With the rapid increase of micro-video creators and viewers, how to make personalized recommendations from a large number of candidates to viewers begins to attract more and more attention. However, existing micro-video recommendation models rely on expensive multi-modal information and learn an overall interest embedding that cannot reflect the user's multiple interests in micro-videos. Recently, contrastive learning provides a new opportunity for refining the existing recommendation techniques. Therefore, in this paper, we propose to extract contrastive multi-interests and devise a micro-video recommendation model CMI. Specifically, CMI learns multiple interest embeddings for each user from his/her historical interaction sequence, in which the implicit orthogonal micro-video categories are used to decouple multiple user interests. Moreover, it establishes the contrastive multi-interest loss to improve the robustness of interest embeddings and the performance of recommendations. The results of experiments on two micro-video datasets demonstrate that CMI achieves state-of-the-art performance over existing baselines.
翻译:随着微视频创作者和观众的迅速增加,如何从大量候选人向观众提出个性化建议,开始吸引越来越多的关注;然而,现有的微视频建议模式依赖于昂贵的多模式信息,并学习无法反映用户在微视频中的多重利益的整体利益嵌入。最近,对比式学习为改进现有建议技术提供了新的机会。因此,我们在本文件中提议提取对比式的多种利益,并设计一个微视频建议模型CMI。具体地说,CMI从其历史互动序列中为每个用户学习了多种利益嵌入,其中隐含式正方形微视频类别被用于分辨多个用户的利益。此外,它确定了对比式的多利益嵌入式和建议的落实情况。两个微视频数据集的实验结果表明,CMI取得了相对于现有基线的先进业绩。