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A Joint Neural Model for User Behavior Prediction on Social Networking Platforms

机译:社交网络平台用户行为预测的联合神经模型

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摘要

Social networking services provide platforms for users to perform two kinds of behaviors: consumption behavior (e.g., recommending items of interest) and social link behavior (e.g., recommending potential social links). Accurately modeling and predicting users' two kinds of behaviors are two core tasks in these platforms with various applications. Recently, with the advance of neural networks, many neural-based models have been designed to predict a single users' behavior, i.e., social link behavior or consumption behavior. Compared to the classical shallow models, these neural-based models show better performance to drive a user's behavior by modeling the complex patterns. However, there are few works exploiting whether it is possible to design a neural-based model to jointly predict users' two kinds of behaviors to further enhance the prediction performance. In fact, social scientists have already shown that users' two kinds of behaviors are not isolated; people trend to the consumption recommendation of friends on social platforms and would like to make new friends with like-minded users. While some previous works jointly model users' two kinds of behaviors with shallow models, we argue that the correlation between users' two kinds of behaviors are complex, which could not be well-designed with shallow linear models. To this end, in this article, we propose a neural joint behavior prediction model named Neural joint Behavior Prediction Model (NOP) to mutually enhance the prediction performance of these two tasks on social networking platforms. Specifically, there are two key characteristics of our proposed model: First, to model the correlation of users' two kinds of behaviors, we design a fusion layer in the neural network to model the positive correlation of users' two kinds of behaviors. Second, as the observed links in the social network are often very sparse, we design a new link-based loss function that could preserve the social network topology. After that, we design a joint optimization function to allow the two behaviors modeling tasks to be trained to mutually enhance each other. Finally, extensive experimental results on two real-world datasets show that our proposed method is on average 7.14% better than the best baseline on social link behavior while 6.21% on consumption behavior prediction. Compared with the pair-wise loss function on two datasets, our proposed link-based loss function improves at least 4.69% on the social link behavior prediction and 4.72% on the consumption behavior prediction.
机译:社交网络服务提供用户执行两种行为的平台:消费行为(例如,推荐兴趣物品)和社交链路行为(例如,推荐潜在的社交链接)。准确建模和预测用户的两种行为是这些平台中的两个核心任务,具有各种应用。最近,通过神经网络的进步,许多基于神经的模型旨在预测单个用户的行为,即社交链接行为或消费行为。与古典浅模型相比,这些基于神经的模型显示出更好的性能来推动用户的行为来建立复杂的模式。然而,很少有利用利用是可以设计基于神经的模型以共同预测用户的两种行为来进一步增强预测性能的作品。事实上,社会科学家已经表明用户的两种行为不是孤立;人们对社交平台上朋友的消费推荐的趋势,并希望与志同道合的用户建立新朋友。虽然以前的一些产品共同模型模型,但是使用浅模范的两种行为,但我们认为用户两种行为之间的相关性是复杂的,这不能用浅线性模型设计。为此,在本文中,我们提出了一个名为神经联合行为预测模型(NOP)的神经关节行为预测模型,以相互增强这两个任务对社交网络平台的预测性能。具体而言,我们提出的模型有两个关键特征:首先,为了模拟用户的两种行为的相关性,我们在神经网络中设计了一个融合层来模拟用户的两种行为的正相关。其次,随着社交网络中观察到的链接往往非常稀疏,我们设计了一个可以保护社交网络拓扑的新链接的损耗函数。之后,我们设计一个联合优化功能,以允许两个行为建模的任务训练,以彼此相互增强。最后,对两个真实数据集的广泛实验结果表明,我们的建议方法平均比社会链接行为的最佳基线更好,而消费行为预测的6.21%。与两个数据集的一对损耗功能相比,我们所提出的基于链接的损耗函数在社交链路行为预测上提高至少4.69%,对消费行为预测有4.72%。

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