SOC-PHCLSIJun 20, 2016

Comparing the hierarchy of keywords in on-line news portals

arXiv:1606.06142v1
Originality Synthesis-oriented
AI Analysis

This work addresses the problem of understanding keyword relationships in online news for researchers and practitioners, but it is incremental as it applies an existing method to new data.

The study applied a co-occurrence-based method to extract latent hierarchies from keywords in four online news portals, revealing substantial differences in important topics and underlying network structures.

The tagging of on-line content with informative keywords is a widespread phenomenon from scientific article repositories through blogs to on-line news portals. In most of the cases, the tags on a given item are free words chosen by the authors independently. Therefore, relations among keywords in a collection of news items is unknown. However, in most cases the topics and concepts described by these keywords are forming a latent hierarchy, with the more general topics and categories at the top, and more specialised ones at the bottom. Here we apply a recent, cooccurrence-based tag hierarchy extraction method to sets of keywords obtained from four different on-line news portals. The resulting hierarchies show substantial differences not just in the topics rendered as important (being at the top of the hierarchy) or of less interest (categorised low in the hierarchy), but also in the underlying network structure. This reveals discrepancies between the plausible keyword association frameworks in the studied news portals.

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