基于内容的物品推荐的多模态稀疏线性集成

Qiusha Zhu, Zhao Li, Haohong Wang, Yimin Yang, M. Shyu
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引用次数: 15

摘要

大多数基于内容的推荐系统侧重于分析项目的文本信息。对于带有图像的项目,可以将图像视为另一种信息形态。本文提出了一种有效的多模态信息集成方法MSLIM,用于基于内容的商品推荐。将该问题形式化为最小二乘意义上的正则化优化问题,并采用坐标梯度下降法求解该问题。在此过程中,以无监督的方式学习项目的聚合系数,并在此基础上使用k近邻(k- nn)算法通过找到每个项目的k近邻来生成top-N推荐。在此基础上,提出了一种利用MSLIM进行项目推荐的框架。在一个自收集手袋数据集上的实验结果表明,MSLIM优于所选的比较方法,并显示了模型参数如何影响最终的推荐结果。
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Multimodal Sparse Linear Integration for Content-Based Item Recommendation
Most content-based recommender systems focus on analyzing the textual information of items. For items with images, the images can be treated as another information modality. In this paper, an effective method called MSLIM is proposed to integrate multimodal information for content-based item recommendation. It formalizes the probelm into a regularized optimization problem in the least-squares sense and the coordinate gradient descent is applied to solve the problem. The aggregation coefficients of the items are learned in an unsupervised manner during this process, based on which the k-nearest neighbor (k-NN) algorithm is used to generate the top-N recommendations of each item by finding its k nearest neighbors. A framework of using MSLIM for item recommendation is proposed accordingly. The experimental results on a self-collected handbag dataset show that MSLIM outperforms the selected comparison methods and show how the model parameters affect the final recommendation results.
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