卡住了吗?没烦恼!任务感知命令推荐和分析师的主动帮助

Aadhavan M. Nambhi, Bhanu Prakash Reddy Guda, Aarsh Prakash Agarwal, Gaurav Verma, Harvineet Singh, I. Burhanuddin
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引用次数: 3

摘要

数据分析软件应用程序已成为分析师决策过程中不可或缺的一部分。这种软件的用户由于产品和领域知识的不足而面临挑战,并且发现自己需要帮助。为了缓解这种情况,我们提出了一个任务感知命令推荐系统,以指导用户下一步可以执行哪些命令。我们依靠主题建模技术将有关用户任务的信息合并到模型中。我们还提出了一个帮助预测模型,用于检测用户是否需要帮助,在这种情况下,系统会主动提供上述命令建议。我们利用基于网络的分析软件的日志数据来量化与竞争基线相比,我们的神经模型的优越性能。
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Stuck? No worries!: Task-aware Command Recommendation and Proactive Help for Analysts
Data analytics software applications have become an integral part of the decision-making process of analysts. Users of such a software face challenges due to insufficient product and domain knowledge, and find themselves in need of help. To alleviate this, we propose a task-aware command recommendation system, to guide the user on what commands could be executed next. We rely on topic modeling techniques to incorporate information about user's task into our models. We also present a help prediction model to detect if a user is in need of help, in which case the system proactively provides the aforementioned command recommendations. We leverage the log data of a web-based analytics software to quantify the superior performance of our neural models, in comparison to competitive baselines.
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