TY - EJOU AU - Hasnain, Muhammad AU - Ghani, Imran AU - Jeong, Seung Ryul AU - Pasha, Muhammad Fermi AU - Usman, Sardar AU - Abbas, Anjum TI - Empirical Analysis of Software Success Rate Forecasting During Requirement Engineering Processes T2 - Computers, Materials \& Continua PY - 2023 VL - 74 IS - 1 SN - 1546-2226 AB - Forecasting on success or failure of software has become an interesting and, in fact, an essential task in the software development industry. In order to explore the latest data on successes and failures, this research focused on certain questions such as is early phase of the software development life cycle better than later phases in predicting software success and avoiding high rework? What human factors contribute to success or failure of a software? What software practices are used by the industry practitioners to achieve high quality of software in their day-to-day work? In order to conduct this empirical analysis a total of 104 practitioners were recruited to determine how human factors, misinterpretation, and miscommunication of requirements and decision-making processes play their roles in software success forecasting. We discussed a potential relationship between forecasting of software success or failure and the development processes. We noticed that experienced participants had more confidence in their practices and responded to the questionnaire in this empirical study, and they were more likely to rate software success forecasting linking to the development processes. Our analysis also shows that cognitive bias is the central human factor that negatively affects forecasting of software success rate. The results of this empirical study also validated that requirements’ misinterpretation and miscommunication were the main causes behind software systems’ failure. It has been seen that reliable, relevant, and trustworthy sources of information help in decision-making to predict software systems’ success in the software industry. This empirical study highlights a need for other software practitioners to avoid such bias while working on software projects. Future investigation can be performed to identify the other human factors that may impact software systems’ success. KW - Cognitive bias; misinterpretation of requirements; miscommunication; software success and failure prediction; decision making DO - 10.32604/cmc.2023.030162