检验大数据分析调查财务报告质量的能力:文献计量学综合分析

IF 3.3 Q1 BUSINESS, FINANCE
Ahmed Aboelfotoh, Ahmed Mohamed Zamel, Ahmad A. Abu-Musa, Frendy  , Sara H. Sabry, Hosam Moubarak
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引用次数: 0

摘要

目的本研究旨在考察大数据分析(BDA)调查财务报告质量(FRQ)的能力,确定该研究领域的知识基础和概念结构,并探索随着时间推移而使用的BDA技术。研究结果本研究揭示了使用 BDA 调查 FRQ 的知识结构包括三个集群。这些集群包括应用数据挖掘检测财务报告欺诈(FRF)、使用机器学习(ML)检查 FRQ 以及检测作为 FRQ 度量的收益管理。此外,研究结果表明,通过提供各种预测和检测 FRF 和 EM 的模型,ML 和 DM 算法是调查 FRQ 的最有效技术。此外,BDA 还提供了文本挖掘技术来检测叙述性报告中的管理欺诈行为。研究结果表明,人工智能、深度学习和 ML 是当前流行的方法,预计在未来几年内仍将继续使用。原创性/价值 据作者所知,本研究首次对 BDA 在调查 FRQ 中的使用现状进行了全面分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Examining the ability of big data analytics to investigate financial reporting quality: a comprehensive bibliometric analysis

Purpose

This study aims to examine the ability of big data analytics (BDA) to investigate financial reporting quality (FRQ), identify the knowledge base and conceptual structure of this research field and explore BDA techniques used over time.

Design/methodology/approach

This study uses a comprehensive bibliometric analysis approach (performance analysis and science mapping) using software packages, including Biblioshiny and VOSviewer. Multiple analyses are conducted, including authors, sources, keywords, co-citations, thematic evolution and trend topic analysis.

Findings

This study reveals that the intellectual structure of using BDA in investigating FRQ encompasses three clusters. These clusters include applying data mining to detect financial reporting fraud (FRF), using machine learning (ML) to examine FRQ and detecting earnings management as a measure of FRQ. Additionally, the results demonstrate that ML and DM algorithms are the most effective techniques for investigating FRQ by providing various prediction and detection models of FRF and EM. Moreover, BDA offers text mining techniques to detect managerial fraud in narrative reports. The findings indicate that artificial intelligence, deep learning and ML are currently trending methods and are expected to continue in the coming years.

Originality/value

To the best of the authors’ knowledge, this study is the first to provide a comprehensive analysis of the current state of the use of BDA in investigating FRQ.

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来源期刊
CiteScore
5.80
自引率
16.00%
发文量
65
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