IAN: interpretable attention network for churn prediction in LBSNs

Liang-yu Chen, Yutong Chen, Young D. Kwon, Youwen Kang, Pan Hui
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引用次数: 2

Abstract

With the rise of Location-Based Social Networks (LBSNs) and their heavy reliance on User-Generated Content, it has become essential to attract and keep more users, which makes the churn prediction problem interesting. Recent research focuses on solving the task by utilizing complex neural networks. However, due to the black-box nature of those proposed deep learning algorithms, it is still a challenge for LBSN managers to interpret the prediction results and design strategies to prevent churning behavior. Therefore, in this paper, we perform the first investigation into the interpretability of the churn prediction in LBSNs. We proposed a novel attention-based deep learning network, Interpretable Attention Network (IAN), to achieve high performance while ensuring interpretability. The network is capable to process the complex temporal multivariate multidimensional user data from LBSN datasets (i.e. Yelp and Foursquare) and provides meaningful explanations of its prediction. We also utilize several visualization techniques to interpret the prediction results. By analyzing the attention output, researchers can intuitively gain insights into which features dominate the model's prediction of churning users. Finally, we expect our model to become a robust and powerful tool to help LBSN applications to understand and analyze user churning behavior and in turn remain users.
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IAN:用于LBSNs流失预测的可解释注意网络
随着基于位置的社交网络(LBSNs)的兴起以及它们对用户生成内容的严重依赖,吸引和留住更多用户变得至关重要,这使得流失预测问题变得有趣起来。最近的研究重点是利用复杂神经网络来解决这一问题。然而,由于这些提出的深度学习算法的黑箱性质,对于LBSN管理人员来说,解释预测结果和设计策略以防止流失行为仍然是一个挑战。因此,在本文中,我们对lbsn中流失预测的可解释性进行了首次研究。为了在保证可解释性的同时实现高性能,我们提出了一种新的基于注意的深度学习网络——可解释注意网络(Interpretable Attention network, IAN)。该网络能够处理来自LBSN数据集(即Yelp和Foursquare)的复杂时间多元多维用户数据,并为其预测提供有意义的解释。我们还利用几种可视化技术来解释预测结果。通过分析注意力输出,研究人员可以直观地了解哪些特征主导了模型对流失用户的预测。最后,我们希望我们的模型能够成为一个强大的工具,帮助LBSN应用程序理解和分析用户流失行为,从而留住用户。
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