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SINBAD automation of scientific process: From hidden factor analysis to theory synthesis.

机译:SINBAD科学过程的自动化:从隐藏因素分析到理论综合。

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摘要

Modern science is turning to progressively more complex and data-rich subjects, which challenges the existing methods of data analysis and interpretation. Consequently, there is a pressing need for development of ever more powerful methods of extracting order from complex data and for automation of all steps of the scientific process. Virtual Scientist is a set of computational procedures that automate the method of inductive inference to derive a theory from observational data dominated by nonlinear regularities. The procedures utilize SINBAD---a novel computational method of nonlinear factor analysis that is based on the principle of maximization of mutual information among non-overlapping sources (Imax), yielding higher-order features of the data that reveal hidden causal factors controlling the observed phenomena. One major advantage of this approach is that it is not dependent on a particular choice of learning algorithm to use for the computations. The procedures build a theory of the studied subject by finding inferentially useful hidden factors, learning interdependencies among its variables, reconstructing its functional organization, and describing it by a concise graph of inferential relations among its variables. The graph is a quantitative model of the studied subject, capable of performing elaborate deductive inferences and explaining behaviors of the observed variables by behaviors of other such variables and discovered hidden factors. The set of Virtual Scientist procedures is a powerful analytical and theory-building tool designed to be used in research of complex scientific problems characterized by multivariate and nonlinear relations.
机译:现代科学正在转向越来越复杂和数据丰富的学科,这挑战了现有的数据分析和解释方法。因此,迫切需要开发越来越强大的方法来从复杂数据中提取订单,以及自动化科学过程的所有步骤。虚拟科学家(Virtual Scientist)是一组计算过程,可自动执行归纳推理方法,以非线性规则为主导的观测数据推导出理论。该程序利用SINBAD-一种新的非线性因素分析计算方法,该方法基于最大化非重叠源(Imax)之间的互信息的原理,从而产生数据的高阶特征,从而揭示了控制因果关系的隐藏因果因素。观察到的现象。这种方法的一个主要优点是它不依赖于特定的学习算法选择来进行计算。该程序通过发现推论有用的隐藏因素,学习其变量之间的相互依存关系,重建其功能组织并通过其变量之间的推论关系的简明图形来描述该学科,从而建立了该理论的理论。该图是研究对象的定量模型,能够执行详尽的演绎推断,并通过其他此类变量和发现的隐藏因素的行为来解释观察到的变量的行为。虚拟科学家程序集是功能强大的分析和理论构建工具,旨在用于研究以多元和非线性关系为特征的复杂科学问题。

著录项

  • 作者

    Kursun, Olcay.;

  • 作者单位

    University of Central Florida.;

  • 授予单位 University of Central Florida.;
  • 学科 Computer science.
  • 学位 Ph.D.
  • 年度 2004
  • 页码 93 p.
  • 总页数 93
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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