有序标记数据的高斯分布图约束多模态高斯过程潜在变量模型

Keisuke Maeda, Takahiro Ogawa, M. Haseyama
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引用次数: 0

摘要

针对有序标记数据,提出了一种高斯分布图约束的多模态高斯过程潜变量模型。在各种实际应用程序(如产品推荐)中使用的评级数据可以表示用户偏好,但是由于用户的模糊性,相邻评级之间的差异通常是不确定的。为了捕获包括评级数据在内的多模态数据之间的关系,必须考虑不确定性。因此,我们将高斯分布应用于评级数据,计算隐式包含不确定性的分布式标签,从而构建基于它们相似度的高斯分布图。通过在多模态高斯过程潜变量模型的目标函数中引入基于高斯分布图拉普拉斯算子计算的约束,可以获得在考虑不确定性的同时考虑标签相关性的有效潜空间。这是本文的贡献。通过开放数据集的实验验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gaussian Distributed Graph Constrained Multi-Modal Gaussian Process Latent Variable Model for Ordinal Labeled Data
This paper proposes a Gaussian distributed graph constrained multi-modal Gaussian process latent variable model for ordinal labeled data. Rating data that are used in various real-world applications such as product recommendation can represent user preferences, but the difference between adjacent ratings is often uncertain due to the user’s ambiguity. In order to capture the relationships among multi-modal data including rating data, consideration of the uncertainty is necessary. Therefore, by applying the Gaussian distribution to the rating data, we calculate distributed labels that implicitly include the uncertainty, and thus, the Gaussian distributed graph based on their similarities can be constructed. By introducing a constraint calculated based on the graph Laplacian of the Gaussian distributed graph into the objective function of the multi-modal Gaussian process latent variable model, we can achieve an effective latent space that can consider a label correlation while accounting for the uncertainty. This is the contribution of this paper. The effectiveness of the proposed method is verified by experiments using some open datasets.
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