Mendeteksi Faktor-faktor Pressure Terhadap Kecurangan Laporan Keuangan Menggunakan Artificial Neural Network

Authors

  • Andrea Titania Chalissa Fakultas Ekonomi dan Bisnis, Universitas Telkom, Bandung, Indonesia
  • Elly Suryani Fakultas Ekonomi dan Bisnis, Universitas Telkom, Bandung, Indonesia

DOI:

10.33395/owner.v8i1.1895

Keywords:

Artificial Neural Network, External Pressure, Financial Stability, Financial Statement Fraud, Financial Target, Personal Financial Need

Abstract

Fraudulent financial statements are the result of misstatements resulting from intentional acts or omissions, which could materially mislead readers of the financial statements. The focus in this research is to determine the most important pressure factors in detecting fraudulent financial statements. Pressure is one of the fraud risk factors in the fraud triangle. Pressure is a condition felt by management due to incentives to commit fraud, consisting of: financial stability by proxy (GPM, ACHANGE, SCHANGE, CATA, SALAR, SALTA, INVSAL), external pressure (LEV, FINANCE, FREEC), personal financial need (OSHIP), and financial target (ROA). Data collection method using secondary data on the manufacturing sector firms that are publicly listed on the Indonesia Stock Exchange in 2017-2021. The research method used is quantitative and the sampling method uses a purposive sampling technique, obtained 137 sample companies with 685 total data observed. Data were analyzed using an Artificial Neural Network. The findings indicated that the gross profit margin (GPM), cash flow from operating to total assets (CATA), demand for financing (FINANCE), leverage (LEV) and return on total assets (ROA) is the most important proxy in detecting fraudulent financial statement, while other proxies are not too important in detecting fraudulent financial statements.

Downloads

Download data is not yet available.

        Plum-X Analityc

References

Achmad, T., Ghozali, I., & Pamungkas, I. D. (2022). Hexagon Fraud: Detection of Fraudulent Financial Reporting in State-Owned Enterprises Indonesia. Economies, 10(1), 1–16. https://doi.org/10.3390/economies10010013

Ahmadiana, N. S. S., & Novita, N. (2018). Prediksi Financial Statement Fraud melalui Fraud Triangle Theory. Jurnal Keuangan Dan Perbankan, 14(2), 77. https://doi.org/10.35384/jkp.v14i2.130

Aiman, A. M., Ismail, T. N. T., & Safiah, A. M. (2022). the Relationship Between Perceived Pressure, Perceived Opportunity, Perceived Rationalization and Fraud Tendency Among Employees: a Study From the People’S Trust in Malaysia. Studies in Business and Economics, 17(2), 23–43. https://doi.org/10.2478/sbe-2022-0023

Alfina, D. F., & Amrizal, A. (2020). Pengaruh Faktor Tekanan, Peluang, Rasionalisasi, Kompetensi, dan Arogansi Terhadap Kecurangan Laporan Keuangan. Akuntabilitas, 13(1), 63–76. https://doi.org/10.15408/akt.v13i1.14497

Anning, A. A., & Adusei, M. (2022). An Analysis of Financial Statement Manipulation among Listed Manufacturing and Trading Firms in Ghana. Journal of African Business, 23(1), 165–179. https://doi.org/10.1080/15228916.2020.1826856

Ariandini, S., & Suryani, E. (2020). The Effect of Pentagon Fraud in Detecting Fraudulent Financial Reporting. E-Proceeding of Management, 7(2), 8.

Association of Certified Fraud Examiners. (2022). Occupational Fraud 2022: A Report to the Nations.

Beneish, M. D. (1999). The Detection of Earnings Manipulation. Financial Analysts Journal, 5(June), 24–36.

Beneish, M. D., Lee, C. M. C., & Nichols, D. C. (2012). Fraud Detection and Expected Returns. SSRN Electronic Journal. https://doi.org/10.2139/ssrn.1998387

Boermawan, G., & Arfianti, R. I. (2022). Pengaruh Fraud Triangle Terhadap Kecurangan Pelaporan Keuangan dengan Beneish M-Score Model. Journal of Applied Managerial Accounting, 6(2), 173–186. www.cnbcindonesia.com,

Cerullo, M. J., & Cerullo, V. (1999). Using Neural Networks to Predict Financial Reporting Fraud: Part 1. Elsevier, May, 14–17.

