模态(人机交互)
计算机科学
模式
推荐系统
点(几何)
竞争对手分析
人工智能
情报检索
多媒体
数学
几何学
社会科学
社会学
经济
管理
作者
Taeri Kim,Yeon-Chang Lee,Kijung Shin,Sang‐Wook Kim
标识
DOI:10.1145/3511808.3557387
摘要
We address the multimedia recommendation problem, which utilizes items' multimodal features, such as visual and textual modalities, in addition to interaction information. While a number of existing multimedia recommender systems have been developed for this problem, we point out that none of these methods individually capture the influence of each modality at the interaction level. More importantly, we experimentally observe that the learning procedures of existing works fail to preserve the intrinsic modality-specific properties of items. To address above limitations, we propose an accurate multimedia recommendation framework, named MARIO, based on modality-aware attention and modality-preserving decoders. MARIO predicts users' preferences by considering the individual influence of each modality on each interaction while obtaining item embeddings that preserve the intrinsic modality-specific properties. The experiments on four real-life datasets demonstrate that MARIO consistently and significantly outperforms seven competitors in terms of the recommendation accuracy: MARIO yields up to 14.61% higher accuracy, compared to the best competitor.
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