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An Empirical Study on Categorizing User Input Parameters for User Inputs Reuse

机译:对用户输入重用进行用户输入参数分类的实证研究

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End-users often have to enter the same information to various services {e.g., websites and mobile applications) repetitively. To save end-users from typing redundant information, it becomes more convenient for an end-user if the previous inputs of the end-user can be pre-filled to applications based on end-user's contexts. The existing pre-filling approaches have poor accuracy of pre-filling information, and only provide limited support of reusing user inputs within one application and propagating the inputs across different applications. The existing approaches do not distinguish parameters, however different user input parameters can have very varied natures. Some parameters should be pre-filled and some should not. In this paper, we propose an ontology model to express the common parameters and the relations among them and an approach using the ontology model to address the shortcomings of the existing pre-filling techniques. The basis of our approach is to categorize the input parameters based on their characteristics. We propose categories for user inputs parameters to explore the types of parameters suitable for pre-filling. Our empirical study shows that the proposed categories successfully cover all the parameters in a representative corpus. The proposed approach achieves an average precision of 75% and an average recall of 45% on the category identification for parameters. Compared with a baseline approach, our approach can improve the existing pre-filling approach, i.e., 19% improvement on precision on average.
机译:最终用户经常必须向各种服务(例如网站和移动应用程序)重复输入相同的信息。为了避免最终用户键入冗余信息,如果可以根据最终用户的上下文将最终用户的先前输入预填充到应用程序中,则对于最终用户而言将变得更加方便。现有的预填充方法预填充信息的准确性较差,并且仅提供有限的支持,即在一个应用程序内重用用户输入并在不同应用程序之间传播输入。现有方法不能区分参数,但是不同的用户输入参数可以具有非常不同的性质。有些参数应该预先填写,有些则不要。在本文中,我们提出了一个本体模型来表达常用参数及其之间的关系,并提出了一种使用该本体模型来解决现有预填充技术的缺点的方法。我们方法的基础是根据输入参数的特征对其进行分类。我们为用户输入参数建议类别,以探索适用于预填充的参数类型。我们的经验研究表明,提出的类别成功地覆盖了代表性语料库中的所有参数。所提出的方法在参数类别识别上实现了75%的平均精度和45%的平均召回率。与基线方法相比,我们的方法可以改进现有的预填充方法,即平均精度提高19%。

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