Chaari, H. F., Belanès, A., & Lajmi, A. (2022). Fraud Risk And Audit Quality: The Case Of Us Public Firms. Copernican Journal of Finance & Accounting, 11(1), 29–47. https://doi.org/10.12775/cjfa.2022.002

Chen, W. Sen, & Du, Y. K. (2009). Using neural networks and data mining techniques for the financial distress prediction model. Elsevier, 36(2 PART 2), 4075–4086. https://doi.org/10.1016/j.eswa.2008.03.020

Christian, N., & Visakha, B. (2021). Analisis teori fraud pentagon dalam mendeteksi fraud pada laporan keuangan perusahaan yang terdaftar di bursa efek Indonesia. Conference on Management, Business, Innovation, Education and Social Sciences, 1(1), 1325–1342.

Damayanti, R. E., & Suryani, E. (2019). Pengaruh Financial Stability, Tekanan Eksternal, Ineffective Monitoring dan Opini Audit terhadap Indikasi Kecurangan Laporan Keuangan. E-Proceeding of Management, 6(2), 3141–3147.

Dechow, P. M., Sloan, R. G., & Sweeney, A. P. (1996). Causes and consequences of earnings manipulation: An analysis of firms subject to enforcement actions by the SEC. Contemporary Accounting Research, 13(1), 1–36. https://doi.org/10.1111/j.1911-3846.1996.tb00489.x

Eriyanti, E., Yani, N. D., Rahmalia, N. R., & Kabib, N. (2022). Deteksi Pengaruh Financial Stability, External Pressure, dan Financial Targets terhadap Financial Statement Fraud di Masa Pandemi Covid-19 (Studi Empiris pada Perusahaan Manufaktur yang Terdaftar di JII 70). Jurnal Akuntansi Dan Audit Syariah, 3(2), 1–17. https://doi.org/https://doi.org/10.28918/jaais.v3i2.5645

Firdausya, S., & Parasetya, M. T. (2021). Analisis Rasio Keuangan Dalam Mendeteksi Kecurangan Laporan Keuangan Pada Perusahaan Manufaktur Yang Terdaftar di Bursa Efek Indonesia Tahun 2017-2019. Diponegoro Journal of Accounting, 10(4).

IAPI. (2021). SA 240 (Revisi 2021) Tanggung Jawab Auditor Terkait Dengan Kecurangan Dalam Suatu Audit Atas Laporan Keuangan. In Standar Profesional Akuntan Publik (Vol. 240, Issue Revisi, pp. 55–82).

IFAC. (2021). International Standard On Auditing (UK) 240 (Revised May 2021) The Auditor’s Responsibilities Relating to Fraud in an Audit of Financial Statements. In The Financial Reporting Council (Vol. 0, Issue May). www.ifac.org

Indrajati, F., & Bawono, A. D. B. (2022). Pengaruh Financial Stability, Financial Targets, External Pressure, Personal Financial Need Terhadap Financial Statement Fraud Dengan Auditor Quality Sebagai Variabel Moderating. Prosiding Seminar Nasional Hasil Riset Dn Pengabdian.

Karim, R., & Hossain, M. A. (2021). Fraudulent Financial Reporting in the Banking Sector of Bangladesh: A Prediction. International Journal of Management, Accounting and Economics, 8(2). https://doi.org/10.5281/zenodo.4640933

Kopun, D. (2018). A Review Of The Research On Data Mining Techniques In The Detection Of Fraud In Financial Statements. Journal of Accounting and Management.

Kurnia, N. (2020). Analisis Fraud Triangle Sebagai Pendeteksi Kecurangan Laporan Keuangan pada Perusahaan yang Terdaftar di Bursa Efek Indonesia. Jurnal Ilmu Dan Riset Akuntansi, 9(11), 1–22.

Nanda, S. T., Zenita, R., & Salmiah, N. (2019). Fraudulent Financial Reporting: A Fraud Pentagon Analysis. GATR Accounting and Finance Review, 4(4), 106–113. https://doi.org/10.35609/afr.2019.4.4(2)

Novita, N. (2019). Teori Fraud Pentagon dan Deteksi Kecurangan Pelaporan Keuangan. Jurnal Akuntansi Kontemporer (JAKO) , 11(No 2), 64–73.

Omar, N., Johari, Z. A., & Smith, M. (2017). Predicting Fraudulent Financial Reporting Using Artificial Neural Network. Journal of Financial Crime, 24(2), 362–387. https://doi.org/10.1108/JFC-11-2015-0061

Ozcelik, H. (2020). an Analysis of Fraudulent Financial Reporting Using the Fraud Diamond Theory Perspective: an Empirical Study on the Manufacturing Sector Companies Listed on the Borsa Istanbul. Contemporary Studies in Economic and Financial Analysis, 102, 131–153. https://doi.org/10.1108/S1569-375920200000102012

Permatasari, D., & Laila, U. (2021). Deteksi Kecurangan Laporan Keuangan Dengan Analisis Fraud Diamond Di Perusahaan Manufaktur. Akuntabilitas, 15(2), 241–262. https://doi.org/10.29259/ja.v15i2.13025

Pujiastuti, H. (2018). Determinan Kecurangan Atas Laporan Keuangan Berdasarkan Teori Fraud Triangle. Perbanas Institute, 1–49.

