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Image Tag Recommendation Algorithm Using Tensor Factorization

机译:张量分解的图像标签推荐算法

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摘要

This paper aims to provide high quality tags for digital images according to users' interest As there are three main elements in image tag recommendation problem, tensor factorization technology is utilized in this work. In this paper, the parameters of the tensor factorization model are represented as latent variables, and the key functions of the tensor factorization model can be implemented by integrating three matrices(person matrix, image matrix, and tag matrix) into one tensor. The key problem of image tag recommendation is to obtain the top ranked tags which are suitable not only to image visual contents but also to users' interest Afterwards, the top ranked tags are obtained by a predictor utilizing the proposed tensor factorization model. Therefore, the image tag recommendation problem can be converted to calculate the ranking scores by maximizing the ranking statistic AUC. Finally, performance evaluation is conducted on the NUS-WIDE dataset using MRR, S@k, P@k, and NDCG metric. Experimental results show that the proposed image tag recommendation algorithm performs better than other methods.
机译:本文旨在根据用户的兴趣为数字图像提供高质量的标签。由于图像标签推荐问题中包含三个主要要素,因此本文中使用了张量分解技术。本文将张量分解模型的参数表示为潜在变量,并且可以通过将三个矩阵(人矩阵,图像矩阵和标签矩阵)集成到一个张量中来实现张量分解模型的关键功能。图像标签推荐的关键问题是获得不仅适合图像视觉内容而且适合用户兴趣的最高级标签。然后,由预测器利用所提出的张量分解模型来获得最高级标签。因此,可以通过使排名统计AUC最大化来将图像标签推荐问题转换为计算排名分数。最后,使用MRR,S @ k,P @ k和NDCG指标对NUS-WIDE数据集进行性能评估。实验结果表明,所提出的图像标签推荐算法的性能优于其他方法。

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