Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Artificial neural network methodology in financial statements fraud: An empirical study in the property and real estate sector

View through CrossRef
Financial statements are crucial reports for stakeholders to assess a company’s financial condition. However, they are susceptible to fraud, with financial statement fraud representing the type with the largest losses in 2024, amounting to $766,000 (Association of Certified Fraud Examiners [ACFE], 2024). In response to this significant issue, the International Federation of Accountants (IFAC, 2009) issued the International Standard on Auditing (ISA) 240, which highlights three factors contributing to fraud: 1) pressure, 2) opportunity, and 3) rationalization, known as the fraud triangle. This study aims to analyze the impact of these fraud triangle factors on financial statement fraud in property and real estate sector companies listed on the stock exchanges of the Association of Southeast Asian Nations (ASEAN) countries during the 2021–2022 period. The study population comprises property and real estate companies in ASEAN, with a sample size of 170 companies, totaling 340 observations over a two-year period. Secondary data were collected from the OSIRIS database, and a purposive sampling technique was used. The data analysis method involved an artificial neural network (ANN) analysis with IBM SPSS 25 software. The prediction results showed an accuracy level of 81.3 percent. This study provides empirical evidence that pressure, opportunity, and rationalization significantly influence financial statement fraud, supporting the fraud triangle theory in explaining this phenomenon.
Title: Artificial neural network methodology in financial statements fraud: An empirical study in the property and real estate sector
Description:
Financial statements are crucial reports for stakeholders to assess a company’s financial condition.
However, they are susceptible to fraud, with financial statement fraud representing the type with the largest losses in 2024, amounting to $766,000 (Association of Certified Fraud Examiners [ACFE], 2024).
In response to this significant issue, the International Federation of Accountants (IFAC, 2009) issued the International Standard on Auditing (ISA) 240, which highlights three factors contributing to fraud: 1) pressure, 2) opportunity, and 3) rationalization, known as the fraud triangle.
This study aims to analyze the impact of these fraud triangle factors on financial statement fraud in property and real estate sector companies listed on the stock exchanges of the Association of Southeast Asian Nations (ASEAN) countries during the 2021–2022 period.
The study population comprises property and real estate companies in ASEAN, with a sample size of 170 companies, totaling 340 observations over a two-year period.
Secondary data were collected from the OSIRIS database, and a purposive sampling technique was used.
The data analysis method involved an artificial neural network (ANN) analysis with IBM SPSS 25 software.
The prediction results showed an accuracy level of 81.
3 percent.
This study provides empirical evidence that pressure, opportunity, and rationalization significantly influence financial statement fraud, supporting the fraud triangle theory in explaining this phenomenon.

Related Results

ANALISIS PENGARUH FAKTOR-FAKTOR PENYEBAB FRAUD DI SEKTOR PEMERINTAHAN KOTA BANJARBARU
ANALISIS PENGARUH FAKTOR-FAKTOR PENYEBAB FRAUD DI SEKTOR PEMERINTAHAN KOTA BANJARBARU
Abstract: Government agencies as budget users, implementers of popular programs and activities, are indicated to be real perpetrators of fraud. Some conditions in the work environm...
Advanced frameworks for fraud detection leveraging quantum machine learning and data science in fintech ecosystems
Advanced frameworks for fraud detection leveraging quantum machine learning and data science in fintech ecosystems
The rapid expansion of the fintech sector has brought with it an increasing demand for robust and sophisticated fraud detection systems capable of managing large volumes of financi...
A Graph Neural Network Model for Financial Fraud Prevention
A Graph Neural Network Model for Financial Fraud Prevention
Financial fraud prevention is a critical challenge for banks, payment processors, and online financial services. Traditional fraud detection models, including rule-based systems an...
Financial Statement Fraud: Evidence from Malaysian Public Listed Companies
Financial Statement Fraud: Evidence from Malaysian Public Listed Companies
Financial statement fraud is seen as a rampant problem around the world. Early detection is one of the ways to curb financial statement fraud, and it has motivated this study to be...
Corporate Fraud: Causes, Effects, and Deterrence on Financial Institutions in Ghana
Corporate Fraud: Causes, Effects, and Deterrence on Financial Institutions in Ghana
This paper focuses on finding the causes, effects, and deterrence and prevention of corporate fraud in the financial institution of Ghana. In particular, we examine the effects of ...
Evaluation of Fraud Prevention Policies in the National Health Insurance System in Indonesia: Narrative Literature Review
Evaluation of Fraud Prevention Policies in the National Health Insurance System in Indonesia: Narrative Literature Review
Introduction: Fraud in the National Health Insurance System (JKN) in Indonesia is a serious issue that harms health services and financing. Fraud practices such as phantom billing ...
Construction of Real Estate Debt Crisis Early Warning Model Based on RBF Neural Network
Construction of Real Estate Debt Crisis Early Warning Model Based on RBF Neural Network
The current market economic environment is constantly changing, and real estate companies are constantly facing various risks in the course of their operations, which have created ...
A predictive analytics model for banking fraud detection: Solving real-time challenges in customer safety and financial security
A predictive analytics model for banking fraud detection: Solving real-time challenges in customer safety and financial security
The rise in banking fraud has highlighted the critical need for robust and efficient fraud detection systems that ensure customer safety and financial security. Existing methods of...

Back to Top