Clustering analysis, or clustering, is an activity which can be applied to user event log data to determine the types of users which exist within a service, and can be used to gain insights into the client base by their behaviour. However, when applied to longitudinal user event log data, clustering can potentially misclassify regular users as ’one-off’ if their last interaction within their tenure of the service appears at the beginning of the observable data set. The main objective of this study was to investigate whether any impact of user tenure within longitudinal data on k-means clustering accuracy would occur. The current paper subjected a large telephony call log data set from a helpline to a k-means clustering algorithm to determine the types of callers that contact the helpline based on their usage characteristics (number of calls, mean duration of calls and variability of call duration). A threshold of one-month increments were applied to the data (callers appearing before the threshold but not after were removed each time) and then subsequently subjected to k-means clustering. Results showed that cluster structures remained stable after each threshold condition. Significant differences in cluster centers were found in one cluster across tenure conditions.
|Title of host publication||ECCE 2019 - Proceedings of the 31st European Conference on Cognitive Ergonomics|
|Subtitle of host publication||''Design for Cognition''|
|Editors||Maurice Mulvenna, Raymond Bond|
|Place of Publication||New York, NY, USA|
|Publisher||Association for Computing Machinery|
|Number of pages||7|
|Publication status||Published - 10 Sep 2019|
|Name||ECCE 2019 - Proceedings of the 31st European Conference on Cognitive Ergonomics: ''Design for Cognition''|
© 2019 Association for Computing Machinery.
Copyright 2019 Elsevier B.V., All rights reserved.
- User Event Log Data
- Clustering Analysis
- K-Means Clustering
- Telephony Call Log Data
- Mental Health