NTL Record

Title Data Mining to Improve Traffic Safety
Record ID 24920
Personal Name
Creator
Smith, Randy K.; Wang, Huanjing
Source 37p. in various pagings
Corporate
Contributor
University Transportation Center for Alabama
Publisher University Transportation Center for Alabama
Publication Date 20050526
Language English
Abstract The ever increasing size of datasets used for data mining and machine learning applications has placed a renewed emphasis on algorithm performance and processing strategies. This research addresses algorithms for ranking variables in a dataset, as well as for ranking values of a specific variable. We propose two new techniques, called Max Gain (MG) and Sum Max Gain Ratio (SMGR), which are well-correlated with existing techniques, yet are much more intuitive. MG and SMGR were developed for the public safety domain using categorical traffic accident data. Unlike the typical abstract statistical techniques for ranking variables and values, the proposed techniques can be motivated as useful intuitive metrics for non-statistician practitioners in a particular domain. Additionally, the developed techniques are generally more efficient than the more traditional statistical approaches.
Rosap ID dot:39367
Rosap URL https://rosap.ntl.bts.gov/view/dot/39367
TRT Terms Traffic safety; Data mining; Traffic crashes
Classification NTL - SAFETY AND SECURITY - SAFETY AND SECURITY;
NTL - SAFETY AND SECURITY - Highway Safety
Geographical
Coverage
Alabama
OCLC 60577287
TRIS Online
Accession No
1001007
Contract Number DTSR0023424
Report Number UTCA 04107
Resource type Research Paper
URL https://ntlrepository.blob.core.windows.net/lib/24000/24900/24920/04107-Smith_FINAL-23May05.pdf
Format PDF
Database NTL Digital Repository