Can intangible assets predict future performance? A deep learning approach

IF 4.3 Q2 MANAGEMENT
Pechlivanidis Eleftherios, Ginoglou Dimitrios, Barmpoutis Panagiotis
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引用次数: 3

Abstract

Purpose The aim of this study is to evaluate of the predictive ability of goodwill and other intangible assets on forecasting corporate profitability. Subsequently, this study compares the efficiency of deep learning model to that of other machine learning models such as random forest (RF) and support vector machine (SVM) as well as traditional statistical methods such as the linear regression model. Design/methodology/approach Studies confirm that goodwill and intangibles are valuable assets that give companies a competitive advantage to increase profitability and shareholders’ returns. Thus, by using as sample Greek-listed financial data, this study investigates whether or not the inclusion of goodwill and intangible assets as input variables in this modified deep learning models contribute to the corporate profitability prediction accuracy. Subsequently, this study compares the modified long-short-term model with other machine learning models such as SVMs and RF as well as the traditional panel regression model. Findings The findings of this paper confirm that goodwill and intangible assets clearly improve the performance of a deep learning corporate profitability prediction model. Furthermore, this study provides evidence that the modified long short-term memory model outperforms other machine learning models such as SVMs and RF , as well as traditional statistical panel regression model, in predicting corporate profitability. Research limitations/implications Limitation of this study includes the relatively small amount of data available. Furthermore, the aim is to challenge the authors’ modified long short-term memory by using listed corporate data of Greece, a code-law country that suffered severely during the recent fiscal crisis. However, this study proposes that future research may apply deep learning corporate profitability models on a bigger pool of data such as STOXX Europe 600 companies. Practical implications Subsequently, the authors believe that their paper is of interest to different professional groups, such as financial analysts and banks, which the authors’ paper can support in their corporate profitability evaluation procedure. Furthermore, as well as shareholders are concerned, this paper could be of benefit in forecasting management’s potential to create future returns. Finally, management may incorporate this model in the evaluation process of potential acquisitions of other companies. Originality/value The contributions of this work can be summarized in the following aspects. This study provides evidence that by including goodwill and other intangible assets in the authors’ input portfolio, prediction errors represented by root mean squared error are reduced. A modified long short-term memory model is proposed to predict the numerical value of the profitability (or the profitability ratio) in contrast to other studies which deal with trend predictions, i.e. the binomial output result of positive or negative earnings. Finally, posing an extra challenge to the authors’ deep learning model, the authors’ used financial statements according to International Financial Reporting Standard data of listed companies in Greece, a code-law country that suffered during the recent fiscal debt crisis, heavily influenced by tax legislation and characterized by its lower investors’ protection compared to common-law countries.
无形资产能预测未来业绩吗?深度学习方法
本研究的目的是评估商誉和其他无形资产对企业盈利能力的预测能力。随后,本研究将深度学习模型与随机森林(random forest, RF)、支持向量机(support vector machine, SVM)等其他机器学习模型以及线性回归模型等传统统计方法的效率进行了比较。设计/方法/方法研究证实,商誉和无形资产是有价值的资产,能给公司带来竞争优势,提高盈利能力和股东回报。因此,本研究以希腊上市公司的财务数据为样本,考察将商誉和无形资产作为输入变量纳入改进的深度学习模型是否有助于企业盈利能力预测的准确性。随后,本研究将改进的长短期模型与其他机器学习模型(如svm和RF)以及传统的面板回归模型进行了比较。本文的研究结果证实,商誉和无形资产明显提高了深度学习企业盈利能力预测模型的绩效。此外,本研究还提供了证据,证明改进的长短期记忆模型在预测企业盈利能力方面优于其他机器学习模型,如svm和RF,以及传统的统计面板回归模型。研究局限性/启示本研究的局限性包括可获得的数据相对较少。此外,本文的目的是通过使用希腊的上市公司数据来挑战作者修改后的长短期记忆。希腊是一个在最近的财政危机中遭受严重打击的法典国家。然而,本研究提出,未来的研究可能会将深度学习企业盈利模型应用于更大的数据池,如斯托克欧洲600公司。随后,作者认为他们的论文对不同的专业群体,如金融分析师和银行感兴趣,作者的论文可以为他们的公司盈利能力评估程序提供支持。此外,对于股东而言,本文也有助于预测管理层创造未来回报的潜力。最后,管理层可以将该模型纳入对其他公司潜在收购的评估过程中。这项工作的贡献可以概括为以下几个方面。本研究提供的证据表明,通过将商誉和其他无形资产纳入作者的投入组合,以均方根误差表示的预测误差减少了。本文提出了一种改进的长短期记忆模型来预测盈利能力(或盈利比率)的数值,而不是其他研究处理趋势预测,即正收益或负收益的二项输出结果。最后,对作者的深度学习模型提出了额外的挑战,作者根据希腊上市公司的国际财务报告标准数据使用了财务报表,希腊是一个在最近的财政债务危机中遭受严重影响的法典国家,受税收立法的严重影响,其特征是与普通法国家相比,其投资者保护较低。
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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来源期刊
CiteScore
7.90
自引率
3.00%
发文量
28
期刊介绍: The International Journal of Accounting & Information Management focuses on publishing research in accounting, finance, and information management. It specifically emphasizes the interaction between these research areas on an international scale and within both the private and public sectors. The aim of the journal is to bridge the knowledge gap between researchers and practitioners by covering various issues that arise in the field. These include information systems, accounting information management, innovation and technology in accounting, accounting standards and reporting, and capital market efficiency.
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