Unsupervised Behaviour Analysis of News Consumption in Turkish Media
Didem Makaroglu, Altan Cakir, Behcet Ugur Toreyin

TL;DR
This paper analyzes anonymized clickstream data from Turkish news websites to identify consistent news consumption patterns over time using ensemble clustering and advanced embedding techniques, providing insights for media organizations.
Contribution
It introduces a novel ensemble clustering approach with mixed-type embeddings and validation strategies to analyze news consumption behaviors from clickstream data.
Findings
Clustering with mixed-type data yields high internal validation scores.
UMAP embedding combined with ensemble methods improves cluster quality.
Identified stable reader groups over monthly periods with high similarity.
Abstract
Clickstream data, which come with a massive volume generated by human activities on websites, have become a prominent feature for identifying readers' characteristics by newsrooms after the digitization of news outlets. Although the nature of clickstream data has a similar logic within websites, it has inherent limitations in recognizing human behaviours when looking from a broad perspective, which brings the need to limit the problem in niche areas. This study investigates the anonymized readers' click activities on the organizations' websites to identify news consumption patterns following referrals from Twitter,who incidentally reach but propensity is mainly routed news content. Methodologies for ensemble cluster analysis with mixed-type embedding strategies are applied and compared to find similar reader groups and interests independent of time. Various internal validation…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence · Digital Marketing and Social Media
