Modification of posterior probability variable with frequency factor according to Bayes Theorem

Mehmet Sait Vural, Muhammed Telceken
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引用次数: 1

Abstract

Probability theory is a branch of science that statistically analyzes random events. Thanks to this branch of science, machine learning techniques are used inferences for the prediction or recommendation system. One of the statistical methods at the forefront of these techniques is Bayesian theory. Bayes is a simple mathematical formula used to calculate conditional probabilities and obtain the best estimates. The two most important parts of the formula are the concepts of a priori probability and posterior/conditional probability. In a priori probability, the most rational assessment of the probability of an outcome is made based on the available data, while in posterior probability, the probability of the event occurring is calculated after considering all evidence or data. In this study, a new mathematical model is presented to calculate the posterior probability variable of Bayesian theory more precisely. According to this new mathematical model, equal priority probabilities of some variables should be recalculated according to frequency. Calculations are applied to two nodes. The first of these two nodes is the node consisting of the existing data, and the second is the queried node. The positive frequency value will be applied when the variables consisting of existing data and having the same a priori probabilities are found at the questioned node, and negative frequency value will be applied for the other variables. Thus, while calculating a standard probability value according to Bayesian Theory, frequency-based values are taken into account with the help of the newly created mathematical model. With the help of these frequencies, the modification of the system reveals more precise results according to these two basic principles. The results obtained were tested with the cross validation method and high accuracy rates were determined.
根据贝叶斯定理,用频率因子修饰后验概率变量
概率论是统计分析随机事件的科学分支。由于这一科学分支,机器学习技术被用于预测或推荐系统的推理。这些技术的前沿统计方法之一是贝叶斯理论。贝叶斯是一个简单的数学公式,用于计算条件概率并获得最佳估计。公式中最重要的两个部分是先验概率和后验/条件概率的概念。在先验概率中,根据现有的数据对某一结果的概率做出最合理的评估;在后验概率中,考虑所有证据或数据后计算事件发生的概率。本文提出了一种新的数学模型,可以更精确地计算贝叶斯后验概率变量。根据这个新的数学模型,一些变量的等优先概率需要根据频率重新计算。计算应用于两个节点。这两个节点中的第一个是由现有数据组成的节点,第二个是被查询的节点。当在被质疑节点上发现由现有数据组成且具有相同先验概率的变量时,将应用正频率值,其他变量将应用负频率值。因此,在根据贝叶斯理论计算标准概率值的同时,在新创建的数学模型的帮助下,考虑了基于频率的值。利用这些频率,根据这两个基本原理对系统进行修改,得到更精确的结果。用交叉验证法对所得结果进行了验证,获得了较高的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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