Avazpor, Amir, Valipour, Hashem, Salehi, hamid. (1404). A Deep Learning Framework to Model the Moderating Effect of Ethical Leadership on Emerging Technology’s Impact on Auditors’ Professional Judgment. سامانه مدیریت نشریات علمی, (), -. doi: 10.22067/ijaaf.2025.95013.1581
Amir Avazpor; Hashem Valipour; hamid Salehi. "A Deep Learning Framework to Model the Moderating Effect of Ethical Leadership on Emerging Technology’s Impact on Auditors’ Professional Judgment". سامانه مدیریت نشریات علمی, , , 1404, -. doi: 10.22067/ijaaf.2025.95013.1581
Avazpor, Amir, Valipour, Hashem, Salehi, hamid. (1404). 'A Deep Learning Framework to Model the Moderating Effect of Ethical Leadership on Emerging Technology’s Impact on Auditors’ Professional Judgment', سامانه مدیریت نشریات علمی, (), pp. -. doi: 10.22067/ijaaf.2025.95013.1581
Avazpor, Amir, Valipour, Hashem, Salehi, hamid. A Deep Learning Framework to Model the Moderating Effect of Ethical Leadership on Emerging Technology’s Impact on Auditors’ Professional Judgment. سامانه مدیریت نشریات علمی, 1404; (): -. doi: 10.22067/ijaaf.2025.95013.1581
A Deep Learning Framework to Model the Moderating Effect of Ethical Leadership on Emerging Technology’s Impact on Auditors’ Professional Judgment
Iranian Journal of Accounting, Auditing and Finance
1Department of Accounting, Yas. C., Islamic Azad University, Yasuj, Iran,
2Department of Accounting, Shiraz branch, Islamic Azad University, Shiraz, Iran.
3Department of Accounting, Fir.C., Islamic Azad University, Firuzabad, Iran
چکیده
This study introduces a Deep Moderated Neural Network (DMNN) to model the non-linear interaction between emerging technology adoption and ethical leadership in shaping auditors’ professional judgment. Drawing on survey data from 151 auditors, we normalized five technology usage items and five ethical leadership items to [0,1] and constructed the target judgment score as the average of five professional-judgment items. We benchmarked the DMNN against four alternative methods ordinary least squares regression (OLS), OLS with explicit pairwise interactions (OLS+Int), support vector regression (SVR), and random forest (RF) using RMSE and R² on a held-out test set. The DMNN achieved an RMSE of 0.1014 and an R² of 0.7562, outperforming OLS (RMSE = 0.1035, R² = 0.703), OLS+Int (RMSE = 0.1333, R² = 0.508), SVR (RMSE = 0.1818, R² = 0.084), and RF (RMSE = 0.1006, R² = 0.719). These results demonstrate that the DMNN not only captures complex moderation effects more effectively but also yields superior predictive accuracy and explained variance compared to both linear and traditional machine learning approaches. Our findings highlight the DMNN’s value as a robust analytical tool for auditing research, offering both enhanced performance and theoretical interpretability in modeling auditors’ judgment processes.