CLJul 17, 2018

Using semantic clustering to support situation awareness on Twitter: The case of World Views

arXiv:1807.06588v16 citations
Originality Incremental advance
AI Analysis

This provides a practical system for crisis responders to better understand situations from social media data, though it appears incremental as it builds on existing clustering methods with a semantic twist.

The paper tackles the challenge of extracting situation awareness from Twitter data by proposing SVOSSTC, a semantic clustering method that uses Subject-Verb-Object typology to group posts into consistent world views, with results showing improved cluster granularity and meaningfulness compared to existing approaches.

In recent years, situation awareness has been recognised as a critical part of effective decision making, in particular for crisis management. One way to extract value and allow for better situation awareness is to develop a system capable of analysing a dataset of multiple posts, and clustering consistent posts into different views or stories (or, world views). However, this can be challenging as it requires an understanding of the data, including determining what is consistent data, and what data corroborates other data. Attempting to address these problems, this article proposes Subject-Verb-Object Semantic Suffix Tree Clustering (SVOSSTC) and a system to support it, with a special focus on Twitter content. The novelty and value of SVOSSTC is its emphasis on utilising the Subject-Verb-Object (SVO) typology in order to construct semantically consistent world views, in which individuals---particularly those involved in crisis response---might achieve an enhanced picture of a situation from social media data. To evaluate our system and its ability to provide enhanced situation awareness, we tested it against existing approaches, including human data analysis, using a variety of real-world scenarios. The results indicated a noteworthy degree of evidence (e.g., in cluster granularity and meaningfulness) to affirm the suitability and rigour of our approach. Moreover, these results highlight this article's proposals as innovative and practical system contributions to the research field.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes