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A comparison of fuzzy strategies for corporate acquisition analysis

机译:企业收购分析的模糊策略比较

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Analysing all prospective companies for acquisition in large market sectors is an onerous task. A strategy that results in a shortlist of companies that meet certain basic criteria is required. The short-listed companies can then be further investigated in more detail later if desired. Fuzzy logic systems (FLSs) imbued with the expertise of a focal organisation's financial experts can be of great assistance in this process. In this paper an investigation into the suitability of FLSs for acquisition analysis is presented. The nuances of training and tuning are discussed. In particular, the difficulty of obtaining suitable amounts of expert data is a recurring theme throughout the paper. A strategy for circumventing this issue is presented that relies on the design of a conventional fuzzy logic rule base with the assistance of a financial expert. With the rule base created, various scenarios such as the simulation of multiple experts and the creation of expert training data are investigated. In particular, two scenarios for the creation of simulated expert data are presented. In the first the responses from the different experts are averaged, and in the second scenario the responses from all the different experts are preserved in the training data. This paper builds on previous work with scalable membership functions, however, the use of fuzzy C-means clustering and backpropagation training, are new developments. Additionally, a type-2 FLS is developed and its potential advantages are discussed for this application. The type-2 system facilitates the inclusion of the opinions of multiple experts. Both the type-1 and type-2 FLSs were trained using the backpropagation algorithm with early stopping and verified with five-fold cross-validation. Multiple runs of the five-fold method were conducted with different random orderings of the data. For this particular application, the type-1 system performed comparably with the type-2 system despite the considerable amount of variation in the expert training data. The training results have proven the methods to be capable of efficient tuning of parameters, and of reliable ranking of prospective companies.
机译:分析所有潜在公司以在大型市场领域进行收购是一项艰巨的任务。需要一种能够使符合某些基本标准的公司入围的战略。如果需要,可以稍后对入围的公司进行更详细的调查。模糊逻辑系统(FLS)具有焦点组织的财务专家的专业知识,可以在此过程中提供很大的帮助。在本文中,对FLS进行采集分析的适用性进行了研究。讨论了训练和调优的细微差别。特别是,难以获得合适数量的专家数据是整篇论文中反复提到的主题。提出了一种规避此问题的策略,该策略依赖于在金融专家的协助下常规模糊逻辑规则库的设计。创建规则库后,将研究各种场景,例如模拟多个专家和创建专家培训数据。特别是,提出了两种用于创建模拟专家数据的方案。首先,对来自不同专家的响应进行平均,而在第二种场景中,所有不同专家的响应都保存在训练数据中。本文基于具有可伸缩成员资格功能的先前工作,但是,模糊C均值聚类和反向传播训练的使用是新的发展。此外,针对此应用开发了2型FLS,并讨论了其潜在优势。 2型系统有助于纳入多位专家的意见。 1型和2型FLS均使用反向传播算法进行了早期停止训练,并进行了五次交叉验证。使用不同的数据随机顺序进行了五重方法的多次运行。对于此特定应用,尽管专家培训数据有相当大的变化,但类型1系统与类型2系统的性能相当。培训结果证明了该方法能够有效调整参数,并能够对潜在公司进行可靠排名。

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