Function estimation: Quantifying individual differences of hand-drawn functions.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Daniel R Little, Richard M Shiffrin, Simon M Laham
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引用次数: 0

Abstract

Graphical perception is an important part of the scientific endeavour, and the interpretation of graphical information is increasingly important among educated consumers of popular media, who are often presented with graphs of data in support of different policy positions. However, graphs are multidimensional and data in graphs are comprised not only of overall global trends but also local perturbations. We presented a novel function estimation task in which scatterplots of noisy data that varied in the number of data points, the scale of the data, and the true generating function were shown to observers. 170 psychology undergraduates with mixed experience of mathematical functions were asked to draw the function that they believe generated the data. Our results indicated not only a general influence of various aspects of the presented graph (e.g., increasing the number of data points results in smoother generated functions) but also clear individual differences, with some observers tending to generate functions that track the local changes in the data and others following global trends in the data.

Abstract Image

函数估计:量化手绘函数的个体差异。
图形感知是科学工作的重要组成部分,对于受过教育的大众媒体消费者来说,图形信息的解读也越来越重要,他们经常会看到支持不同政策立场的数据图表。然而,图表是多维的,图表中的数据不仅包括总体趋势,还包括局部扰动。我们提出了一个新颖的函数估计任务,即向观察者展示不同数据点数量、数据规模和真实生成函数的噪声数据散点图。170名心理学本科生被要求画出他们认为产生数据的函数,他们对数学函数的经验参差不齐。我们的结果表明,所展示图形的各个方面不仅具有普遍影响(例如,增加数据点的数量会使生成的函数更平滑),而且还存在明显的个体差异,一些观察者倾向于生成跟踪数据局部变化的函数,而另一些观察者则倾向于生成跟踪数据整体趋势的函数。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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