Paulson School of Engineering and Applied Sciences, Harvard University, Cambridge, MA, 02138, USA.
Department of Psychology, New York University, New York, NY, 10003, USA.
Sci Rep. 2018 Aug 27;8(1):12906. doi: 10.1038/s41598-018-30314-y.
Geometric reasoning has an inherent dissonance: its abstract axioms and propositions refer to perfect, idealized entities, whereas its use in the physical world relies on dynamic perception of objects. How do abstract Euclidean concepts, dynamics, and statistics come together to support our intuitive geometric reasoning? Here, we address this question using a simple geometric task - planar triangle completion. An analysis of the distribution of participants' errors in localizing a fragmented triangle's missing corner reveals scale-dependent deviations from a deterministic Euclidean representation of planar triangles. By considering the statistical physics of the process characterized via a correlated random walk with a natural length scale, we explain these results and further predict participants' estimates of the missing angle, measured in a second task. Our model also predicts the results of a categorical reasoning task about changes in the triangle size and shape even when such completion strategies need not be invoked. Taken together, our findings suggest a critical role for noisy physical processes in our reasoning about elementary Euclidean geometry.
其抽象的公理和命题指的是完美、理想化的实体,而其在物理世界中的应用依赖于对物体的动态感知。抽象的欧几里得概念、动力学和统计学是如何结合在一起支持我们直观的几何推理的?在这里,我们使用一个简单的几何任务——平面三角形补全来解决这个问题。对参与者在定位一个残缺三角形缺失角时的错误分布进行分析,揭示了从平面三角形的确定性欧几里得表示出发的尺度相关偏差。通过考虑该过程的统计物理学,该过程通过具有自然长度尺度的相关随机游走来描述,我们解释了这些结果,并进一步预测了参与者在第二个任务中对缺失角度的估计。我们的模型甚至可以预测关于三角形大小和形状变化的类别推理任务的结果,即使不必调用这种补全策略。总之,我们的发现表明,在我们对基本欧几里得几何的推理中,嘈杂的物理过程起着关键作用。