Given a user's historical interaction sequence, online novel recommendation suggests the next novel the user may be interested in. Online novel recommendation is important but underexplored. In this paper, we concentrate on recommending online novels to new users of an online novel reading platform, whose first visits to the platform occurred in the last seven days. We have two observations about online novel recommendation for new users. First, repeat novel consumption of new users is a common phenomenon. Second, interactions between users and novels are informative. To accurately predict whether a user will reconsume a novel, it is crucial to characterize each interaction at a fine-grained level. Based on these two observations, we propose a neural network for online novel recommendation, called NovelNet. NovelNet can recommend the next novel from both the user's consumed novels and new novels simultaneously. Specifically, an interaction encoder is used to obtain accurate interaction representation considering fine-grained attributes of interaction, and a pointer network with a pointwise loss is incorporated into NovelNet to recommend previously-consumed novels. Moreover, an online novel recommendation dataset is built from a well-known online novel reading platform and is released for public use as a benchmark. Experimental results on the dataset demonstrate the effectiveness of NovelNet.
翻译:鉴于用户的历史互动序列,在线小说建议显示用户可能感兴趣的下一个小说。在线小说建议很重要,但探索不足。在本文中,我们集中向在线小说阅读平台的新用户推荐在线小说,他们首次访问该平台是在过去七天里发生的。我们对于在线小说新用户的建议有两点观察。首先,重复新用户的新消费是一种常见现象。第二,用户和小说之间的交互作用是信息化的。为了准确预测用户是否将重新出版一本小说,在细微的层次上对每种互动进行定性至关重要。基于这两项观察,我们提出了在线小说建议的神经网络,名为NovvelNet。NovellNet可以同时推荐用户消费的小说和新小说中的下一个小说。具体地说,使用互动编码来获得准确的互动说明,考虑到细微的交互作用,一个带有点损失的提示网络被纳入了NevilNet,以推荐先前的简略小说。此外,一个在线小说建议数据集集建于一个广为人知的在线实验性数据库,用来展示公共数据库。