Initial and Stopping Condition in Possibility Principal Factor Rotation

Houju Hori Jr.
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引用次数: 1

Abstract

Uemura [1] discovered the mapping formula for Type 1 Vague events and presented an alternative problem as an example of its application. Since it is well known that the alternative problem leads to sequential Bayesian inference, the flow of subsequent research was to make the mapping formula multidimensional, to introduce the concept of time, and to derive a Markov (decision) process. Furthermore, we formulated stochastic differential equations to derive them [2]. This paper refers to type 2 vague events based on a second-order mapping equation. This quadratic mapping formula gives a certain rotation named as possibility principal factor rotation by transforming a non-mapping function by a relation between two mapping functions. In addition, the derivation of the Type 2 Complex Markov process and the initial and stopping conditions in this rotation are mentioned
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可能性主因子旋转的初始和停止条件
Uemura[1]发现了类型1模糊事件的映射公式,并提出了一个替代问题作为其应用的例子。由于众所周知,可选问题会导致顺序贝叶斯推理,因此后续研究的流程是使映射公式多维化,引入时间概念,并推导出马尔可夫(决策)过程。进一步,我们建立了随机微分方程来推导它们。本文讨论了基于二阶映射方程的二类模糊事件。该二次映射公式通过两个映射函数之间的关系对非映射函数进行变换,得到一定的旋转,称为可能主因子旋转。此外,还讨论了2型复马尔可夫过程的推导以及旋转的初始条件和停止条件
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