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Incorporating Multimodal Cues for Advertorial Discovery

机译:合并用于广告发现的多模式线索

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Commercial advertorials shared on websites are usually designed to pretend as normal social news for commercial benefits. The analysis of the commercial intents embedded in advertorials can greatly help media platforms personalize content. However, commercial intents are not only concealed in news texts but also conveyed by news images explicitly or implicitly. Consequently, how to effectively extract and incorporate the crucial cues of multiple modalities has been emerging as an important but challenging problem. Motivated by this observation, we propose a framework Multimodal Advertorial Discovery Model (MADM) to estimate the commercial intents embedded in the multimodal social news. Specifically, a novel Cross-graph Fusion (CGF) strategy is developed to achieve a soft assignment to incorporate images and text and generate comprehensive multimodal representations. The extensive evaluations demonstrate the superiority of our proposed system in multimodal-based advertorial detection and analysis.
机译:在网站上共享的商业广告通常旨在假装作为商业福利的正常社交新闻。嵌入在广告知识中的商业意图的分析可以极大地帮助媒体平台个性化内容。然而,商业意图不仅隐藏在新闻文本中,而且由新闻图像明确或隐含地传达。因此,如何有效地提取和纳入多种方式的关键线索,这一直是一个重要而挑战性的问题。通过这种观察,我们提出了一个框架多模式广告发现模型(MADM)来估计嵌入在多模式社交新闻中的商业意图。具体地,开发了一种新颖的横谱图融合(CGF)策略以实现软分配,以合并图像和文本并产生综合的多式联数表示。广泛的评估展示了我们所提出的基于多模式的广告检测和分析中所提出的系统的优越性。

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