利用观测错误率调整端点可变性参数,以获得更好的指向失误预测精度

Shota Yamanaka, Hiroki Usuba
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引用次数: 0

摘要

瞄准任务中的错误率(er)通常分为两步建模:根据目标大小预测点击点的可变性(σ),然后计算点击落在目标之外的概率。如果研究人员的目的是实现对er的准确预测,这是一种间接的方法,因为在第一步中优化了模型系数以准确预测σ。我们将这种方法的预测精度与一种更直接的方法进行了比较,在这种方法中,σ的系数是通过优化观测值和预测值之间的接近度来确定的。我们对来自鼠标和触摸指向研究的8个数据集的重新分析表明,如果参数搜索的起始值合适(可以通过超参数优化实现),后者的方法始终优于传统方法,从而能够在准确预测er的基础上进行界面配置。
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Tuning Endpoint-variability Parameters by Observed Error Rates to Obtain Better Prediction Accuracy of Pointing Misses
Error rates (ERs) in target-pointing tasks are typically modelled in two steps: predicting the click-point variability (σ) based on target sizes and then computing the probability that a click falls outside a target. This is an indirect approach if the researcher’s purpose is to achieve the accurate prediction of ERs because the model coefficients are optimized to predict σ accurately in the first step. We compared the prediction accuracies of this method with a more direct technique in which the coefficients used for σ are determined in such a way as to optimize the closeness between observed and predicted ERs. Our re-analysis of eight datasets from mouse- and touch-based pointing studies showed that the latter approach consistently outperforms the conventional one if the starting values for the parameter search are appropriate (which can be achieved by hyperparameter optimization), thus enabling the interface configuration on the basis of accurately predicted ERs.
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