提出了基于人工神经网络技术和粒子群优化算法,利用隧道现象建立的Benish模型来识别操纵利润的公司

Farhad Azadi, M. Ghanbari, Babak Jamshidi Navid, Javad Masodi
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引用次数: 0

摘要

本研究的目的是利用隧道现象和累积粒子运动优化算法对贝叶斯利润管理模型进行优化。本研究的统计人口包括在德黑兰证券交易所上市的公司和研究的公司数量,其中包括2015年至2020年期间上市的196家公司。研究方法是描述性相关的,就因果相关变量而言是描述性相关的,就目的和事件而言是事后相关的。为了对数据进行分析,采用了回归、人工神经网络和累积粒子运动优化算法。模型分析结果表明,各财务比率对洞察力的盈余管理预测有显著影响,对INE隧道现象的盈余管理预测影响最大,对财务杠杆的影响最小。对所设计的神经网络的估计结果表明,利用累积粒子优化算法对德黑兰证券交易所上市公司的利润管理进行预测是可以接受的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Presenting the developed model of Benish by using tunneling phenomena based on artificial neural network technique and particle swarm optimization algorithm to identifying profit manipulating companies
The purpose of this study is to optimize the Bayesian profit management model with tunneling phenomenon and cumulative particle motion optimization algorithm. The statistical population of the study included companies listed in the Tehran Stock Exchange and the number of companies under study, including 196 companies listed during the years 2015 to 2020. The research method is descriptive-correlational and in terms of causal-correlational variables and in terms of purpose and event, it is post-event. In order to analyze the data, regression and artificial neural network and cumulative particle motion optimization algorithm were used. The results of the model analysis showed that all financial ratios had a significant effect on the earnings management prediction of insight and the greatest impact on the prediction of earnings management was on the INE tunneling phenomenon and the least on financial leverage. The results of the estimation of the designed neural networks show that the use of cumulative particle optimization algorithm to predict the Profit management for companies listed in Tehran Stock Exchange is acceptable .
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