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A rating prediction method for e-commerce application using ordinal regression based on LDA with multi-modal features

机译:基于LDA具有多模态特征的序数回归的电子商务应用额定预测方法

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This paper presents a new method for rating prediction in e-commerce, which uses ordinal regression based on linear discriminant analysis (LDA) with multi-modal features. In order to realize accurate recommendation in e-commerce, the proposed method estimates each user's rating for target items. Note that we define the rating as “the degree of preference for each item by a user.” For estimating the target user's preference of each item from the past ratings of other items, the proposed method performs training from pairs of “ratings of items” and their feature vectors using ordinal regression based on LDA. Furthermore, in this approach, new features are obtained by applying canonical correlation analysis (CCA) to textual and visual features extracted from review's texts and images on the Web, respectively. Therefore, higher performance of the rating prediction can be realized by our method than that when using single kind of features. Experimental results obtained by applying the proposed method to an actual movie data set, which has been provided by SNAP, show the effectiveness of the proposed method.
机译:本文介绍了一种新的电子商务预测方法,其使用基于线性判别分析(LDA)的序数回归,具有多模态特征。为了实现电子商务中准确的推荐,所提出的方法估计每个用户对目标物品的评级。请注意,我们将评级定义为“用户每个项目的偏好程度”。为了从其他项目的过去额定值估计目标用户的偏好,所提出的方法使用基于LDA的序数回归的“项目的评级”对和其特征向量进行训练。此外,在这种方法中,通过将规范相关性分析(CCA)应用于Web上的Reviews文本和图像中提取的文本和视觉功能来获得新的特征。因此,可以通过我们的方法实现额定值预测的更高性能,而不是使用单一特征时的方法。通过将所提出的方法应用于实际的电影数据集来获得的实验结果,该方法已经通过SNAP提供,显示了该方法的有效性。

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