IRCLLGMLJul 5, 2018

Extracting Actionable Knowledge from Domestic Violence Discourses on Social Media

arXiv:1807.02391v112 citations
Originality Synthesis-oriented
AI Analysis

It addresses a social welfare issue with potential impact on public health, though it appears incremental as it builds on existing social media analysis methods.

The paper tackles the problem of extracting actionable knowledge from domestic violence discourses on social media, proposing a novel framework to model and discover themes related to DV to provide valuable information for public health researchers and organizations.

Domestic Violence (DV) is considered as big social issue and there exists a strong relationship between DV and health impacts of the public. Existing research studies have focused on social media to track and analyse real world events like emerging trends, natural disasters, user sentiment analysis, political opinions, and health care. However there is less attention given on social welfare issues like DV and its impact on public health. Recently, the victims of DV turned to social media platforms to express their feelings in the form of posts and seek the social and emotional support, for sympathetic encouragement, to show compassion and empathy among public. But, it is difficult to mine the actionable knowledge from large conversational datasets from social media due to the characteristics of high dimensions, short, noisy, huge volume, high velocity, and so on. Hence, this paper will propose a novel framework to model and discover the various themes related to DV from the public domain. The proposed framework would possibly provide unprecedentedly valuable information to the public health researchers, national family health organizations, government and public with data enrichment and consolidation to improve the social welfare of the community. Thus provides actionable knowledge by monitoring and analysing continuous and rich user generated content.

Foundations

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

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