Lai Shih-Chiung, Mayer-Kress Gottfried, Sosnoff Jacob J, Newell Karl M
Department of Kinesiology, The Pennsylvania State University, 266 Recreation Hall, University Park, PA 16802, USA.
Acta Psychol (Amst). 2005 Jul;119(3):283-304. doi: 10.1016/j.actpsy.2005.02.005. Epub 2005 Apr 9.
Information entropy and mutual information were investigated in discrete movement aiming tasks over a wide range of spatial (20-160 mm) and temporal (250-1250 ms) constraints. Information entropy was calculated using two distinct analyses: (1) with no assumption on the nature of the data distribution; and (2) assuming the data have a normal distribution. The two analyses showed different results in the estimate of entropy that also changed as a function of task goals, indicating that the movement trajectory data were not from a normal distribution. It was also found that the information entropy of the discrete aiming movements was lower than the task defined indices of difficulty (ID) that were selected for the congruence with Fitts' law. Mutual information between time points of the trajectory was strongly influenced by the average movement velocity and the acceleration/deceleration segments of the movement. The entropy analysis revealed structure to the variability of the movement trajectory and outcome that has been masked by the traditional distributional analyses of discrete aiming movements.
在一系列广泛的空间(20 - 160毫米)和时间(250 - 1250毫秒)约束条件下,对离散运动瞄准任务中的信息熵和互信息进行了研究。信息熵通过两种不同的分析方法计算:(1)不对数据分布的性质做任何假设;(2)假设数据呈正态分布。这两种分析在熵的估计上显示出不同的结果,且该结果也随任务目标而变化,表明运动轨迹数据并非来自正态分布。还发现离散瞄准运动的信息熵低于为符合菲茨定律而选择的任务定义难度指数(ID)。轨迹时间点之间的互信息受到平均运动速度以及运动的加速/减速段的强烈影响。熵分析揭示了运动轨迹和结果变异性中的结构,而这一结构在离散瞄准运动的传统分布分析中被掩盖了。