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Sparse Bayesian Model and Artificial Intelligence in Enterprise Goodwill Evaluation and Dynamic Management

机译:稀疏贝叶斯模型和人工智能在企业商誉评估与动态管理中的应用

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摘要

With the rapid development of mobile Internet information technology, automated search text has occupied a leading position in many industries. This article not only makes a detailed case study on the basic working principles of text feature extraction and classification methods but also makes in-depth case analysis on the extraction algorithm and its basic concepts as well as some problems that may be encountered in text feature classification and explained their advantages and disadvantages in detail. Aiming at the shortcomings of various algorithms, a sparse Bayesian probability model is proposed, so that it can better meet the requirements of database and text classification and further improve related technologies. Nowadays, the evaluation of China's goodwill value, whether in theory or in practice, usually simply adopts traditional fixed asset evaluation methods. However, traditional methods have the disadvantages of ignoring comparisons with the same industry and failing to take into account different factors that affect corporate goodwill. This article adopts a new method that combines traditional methods to evaluate goodwill and tries to improve the results obtained by this traditional method to make the evaluation results more accurate. Then, by studying the adaptability of traditional Chinese risk assessment and forecasting models, a comprehensive comparison is made. Aiming at the embarrassing situation that the current methods of corporate excess asset return risk assessment difficult to predict in practice, the new gray factors evaluation models are creatively studied.
机译:随着移动互联网信息技术的飞速发展,自动搜索文本在众多行业中占据了主导地位。本文不仅对文本特征提取和分类方法的基本工作原理进行了详细的案例研究,还对文本特征提取算法及其基本概念以及文本特征分类中可能遇到的一些问题进行了深入的案例分析,并详细阐述了它们的优缺点。针对各种算法的不足,提出了一种稀疏贝叶斯概率模型,使其能够更好地满足数据库和文本分类的要求,进一步完善相关技术。如今,我国商誉价值的评价,无论是理论上还是实践上,通常都简单地采用传统的固定资产评价方法。然而,传统方法的缺点是忽略了与同行业的比较,没有考虑到影响企业商誉的不同因素。本文采用一种结合传统商誉评价方法的新方法,并尝试对这种传统方法得到的结果进行改进,使评价结果更加准确。然后,通过研究中国传统风险评估和预测模型的适应性,进行综合比较。针对当前企业超额资产收益风险评估方法在实践中难以预测的尴尬局面,创造性地研究了新的灰色因素评估模型。

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