Figueres-Esteban, Miguel, Hughes, Peter and Van Gulijk, Coen (2016) Visual analytics for text-based railway incident reports. Safety Science, 89. pp. 72-76. ISSN 0925-7535
Abstract

The GB railways collect about 150,000 text-based records each year on potentially dangerous events and the numbers are on the increase in the Close Call System. The huge volume of text requires considerable human effort to its interpretation. This work focuses on visual text analysis techniques of Close Call records to extract safety lessons more quickly and efficiently. This paper treats basic steps for visual text analysis based on an evaluation test using a pre-constructed test set of 150 Close Call records for "Trespass", "Slip/Trip hazards on site" and "Level crossing". The results demonstrate that visual text analysis can be used to identify the risks in a small-scale test set but differences in language use by different cohorts of people interferes with straightforward risk identification in larger sets. This work paves the way to machine-assisted interpretation of text-based safety records which can speed up risk identification in a large corpus of text. It also demonstrates how new possibilities open up to develop interactive visualisations tools that allow data analysts to use text analysis techniques for risk analysis.

Library
Documents
[thumbnail of REF_Visual analytics for text-based railway incident reports.pdf]
Preview
REF_Visual analytics for text-based railway incident reports.pdf - Accepted Version
Available under License Creative Commons Attribution Non-commercial No Derivatives.

Download (558kB) | Preview
Statistics

Downloads

Downloads per month over past year

Add to AnyAdd to TwitterAdd to FacebookAdd to LinkedinAdd to PinterestAdd to Email