基于新对称分解的独立视觉数据分析

K. Yamamoto, S. Tomizawa
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引用次数: 5

摘要

问题陈述:首先,本研究考虑如何将概率对称结构分解为两种结构。其次,本研究通过(1)英国女性、(2)日本某大学学生和(3)日本东京小学生的三种独立远距离视力数据,推断出表明右眼比左眼更好(或更差)的未知概率结构。本文提出了一种新的概率对称分解模型,并利用该模型对视觉数据进行了分析。方法:本研究考虑了一个新的分解定理,对于概率对称模型(表明右眼视觉与左眼视觉对称)成立。并利用该分解方法对视觉数据进行了分析。结果:从统计方法中,我们可以看到,(1)对于女性的视觉数据,右眼比左眼和右眼的意思是不等于的意思是左眼,(2)学生的视觉数据,右眼比左眼和右眼的意思是不等于的意思是左眼视力和(3)数据的学生,右眼是对称的左眼和右眼的平均值等于左眼的意思。结论:当对称模型拟合数据较差时,这种新的分解方法有助于判断分解后的两种模型中哪一种影响更大。我们可以更详细地看到视觉数据的不对称结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Unaided Vision Data using New Decomposition of Symmetry
Problem statement: First, this study considers how the structure of symmetry for probabilities is decomposed into two structures. Secondly, this study infers the structure of unknown probabilities which indicates how the right eye is better (or worse) than the left eye for three kinds of data on unaided distance vision of (1) women in Britain, (2) students in an university of Japan and (3) pupils in elementary schools in Tokyo, Japan. This study proposes a new decomposition of symmetry model for probabilities and analyzes these vision data using the decomposition. Approach: This study considers a new decomposition theorem that for the probabilities the symmetry model (indicates that the right eye vision is symmetric to the left eye vision) holds. Also this study analyzes the vision data using this decomposition. Results: From the statistical approach, we can see that (1) for the vision data of women, the right eye is better than the left eye and the mean of right eye is not equal to the mean of left eye, (2) for the vision data of students, the right eye is worse than the left eye and the mean of right eye is not equal to the mean of left eye and (3) for the vision data of pupils, the right eye is symmetric to the left eye and the mean of right eye is equal to the mean of left eye. Conclusion: When the symmetry model fits the data poorly, this new decomposition is useful for seeing which of decomposed two models influences stronger. We can see the structure of asymmetry for vision data in more details.
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