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The improved business valuation model for RFID company based on the community mining method

机译:基于社区挖掘方法的RFID公司业务评估模型的改进

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摘要

Nowadays, the appetite for the investment and mergers and acquisitions (M&A) activity in RFID companies is growing rapidly. Although the huge number of papers have addressed the topic of business valuation models based on statistical methods or neural network methods, only a few are dedicated to constructing a general framework for business valuation that improves the performance with network graph (NG) and the corresponding community mining (CM) method. In this study, an NG based business valuation model is proposed, where real options approach (ROA) integrating CM method is designed to predict the company’s net profit as well as estimate the company value. Three improvements are made in the proposed valuation model: Firstly, our model figures out the credibility of the node belonging to each community and clusters the network according to the evolutionary Bayesian method. Secondly, the improved bacterial foraging optimization algorithm (IBFOA) is adopted to calculate the optimized Bayesian posterior probability function. Finally, in IBFOA, bi-objective method is used to assess the accuracy of prediction, and these two objectives are combined into one objective function using a new Pareto boundary method. The proposed method returns lower forecasting error than 10 well-known forecasting models on 3 different time interval valuing tasks for the real-life simulation of RFID companies.
机译:如今,对RFID公司的投资,并购(M&A)活动的需求正在迅速增长。尽管有大量论文讨论了基于统计方法或神经网络方法的业务评估模型,但是只有少数几篇论文致力于构建通用的业务评估框架,以提高网络图(NG)和相应社区的绩效挖掘(CM)方法。在这项研究中,提出了一个基于NG的业务评估模型,其中设计了结合CM方法的实物期权方法(ROA)来预测公司的净利润以及估计公司价值。所提出的估值模型进行了三个改进:首先,我们的模型确定了每个社区的节点的信誉,并根据演化贝叶斯方法对网络进行聚类。其次,采用改进的细菌觅食优化算法(IBFOA)来计算优化的贝叶斯后验概率函数。最后,在IBFOA中,使用双目标方法评估预测的准确性,并使用新的Pareto边界方法将这两个目标组合为一个目标函数。在3种不同的时间间隔评估任务中,所提出的方法所产生的预测误差比10个著名的预测模型的预测误差要低,从而可以对RFID公司进行真实的模拟。

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  • 作者

    Shugang Li; Zhaoxu Yu;

  • 作者单位
  • 年(卷),期 -1(12),5
  • 年度 -1
  • 页码 e0175872
  • 总页数 15
  • 原文格式 PDF
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