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Interactive data exploration based on user relevance feedback

机译:基于用户相关性反馈的交互式数据探索

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Interactive Data Exploration (IDE) applications typically involve users that aim to discover interesting objects by it-eratively executing numerous ad-hoc exploration queries. Therefore, IDE can easily become an extremely labor and resource intensive process. To support these applications, we introduce a framework that assists users by automatically navigating them through the data set and allows them to identify relevant objects without formulating data retrieval queries. Our approach relies on user relevance feedback on data samples to model user interests and strategically collects more samples to refine the model while minimizing the user effort. The system leverages decision tree classifiers to generate an effective user model that balances the trade-off between identifying all relevant objects and reducing the size of final returned (relevant and irrelevant) objects. Our preliminary experimental results demonstrate that we can predict linear patterns of user interests (i.e., range queries) with high accuracy while achieving interactive performance.
机译:交互式数据探索(IDE)应用程序通常涉及旨在通过迭代执行大量临时探索查询来发现有趣对象的用户。因此,IDE可以轻松地成为一个非常耗费人力和资源的过程。为了支持这些应用程序,我们引入了一个框架,该框架可通过自动导航用户浏览数据集来帮助用户,并允许他们识别相关对象而无需制定数据检索查询。我们的方法依靠对数据样本的用户相关性反馈来对用户兴趣进行建模,并有策略地收集更多样本以完善模型,同时最大程度地减少用户的工作量。该系统利用决策树分类器来生成有效的用户模型,该模型在权衡所有相关对象与减小最终返回的(相关和不相关)对象的大小之间取得平衡。我们的初步实验结果表明,我们可以在实现互动性能的同时,高精度地预测用户兴趣(即范围查询)的线性模式。

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