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T-Pattern Detection and Analysis (TPA) With THEME TM : A Mixed Methods Approach

机译:具有主题TM的T形图案检测和分析(TPA):混合方法方法

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This work, which was started in the early 1970s, was inspired by social interaction analysis based on direct observation and careful coding of behaviors according to a list of behavioral (mostly ethological) categories, especially the ethological work of N. Tinbergen, K. Lorenz, and K. von Frisch, for which they shared a Nobel Prize in 1973 in Medicine or Physiology but also H. Montagner’s ethological analyses of interactions in social insects and children. S. Duncan’s psychological and linguistic research on turn-taking in human interactions provided great inspiration, and so did Chomsky’s work on syntactic structure and Skinner’s probabilistic real-time functional analysis and their consequent debate. A hypothesis concerning numerous kinds of temporal and spatial natural and especially biological structures, the T-pattern is a hierarchical self-similar fractal-like structure that recurs with significant translational symmetry on a single discrete dimension, initially real time. It also points to profound self-similarity across many levels of biological spatio-temporal organization, as it seems characteristic of molecular structures such as genes and a multitude of recurrent motives on DNA and its 3D generalization corresponding to (3D) folded proteins. Developed initially to facilitate empirical analysis, the T-pattern and its detection algorithms were first presented in AI ( Magnusson, 1981 ) and Applied Statistics ( Magnusson, 1983 ) through THEME (3 k Fortran IV) software using an evolution algorithm. It is now over 300 k lines of code, runs under Windows, and, more recently, uses parallel processing for increased speed. This has allowed abundant detection of hidden structure in numerous kinds of biological phenomena at highly varied scales, from human behavior at timescales of days ( Hirschenhauser et al., 2002 ; Hirschenhauser and Frigerio, 2005 ) to interactions of many individual neurons simultaneously registered at a temporal resolution of 10 –6 s in neuronal networks in rat brains to ongoing work on T-patterns in DNA molecules at a spatial nano-scale. T-pattern detection and analysis (TPA) thus mix qualitative and quantitative analyses, as T-patterns themselves are artificial categories composed of recurring coding categories with special real-scale statistical relations between their instances. After their detection, T-patterns are thus analyzed much as are other behavioral categories.
机译:在20世纪70年代初开始的这项工作受到基于直接观察和根据行为(主要是道德学)类别的直接观察和仔细编码行为的社会互动分析的启发,尤其是N. Tinbergen,K. Lorenz的道德工作他们在1973年在医学或生理学中分享了诺贝尔奖,而且在社会昆虫和儿童中的相互作用的道德学区分析了1973年的诺贝尔奖。 S. Duncan对人类互动的转型的心理和语言研究提供了极大的灵感,因此乔姆斯基的概要工作和Skinner的概率实时功能分析以及其所需的辩论。关于多种时间和空间自然尤其是生物结构的假设,T形图案是一种分层自相似的分形结构,其在单个离散维度上具有显着的平移对称,最初是实时的。它还指出跨多个水平的生物时代组织的自相似性,因为它似乎是基因结构的特征,例如基因和众多反复性动机及其对应于(3D)折叠蛋白的3D概括。最初开发以促进经验分析,首先在AI(Magnamson,1981)和应用统计(Magnusson,1983)中通过主题(3 K FORTRAN IV)软件来介绍T形图案及其检测算法。它现在超过300克的代码,在Windows下运行,并且最近,使用并行处理增加速度。这使得在高度不同的尺度中,从数量高度的尺度允许大量的生物现象中隐藏结构(Hirschenhauser等,2002; Hirschenhauser和Frigerio,2005)的人类行为,许多单独的神经元在A中相互作用大鼠大鼠神经元网络中10 -6秒的时间分辨率,在空间纳米尺度下进行DNA分子T型模式的作用。因此,T形模式检测和分析(TPA)混合了定性和定量分析,因为T形模式本身是由经常性编码类别组成的人工类别,其实例之间具有特殊的实际规模统计关系。在其检测之后,因此分析了T形模式,与其他行为类别一样多。

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