art sequential recommendation methods, including a very recent similarity-based method and two GNN-based methods.
翻译:以项目为基础的共同合作过滤框架在配备某种项目到项目相似度测量时,成为一种典型的建议方法。一方面,我们认识到设计周密的类似度测量是提供令人满意的建议服务的关键。另一方面,建议系统界很少研究为顺序建议设计的类似度测量,因此,在本文件中,我们注重为顺序建议设计一种新型的类似度测量,称为位置认知相似度(PAS),据我们所知,拟议的考绩制度是第一个基于点数的类似度测量,同时从历史用户行为数据和输入序列中的项目位置信息中采集相继模式。我们对四个公共数据集进行了广泛的实证研究,在其中,我们提议的基于考绩制度的方法显示,即使与最先进的顺序建议方法相比,也具有竞争性业绩,包括最近的基于类似度的方法和两种基于GNN的方法。