{"title":"NLP 情感分析与会计透明度:财务记录保存的新时代","authors":"A. Faccia, Julie McDonald, Babu George","doi":"10.3390/computers13010005","DOIUrl":null,"url":null,"abstract":"Transparency in financial reporting is crucial for maintaining trust in financial markets, yet fraudulent financial statements remain challenging to detect and prevent. This study introduces a novel approach to detecting financial statement fraud by applying sentiment analysis to analyse the textual data within financial reports. This research aims to identify patterns and anomalies that might indicate fraudulent activities by examining the language and sentiment expressed across multiple fiscal years. The study focuses on three companies known for financial statement fraud: Wirecard, Tesco, and Under Armour. Utilising Natural Language Processing (NLP) techniques, the research analyses polarity (positive or negative sentiment) and subjectivity (degree of personal opinion) within the financial statements, revealing intriguing patterns. Wirecard showed a consistent tone with a slight decrease in 2018, Tesco exhibited marked changes in the fraud year, and Under Armour presented subtler shifts during the fraud years. While the findings present promising trends, the study emphasises that sentiment analysis alone cannot definitively detect financial statement fraud. It provides insights into the tone and mood of the text but cannot reveal intentional deception or financial discrepancies. The results serve as supplementary information, enriching traditional financial analysis methods. This research contributes to the field by exploring the potential of sentiment analysis in financial fraud detection, offering a unique perspective that complements quantitative methods. It opens new avenues for investigation and underscores the need for an integrated, multidimensional approach to fraud detection.","PeriodicalId":46292,"journal":{"name":"Computers","volume":"13 12","pages":""},"PeriodicalIF":2.6000,"publicationDate":"2023-12-23","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"NLP Sentiment Analysis and Accounting Transparency: A New Era of Financial Record Keeping\",\"authors\":\"A. Faccia, Julie McDonald, Babu George\",\"doi\":\"10.3390/computers13010005\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Transparency in financial reporting is crucial for maintaining trust in financial markets, yet fraudulent financial statements remain challenging to detect and prevent. This study introduces a novel approach to detecting financial statement fraud by applying sentiment analysis to analyse the textual data within financial reports. This research aims to identify patterns and anomalies that might indicate fraudulent activities by examining the language and sentiment expressed across multiple fiscal years. The study focuses on three companies known for financial statement fraud: Wirecard, Tesco, and Under Armour. Utilising Natural Language Processing (NLP) techniques, the research analyses polarity (positive or negative sentiment) and subjectivity (degree of personal opinion) within the financial statements, revealing intriguing patterns. Wirecard showed a consistent tone with a slight decrease in 2018, Tesco exhibited marked changes in the fraud year, and Under Armour presented subtler shifts during the fraud years. While the findings present promising trends, the study emphasises that sentiment analysis alone cannot definitively detect financial statement fraud. It provides insights into the tone and mood of the text but cannot reveal intentional deception or financial discrepancies. 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引用次数: 0
摘要
财务报告的透明度对于维护金融市场的信任度至关重要,但欺诈性财务报表的检测和预防仍具有挑战性。本研究通过应用情感分析来分析财务报告中的文本数据,引入了一种检测财务报表欺诈的新方法。本研究旨在通过检查多个财政年度的语言和情感表达,识别可能表明欺诈活动的模式和异常现象。研究重点关注三家以财务报表欺诈著称的公司:Wirecard、Tesco 和 Under Armour。研究利用自然语言处理(NLP)技术,分析了财务报表中的极性(积极或消极情绪)和主观性(个人观点的程度),揭示了耐人寻味的模式。Wirecard 在 2018 年显示出一致的基调,但略有下降;Tesco 在欺诈年显示出明显的变化;Under Armour 在欺诈年显示出更微妙的变化。虽然研究结果呈现出可喜的趋势,但研究强调,仅靠情感分析并不能明确检测出财务报表欺诈。情感分析能让人深入了解文本的基调和情绪,但不能揭示蓄意欺骗或财务差异。研究结果可作为补充信息,丰富传统的财务分析方法。这项研究通过探索情感分析在财务欺诈检测中的潜力,为该领域做出了贡献,提供了一个补充定量方法的独特视角。它开辟了新的调查途径,强调了采用综合、多维方法进行欺诈检测的必要性。
NLP Sentiment Analysis and Accounting Transparency: A New Era of Financial Record Keeping
Transparency in financial reporting is crucial for maintaining trust in financial markets, yet fraudulent financial statements remain challenging to detect and prevent. This study introduces a novel approach to detecting financial statement fraud by applying sentiment analysis to analyse the textual data within financial reports. This research aims to identify patterns and anomalies that might indicate fraudulent activities by examining the language and sentiment expressed across multiple fiscal years. The study focuses on three companies known for financial statement fraud: Wirecard, Tesco, and Under Armour. Utilising Natural Language Processing (NLP) techniques, the research analyses polarity (positive or negative sentiment) and subjectivity (degree of personal opinion) within the financial statements, revealing intriguing patterns. Wirecard showed a consistent tone with a slight decrease in 2018, Tesco exhibited marked changes in the fraud year, and Under Armour presented subtler shifts during the fraud years. While the findings present promising trends, the study emphasises that sentiment analysis alone cannot definitively detect financial statement fraud. It provides insights into the tone and mood of the text but cannot reveal intentional deception or financial discrepancies. The results serve as supplementary information, enriching traditional financial analysis methods. This research contributes to the field by exploring the potential of sentiment analysis in financial fraud detection, offering a unique perspective that complements quantitative methods. It opens new avenues for investigation and underscores the need for an integrated, multidimensional approach to fraud detection.