Type 2 Possibility Factor Rotation in No-Data Problem

Houju Hori
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Abstract

Uemura [1] discovered a mapping formula that transforms and maps the state of nature into fuzzy events with a membership function that expresses the degree of attribution. In decision theory in no-data problems, sequential Bayesian inference is an example of this mapping formula, and Hori et al. [2] made the mapping formula multidimensional, introduced the concept of time, to Markov (decision) processes in fuzzy events under ergodic conditions, and derived stochastic differential equations in fuzzy events, although in reverse. In this paper, we focus on type 2 fuzzy. First, assuming that Type 2 Fuzzy Events are transformed and mapped onto the state of nature by a quadratic mapping formula that simultaneously considers longitudinal and transverse ambiguity, the joint stochastic differential equation representing these two ambiguities can be applied to possibility principal factor analysis if the weights of the equations are orthogonal. This indicates that the type 2 fuzzy is a two-dimensional possibility multivariate error model with longitudinal and transverse directions. Also, when the weights are oblique, it is a general possibility oblique factor analysis. Therefore, an example of type 2 fuzzy system theory is the possibility factor analysis. Furthermore, we show the initial and stopping condition on possibility factor rotation, on the base of possibility theory.
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无数据问题中的第2类可能性因子旋转
Uemura[1]发现了一个映射公式,它将自然状态转换并映射为带有表示归因程度的隶属函数的模糊事件。在无数据问题的决策理论中,顺序贝叶斯推理就是该映射公式的一个例子,Hori等人[2]将映射公式多维化,将时间的概念引入到遍历条件下模糊事件中的马尔可夫(决策)过程中,并推导出模糊事件中的随机微分方程,尽管是相反的。本文主要研究二类模糊。首先,假设2型模糊事件通过同时考虑纵向和横向模糊性的二次映射公式转换并映射到自然状态,如果方程的权重是正交的,则表示这两种模糊性的联合随机微分方程可以应用于可能性主因子分析。这表明2型模糊是一个纵向和横向的二维可能性多元误差模型。同样,当权重是倾斜的,它是一个一般的可能性倾斜的因素分析。因此,二类模糊系统理论的一个例子是可能性因子分析。在可能性理论的基础上,给出了可能性因子旋转的初始条件和停止条件。
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