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Time-Sensitive Behavior Prediction in a Health Social Network

机译:健康社交网络中的时间敏感行为预测

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Human behavior prediction is critical in understanding and addressing large scale health and social issues in online communities. Specifically, predicting when in the future a user will engage in a behavior as opposed to whether a user will behave at a particular time is a less studied subproblem of behavior prediction. Further lacking is exploration of how social context affects personal behavior and the exploitation of network structure information in behavior and time prediction. To address these problems we propose a novel semi-supervised deep learning model for prediction of return time to personal behavior. A carefully designed objective function ensures the model learns good social context embeddings and historical behavior embeddings in order to capture the effects of social influence on personal behavior. Our model is validated on a unique health social network dataset by predicting when users will engage in physical activities. We show our model outperforms relevant time prediction baselines.
机译:人类行为预测对于理解和解决在线社区中的大规模健康和社会问题至关重要。具体而言,预测用户将来将何时从事某种行为,而不是用户在特定时间是否会行为,这是行为预测的一个研究较少的子问题。进一步缺乏对社会情境如何影响个人行为的探索,以及对行为和时间预测中网络结构信息的利用。为了解决这些问题,我们提出了一种新颖的半监督式深度学习模型,用于预测个人行为的返回时间。精心设计的目标函数可确保模型学习良好的社会环境嵌入和历史行为嵌入,以捕获社会影响对个人行为的影响。通过预测用户何时进行体育锻炼,我们的模型在独特的健康社交网络数据集上得到了验证。我们展示了我们的模型优于相关的时间预测基准。

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