Pregled bibliografske jedinice broj: 867201
Discovering Behavioural Patterns within Customer Population by using Temporal Data Subsets
Discovering Behavioural Patterns within Customer Population by using Temporal Data Subsets // Handbook of Research on Advanced Hybrid Intelligent Techniques and Applications / Siddhartha Bhattacharyya (RCC Institute of Information Technology, India), Pinaki Banerjee (Goldstone Infratech Limited, India), Dipankar Majumdar (RCC Institute of Information Technology, India) and Paramartha Dutta (Visva-Bharati University, India) (ur.)., 2016. str. 216-252
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Naslov
Discovering Behavioural Patterns within Customer Population by using Temporal Data Subsets
Autori
Klepac, Goran
Vrsta, podvrsta i kategorija rada
Poglavlja u knjigama, znanstveni
Knjiga
Handbook of Research on Advanced Hybrid Intelligent Techniques and Applications
Urednik/ci
Siddhartha Bhattacharyya (RCC Institute of Information Technology, India), Pinaki Banerjee (Goldstone Infratech Limited, India), Dipankar Majumdar (RCC Institute of Information Technology, India) and Paramartha Dutta (Visva-Bharati University, India)
Izdavač
IGI Global
Godina
2016
Raspon stranica
216-252
ISBN
9781466694743
Ključne riječi
Temporal Data Subsets
Sažetak
Chapter represents discovering behavioural patterns within non-temporal and temporal data subsets related to customer churn. Traditional approach, based on using conventional data mining techniques, is not a guarantee for discovering valuable patterns, which could be useful for decision support. Business case, as a part of the text, illustrates such type of situation, where an additional data set has been chosen for finding useful patterns. Chosen data set with temporal characteristics was the key factor after applying REFII model on it, for finding behavioural customer patterns and for understanding causes of the increasing churn trends within observed portfolio. Text gives a methodological framework for churn problem solution, from customer value calculation, to developing predictive churn model, as well as using additional data sources in a situation where conventional approaches in churn analytics do not provide enough information for qualitative decision support. Revealed knowledge was a base for better understanding of customer needs and expectations.
Izvorni jezik
Engleski
Znanstvena područja
Informacijske i komunikacijske znanosti