Enhancing ITIL Incident Management: Innovative Machine Learning Approaches for Efficient Incident Prioritization and Resolution
Alifia Ayu Zahrothul Ain, Cutifa Safitri
Abstract
Incident Management in ITIL requires an effective process so the incidents do not disrupt business processes for too long. This research aims to automate decision-making in Incident Management process. To perform the automation in decision-making process requires machine learning algorithms. The development of machine learning method in this research will bring significance result such as a new technique of decision-making process in Incident Management, accelerate decision-making process in Incident Management by implementing machine learning to determine the category, group, and priority. By combining supervised and unsupervised machine learning, this research can help to determine the priority of the incident, so IT Operation Teams know which incident should resolve first. By training historical full description, short description, and title, machine learning can classify the new incident. In this research different classification algorithms are used to automate decision making process. Performances of automated decision-making are evaluated with accuracy, precision, recall, and f1-score. Based on the result of various performance metrics, classifier based on K-Nearest Neighbor performed well on predicting Priority, and both category and priority get the best performance with Support Vector Machine.
Keywords
IT Service Management, IT Infrastructure Library, Incident Management, Machine Learning