Discovering the Hidden Facts of User-Dispatcher Interactions via Text-based Reporting Systems for Community Safety

11/09/2022
by   Yiren Liu, et al.
0

Recently, an increasing number of safety organizations in the U.S. have incorporated text-based risk reporting systems to respond to safety incident reports from their community members. To gain a better understanding of the interaction between community members and dispatchers using text-based risk reporting systems, this study conducts a system log analysis of LiveSafe, a community safety reporting system, to provide empirical evidence of the conversational patterns between users and dispatchers using both quantitative and qualitative methods. We created an ontology to capture information (e.g., location, attacker, target, weapon, start-time, and end-time, etc.) that dispatchers often collected from users regarding their incident tips. Applying the proposed ontology, we found that dispatchers often asked users for different information across varied event types (e.g., Attacker for Abuse and Attack events, Target for Harassment events). Additionally, using emotion detection and regression analysis, we found an inconsistency in dispatchers' emotional support and responsiveness to users' messages between different organizations and between incident categories. The results also showed that users had a higher response rate and responded quicker when dispatchers provided emotional support. These novel findings brought significant insights to both practitioners and system designers, e.g., AI-based solutions to augment human agents' skills for improved service quality.

READ FULL TEXT

page 5

page 11

page 15

research
09/01/2023

SoK: Safer Digital-Safety Research Involving At-Risk Users

Research involving at-risk users – that is, users who are more likely to...
research
06/18/2023

"Is Reporting Worth the Sacrifice of Revealing What I Have Sent?": Privacy Considerations When Reporting on End-to-End Encrypted Platforms

User reporting is an essential component of content moderation on many o...
research
02/21/2022

Exploring the Effects of AI-assisted Emotional Support Processes in Online Mental Health Community

Social support in online mental health communities (OMHCs) is an effecti...
research
02/10/2022

Bayesian learning of COVID-19 Vaccine safety while incorporating Adverse Events ontology

While vaccines are crucial to end the COVID-19 pandemic, public confiden...
research
04/27/2021

Arthur: a new ECA that uses Memory to improve Communication

This article proposes an embodied conversational agent named Arthur. In ...
research
08/06/2018

Crashing Privacy: An Autopsy of a Web Browser's Leaked Crash Reports

Harm to the privacy of users through data leakage is not an unknown issu...
research
10/23/2020

Data Mining in Large Frequency Tables With Ontology, with an Application to the Vaccine Adverse Event Reporting System

Vaccine safety is a concerning problem of the public, and many signal de...

Please sign up or login with your details

Forgot password? Click here to reset