posted on 2022-09-12, 00:52authored byShahabodin Khadivi Zand
<p>Business Processes, i.e., a set of coordinated tasks and activities to achieve a business goal, and their continuous improvements are key to the operation of any organization. In banking, business processes are increasingly dynamic as various technologies have made dynamic processes more prevalent. For example, customer segmentation, i.e., the process of grouping related customers based on common activities and behaviors, could be a data-driven and knowledge-intensive process. In this thesis, we present an intelligent data driven pipeline composed of a set of processing elements to move customers’ data from one system to another, transforming the data into the contextualized data and knowledge along the way. The goal is to present a novel intelligent customer segmentation process which automates the feature engineering, i.e., the process of using (banking) domain knowledge to extract features from raw data via data mining techniques, in the banking domain. We adopt a typical scenario for analyzing customer transaction records, to highlight how the presented approach can significantly improve the quality of risk-based customer segmentation in the absence of feature engineering. As result, our proposed method is able to achieve accuracy of � compared to classical approaches in terms of detecting, identifying and classifying transaction to the right classification.</p>
History
Table of Contents
1. Introduction -- 2. Background and State-of-the-Art -- 3. Methodology -- 4. Experiment and Evaluation -- 5. Conclusion and Future work -- List of Symbols -- References
Notes
A thesis submitted to Macquarie University for the degree of Master of Research
Awarding Institution
Macquarie University
Degree Type
Thesis MRes
Degree
Thesis (MRes), Macquarie University, Faculty of Science and Engineering, Department of Computing, 2020
Department, Centre or School
Department of Computing
Year of Award
2020
Principal Supervisor
Amin Beheshti
Additional Supervisor 1
Michael Sheng
Additional Supervisor 2
Fariborz Sobhanmanesh
Rights
Copyright: The Author
Copyright disclaimer: https://www.mq.edu.au/copyright-disclaimer