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Aspect-level sentiment capsule network for micro-video click-through rate prediction

机译:用于微型视频点击速率预测的梯度级情绪胶囊网络

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摘要

Micro-videos, a new form of videos that are constrained in duration, gain significant popularity in recent years. The volume and rate of online micro-videos urgently calls for effective recommendation algorithms to help users find their interested ones. Although some previous works have investigated how to model users' historical behaviors to predict the click-through rate of micro-videos, they are generally based on positive feedback only but overlook the negative which can help understand user preference at a finer granularity. The positive and negative feedback jointly imply the user's different sentiments on different aspects, where each aspect is one component of a micro-video such as video_scene and video_subject. To this end, we propose an a spect-level s entiment cap sule network(ASCap) for micro-video click-through rate prediction by aggregating both positive and negative feedback, with an attempt to make the prediction more explainable. More specifically, an aspect-specific gating mechanism is firstly utilized to extract the aspect-level features from the target micro-video and the user's positive and negative feedback. Then, in the following sentiment capsule network, the aspect-level features of the target micro-video are paired with those of positive and negative feedback respectively to identify their sentiments and form the sentiment capsules. Finally, the prediction layer is employed to calculate the overall click probability based on the sentiment capsules. Experimental results on two real-world micro-video datasets demonstrate that the proposed method significantly outperforms the state-of-the-art methods.
机译:微视频,持续时间限制的新形式的视频,近年来获得重大普及。在线微观视频的卷和速率迫切需要有效推荐算法,帮助用户找到他们感兴趣的算法。虽然以前的一些作品已经调查了如何建模用户的历史行为来预测微视频的点击率,但它们通常仅基于正反馈,但忽略了可以帮助更精细粒度理解用户偏好的负面反馈。正面和负面反馈联合意味着用户在不同方面的不同情绪,其中每个方面是微型视频的一个组件,例如视频_scene和video_subject。为此,我们通过聚合正负反馈来提出一种用于微型视频点击速率预测的SPECT-Level SENTIMING CALE网络(ASCAP),并尝试使预测更可说明。更具体地,首先利用方面特定的门控机制来从目标微视频和用户的正和负反馈中提取方面级别特征。然后,在以下情绪胶囊网络中,目标微型视频的方面级别分别与正和负反馈的那些配对,以识别它们的情绪并形成情绪胶囊。最后,采用预测层来基于情绪胶囊来计算整体点击概率。两个现实世界微型视频数据集的实验结果表明,所提出的方法显着优于最先进的方法。

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