Adaptive Modelling of Attentiveness to Messaging: A Hybrid Approach

Pranut Jain, Rosta Farzan, Adam J. Lee
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引用次数: 6

Abstract

Identifying instances when a user will not able to attend to an incoming message and constructing an auto-response with relevant contextual information may help reduce social pressures to immediately respond that many users face. Mobile messaging behavior often varies from one person to another. As a result, compared to a generic model considering profiles of several users, a personalized model can capture a user's messaging behavior more accurately to predict their inattentive states. However, creating accurate personalized models requires a non-trivial amount of individual data, which is often not available for new users. In this work, we investigate a weighted hybrid approach to model users' attention to messaging. Through dynamic performance-based weighting, we combine the predictions of three types of models, a general model, a group model and a personalized model to create an approach which can work through the lack of initial data while adapting to the user's behavior. We present the details of our modeling approach and the evaluation of the model with over three weeks of data from 274 users. Our results highlight the value of hybrid weighted modeling to predict when a user cannot attend to their messages.
信息关注的自适应建模:一种混合方法
识别用户无法处理传入消息的情况,并使用相关上下文信息构建自动响应,可能有助于减少许多用户面临的立即响应的社会压力。手机短信的行为通常因人而异。因此,与考虑多个用户配置文件的通用模型相比,个性化模型可以更准确地捕获用户的消息传递行为,以预测他们的注意力不集中状态。然而,创建准确的个性化模型需要大量的个人数据,而新用户通常无法获得这些数据。在这项工作中,我们研究了一种加权混合方法来模拟用户对消息的关注。通过动态的基于性能的加权,我们结合了三种模型的预测,一般模型,组模型和个性化模型,创建了一种方法,可以在缺乏初始数据的情况下工作,同时适应用户的行为。我们介绍了建模方法的细节,并使用来自274个用户的超过三周的数据对模型进行了评估。我们的结果突出了混合加权建模在预测用户何时不能关注他们的消息方面的价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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