Author:
ElDahshan Kamal A.,Abutaleb Gaber E.,Elemary Berihan R.,Ebeid Ebeid A.,AlHabshy AbdAllah A.
Abstract
AbstractAs data grow exponentially, the demand for advanced intelligent solutions has become increasingly urgent. Unfortunately, not all businesses have the expertise to utilize machine learning algorithms effectively. To bridge this gap, the present paper introduces a cost-effective, user-friendly, dependable, adaptable, and scalable solution for visualizing, analyzing, processing, and extracting valuable insights from data. The proposed solution is an optimized open-source unsupervised machine learning as a service (MLaaS) framework that caters to both experts and non-experts in machine learning. The framework aims to assist companies and organizations in solving problems related to clustering and anomaly detection, even without prior experience or internal infrastructure. With a focus on several clustering and anomaly detection techniques, the proposed framework automates data processing while allowing user intervention. The proposed framework includes default algorithms for clustering and outlier detection. In the clustering category, it features three algorithms: k-means, hierarchical clustering, and DBScan clustering. For outlier detection, it includes local outlier factor, K-nearest neighbors, and Gaussian mixture model. Furthermore, the proposed solution is expandable; it may include additional algorithms. It is versatile and capable of handling diverse datasets by generating separate rapid artificial intelligence models for each dataset and facilitating their comparison rapidly. The proposed framework provides a solution through a representational state transfer application programming interface, enabling seamless integration with various systems. Real-world testing of the proposed framework on customer segmentation and fraud detection data demonstrates that it is reliable, efficient, cost-effective, and time-saving. With the innovative MLaaS framework, companies may harness the full potential of business analysis.
Publisher
Springer Science and Business Media LLC
Reference53 articles.
1. Bose I, Mahapatra RK (2001) Business data mining-a machine learning perspective. Inf Manag 39(3):211–225
2. Rajkomar A, Dean J, Kohane I (2019) Machine learning in medicine. N Engl J Med 380(14):1347–1358
3. Fathy KA, Yaseen HK, Abou-Kreisha MT, ElDahshan KA (2023) A novel meta-heuristic optimization algorithm in white blood cells classification. CMC-Comput Mater Contin 75(1):1527–1545
4. Schaar M, Alaa AM, Floto A, Gimson A, Scholtes S, Wood A, McKinney E, Jarrett D, Lio P, Ercole A (2021) How artificial intelligence and machine learning can help healthcare systems respond to covid-19. Mach Learn 110:1–14
5. Morocho-Cayamcela ME, Lee H, Lim W (2019) Machine learning for 5 g/b5 g mobile and wireless communications: Potential, limitations, and future directions. IEEE Access 7:137184–137206