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Learning to generalize for complex selection tasks

机译:学习概括复杂的选择任务

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Selection tasks are common in modern computer interfaces: we are often required to select a set of files, emails, data entries, and the like. File and data browsers have sorting and block selection facilities to make these tasks easier, but for complex selections there is little to aid the user without writing complex search queries. We propose an interactive machine learning solution to this problem called "smart selection," in which the user selects and deselects items as inputs to a selection classifier which attempts at each step to correctly generalize to the user's target state. Furthermore, we take advantage of our data on how users perform selection tasks over many sessions, and use it to train a label regressor that models their generalization behavior: we call this process learning to generalize. We then combine the user's explicit labels as well the label regressor outputs in the selection classifier to predict the user's desired selections. We show that the selection classifier alone takes dramatically fewer mouse clicks than the standard file browser, and when used in conjunction with the label regressor, the predictions of the classifier are significantly more accurate with respect to the target selection state.
机译:选择任务在现代计算机界面中很常见:我们经常需要选择一组文件,电子邮件,数据条目等。文件和数据浏览器具有排序和块选择功能,可简化这些任务,但对于复杂的选择,如果不编写复杂的搜索查询,几乎无助于用户。我们针对此问题提出了一种交互式的机器学习解决方案,称为“智能选择”,其中用户选择和取消选择项目作为选择分类器的输入,选择分类器会尝试在每个步骤中正确地推广到用户的目标状态。此外,我们利用有关用户如何在多个会话中执行选择任务的数据的优势,并将其用于训练对他们的泛化行为建模的标签回归器:我们将此过程称为泛化。然后,我们在选择分类器中组合用户的显式标签以及标签回归器输出,以预测用户所需的选择。我们显示,与标准文件浏览器相比,选择分类器单独需要的鼠标单击量要少得多,并且当与标签回归器结合使用时,分类器的预测相对于目标选择状态要准确得多。

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