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Twitter Followee Recommendation Based on Multimodal FFM Considering Social Relations

机译:考虑社会关系的多模式FFM推荐推荐推荐

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A method for Twitter followee recommendation based on multimodal field-aware factorization machines considering social relations (MFFM-SR) is presented. MFFM-SR enables collaborative use of textual and visual features and social relations unlike conventional methods. Specifically, for distinguishing users' interest, visual features are extracted from images in their tweets and icons as well as textual features and social relations. Furthermore, to construct a model that accurately represents users' interest, MFFM-SR that enables calculation of high-level features via estimation of latent relationships among the obtained features and social relations is derived. By using the constructed model, successful followee recommendation becomes feasible.
机译:提出了一种基于考虑社会关系(MFFM-SR)的多模式现场感知分解机的Twitter Poweree推荐方法。与传统方法不同,MFFM-SR能够协作使用文本和视觉功能和社会关系。具体而言,为了区分用户的兴趣,视觉特征是从其推文和图标中的图像中提取的,以及文本特征和社会关系。此外,为了通过估计所获得的特征和社会关系之间的潜在关系来构造精确代表用户兴趣的模型,可以通过估计实现高级特征来计算高级功能的MFFM-SR。通过使用构造的模型,成功的追随者推荐变得可行。

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