Ratnasari, M. R., & Rofi, M. A. (2020). Faktor-Faktor yang Memotivasi Kecurangan Laporan Keuangan. Journal of Management and Business Review, 17(1), 79–107. https://doi.org/10.34149/jmbr.v17i1.202

Riany, M., Sukmadilaga, C., & Yunita, D. (2021). Detecting Fraudulent Financial Reporting Using Artificial Neural Network. Journal of Accounting Auditing and Business, 4(2), 60–69. http://journal.unpad.ac.id/jaab/article/view/34914

Septriani, Y., & Handayani, D. (2018). Mendeteksi Kecurangan Laporan Keuangan dengan Analisis Fraud Pentagon. Jurnal Akuntansi, Keuangan Dan Bisnis, 11(1), 11–23. http://jurnal.pcr.ac.id

Skousen, C. J., Smith, K. R., & Wright, C. J. (2009). Detecting and Predicting Financial Statement Fraud: The Effectiveness of The Fraud Triangle and SAS No. 99. In Emerald Group Publishing Limited (Vol. 13, Issue 1). https://doi.org/https://doi.org/10.1108/S1569-3732(2009)0000013005

Sunardi, S., & Amin, M. N. (2018). Fraud detection of financial statement by using fraud diamond perspective. International Journal of Development and Sustainability, 7(3), 878–891. www.isdsnet.com/ijds

Supadmini, S., & Magdalena, M. P. (2021). Detection Of Fraudulent Financial Reporting With Beneish M-Score Index Ratio Approach In Food And Beverage Sub Sector Manufacturing Companies Listed On The Indonesia Stock Exchange. JRAMB, Prodi Akuntansi, Fakultas Ekonomi, UMB Yogyakarta, 7(2), 151–161.

Suryani, E., & Fajri, R. R. (2022). Fraud Triangle Perspective: Artificial Neural Network Used in Fraud Analysis. Quality - Access to Success, 23(188), 154–162. https://doi.org/10.47750/QAS/23.188.22

Syafitri, M., Ermaya, H. N. L., & Putra, A. M. (2021). Dampak Corporate Governance, Financial Stability, dan Financial Target dalam Kecurangan Laporan Keuangan. Jurnal Akunida, 7(1), 1–16.

Umar, H., Partahi, D., & Purba, R. B. (2020). Fraud diamond analysis in detecting fraudulent financial report. International Journal of Scientific and Technology Research, 9(3), 6638–6646.

Wahyudi, I., Boedi, S., & Kadir, A. (2022). Kecurangan Laporan Keuangan (Fraudulent) Sektor Tambang di Indonesia. Jurnal KRISNA: Kumpulan Riset Akuntansi, 13(2), 180–190. https://doi.org/http://dx.doi.org/10.22225/kr.13.2.2022.180-190

Wahyuni, D., Isyuwardhana, D., & Nazar, M. R. (2023). Pengaruh Financial Stability, External Pressure Dan Financial Target Terhadap Financial Statement Fraud. E-Proceeding of Management , 10(2).

Wareza, M. (2019). Tiga Pilar dan Drama Penggelembungan Dana. Cnbcindonesia.Com. https://www.cnbcindonesia.com/market/20190329075353-17-63576/tiga-pilar-dan-drama-penggelembungan-dana

Yulianti, V., Sulistyorini Wulandari, D. S., & Sopiah, S. (2023). Analisis Stabilitas Keuangan dan Tekanan Eksternal Terhadap Kecurangan Laporan Keuangan dengan Pendekatan Teori Keagenan. Journal of Trends Economics and Accounting Research, 3(4), 519. https://doi.org/10.47065/jtear.v3i4.643

Yusrianti, H., Ghozali, I., Yuyetta, E., Aryanto, & Meirawati, E. (2020). Financial Statement Fraud Risk Factors of Fraud Triangle: Evidence from Indonesia. International Journal of Financial Research, 11(4), 36–51. https://doi.org/10.5430/ijfr.v11n4p36

Downloads

Published

2024-01-01

How to Cite

Chalissa, A. T. ., & Suryani , E. . (2024). Mendeteksi Faktor-faktor Pressure Terhadap Kecurangan Laporan Keuangan Menggunakan Artificial Neural Network. Owner : Riset Dan Jurnal Akuntansi, 8(1), 541-552. https://doi.org/10.33395/owner.v8i1.1895