Fitts' law is often employed as a predictive model for human movement, especially in the field of human-computer interaction. Models with an assumed Gaussian error structure are usually adequate when applied to data collected from controlled studies. However, observational data (often referred to as data gathered "in the wild") typically display noticeable positive skewness relative to a mean trend as users do not routinely try to minimize their task completion time. As such, the exponentially-modified Gaussian (EMG) regression model has been applied to aimed movements data. However, it is also of interest to reasonably characterize those regions where a user likely was not trying to minimize their task completion time. In this paper, we propose a novel model with a two-component mixture structure -- one Gaussian and one exponential -- on the errors to identify such a region. An expectation-conditional-maximization (ECM) algorithm is developed for estimation of such a model and some properties of the algorithm are established. The efficacy of the proposed model, as well as its ability to inform model-based clustering, are addressed in this work through extensive simulations and an insightful analysis of a human aiming performance study.
翻译:菲特斯法通常被用作人类流动的预测模型,特别是在人类-计算机互动领域。假设高斯误差结构模型通常适用于从受控研究中收集的数据时就足够了。然而,观测数据(通常称为“野生”收集的数据)通常显示相对于一种平均趋势的明显正面偏差,因为用户通常不试图最大限度地减少任务完成时间。因此,对目标移动数据应用了指数化调整的高斯回归模型。然而,合理描述用户可能没有试图最大限度地减少任务完成时间的那些区域也很有意义。在本文中,我们提出一个具有两种成分混合结构的新模型 -- -- 一个高斯和一个指数 -- -- 的模型,用于辨别错误,以辨别这种区域。为估计这种模型而开发了预期-条件-最大程度的算法,并确定了算法的某些特性。在这项工作中,通过广泛的模拟和深入的人类目标性业绩分析研究,探讨了拟议模型的功效及其向模型组合提供信息的能力。