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Characterizing User Skills from Application Usage Traces with Hierarchical Attention Recurrent Networks

机译:通过分层注意力循环网络从应用程序使用情况跟踪中表征用户技能

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摘要

Predicting users' proficiencies is a critical component of AI-powered personal assistants. This article introduces a novel approach for the prediction based on users' diverse, noisy, and passively generated application usage histories. We propose a novel bi-directional recurrent neural network with hierarchical attention mechanism to extract sequential patterns and distinguish informative traces from noise. Our model is able to attend to the most discriminative actions and sessions to make more accurate and directly interpretable predictions while requiring 50x less training data than the state-of-the-art sequential learning approach. We evaluate our model with two large scale datasets collected from 68K Photoshop users: a digital design skill dataset where the user skill is determined by the quality of the end products and a software skill dataset where users self-disclose their software usage skill levels. The empirical results demonstrate our model's superior performance compared to existing user representation learning techniques that leverage action frequencies and sequential patterns. In addition, we qualitatively illustrate the model's significant interpretative power. The proposed approach is broadly relevant to applications that generate user time-series analytics.
机译:预测用户的熟练程度是AI驱动的个人助理的重要组成部分。本文介绍了一种基于用户的多样化,嘈杂和被动生成的应用程序使用历史进行预测的新颖方法。我们提出了一种具有层次化注意力机制的新型双向递归神经网络,以提取顺序模式并从噪声中区分出有益的痕迹。我们的模型能够参加最具区分性的活动和会议,以做出更准确和直接可解释的预测,同时所需的培训数据比最新的顺序学习方法少50倍。我们使用从68K Photoshop用户那里收集的两个大规模数据集来评估模型:一个数字设计技能数据集(该用户技能由最终产品的质量决定)和一个软件技能数据集,其中用户自行披露其软件使用技能水平。与现有的利用动作频率和顺序模式的用户表示学习技术相比,经验结果表明我们的模型具有出色的性能。此外,我们定性地说明了模型的重要解释力。所提出的方法与生成用户时间序列分析的应用程序广泛相关。

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