Schedule a Meeting

Anomaly Detection in Workflow Management

We published our scientific study, “An Application on Anomaly Detection in Workflow Management,” at the II. Gordion Bilsel International Scientific Research Congress.

Loading...

Businesses are constantly seeking new solutions to ensure operational efficiency and maintain orderly processes. Anomaly detection identifies unwanted and unusual situations within an organization’s processes, such as fraud, errors, inefficiencies, and malfunctions. Such anomalies can lead to reduced efficiency and decreased profitability potential for the organization.

As a solution to these issues, Next4biz aims to enhance its BPM product with anomaly detection capabilities. The development of these features is intended to leverage state-of-the-art deep learning, artificial intelligence, and data-driven approaches to identify abnormal conditions within the business processes of organizations across various industries.

By detecting anomalies in their business processes, organizations can increase operational efficiency, prevent potential fraud, and enhance profitability.

One of the studies we conducted as part of this development is the anomaly detection study in business processes titled “An Application on Anomaly Detection in Workflow Management,” published at the II Bilsel Gordion Congress.

In this study, using the Isolation Forest algorithm, our researchers implemented anomaly detection among triplet states, which can be considered sub-processes of business workflows. The Isolation Forest algorithm was run with three different contamination values: 0.01, 0.05, and 0.1.

Looking ahead, our efforts will focus on adapting state-of-the-art anomaly detection approaches, particularly graph-based anomaly detection techniques, to work more comprehensively on business processes. We aim to make these multi-perspective anomaly detection approaches suitable for the Next4biz BPM platform and its tenants, offering users cutting-edge anomaly detection technologies.

Click here for the full text of our study, “An Application on Anomaly Detection in Workflow Management,” published at the II. Gordion Bilsel International Scientific Research Congress.

Akhan Akbulut
Professor Doctor Akhan Akbulut worked in the Computer Engineering departments of Istanbul Kültür University and NC State University. He serves institutions such as TÜBİTAK, Ministry of Industry and Technology, TÜSEB, and KOSGEB. He researches Distributed Systems and Artificial Intelligence and has over 100 international journal articles and conference proceedings from his work.
Schedule a Meeting
We use cookies in accordance with legal regulations to improve our services and your experience on our site. By clicking "I Understand" button, you accept our cookie policy. You can go to settings to edit your cookie preferences.
Our Cookie Policy and Your Privacy

Necessary Cookies

Always enabled
Necessary cookies enable the basic functions of the website to ensure that it operates as intended. The website cannot function properly without these cookies.
Our Cookie Policy Our Privacy Policy

Functionality and Analytics Cookies

Functionality and analytics cookies aim to provide a more functional usage experience in future visits based on users' past use of the website. These cookies enable websites to offer personalized services such as language and region preferences by processing statistics and activity data.
Our Cookie Policy Our Privacy Policy

Targeting and Performance Cookies

Targeting and performance cookies are cookies that anonymously collect visitors' usage information and preferences related to the website, thereby enhancing the website's performance and improving user experiences based on visitor preferences.
Our Cookie Policy Our Privacy Policy

Advertising Cookies

Advertising cookies are third-party cookies used on websites to track visitors' behaviors. The purpose of these cookies is to display advertisements that are relevant and appealing to the visitors' needs.
Our Cookie Policy Our Privacy Policy