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Cause-and-Effect Analysis of ADAS: A Comparison Study between Literature Review and Complaint Data. (arXiv:2208.00249v1 [cs.CL])
Aug. 2, 2022, 2:12 a.m. | Jackie Ayoub, Zifei Wang, Meitang Li, Huizhong Guo, Rini Sherony, Shan Bao, Feng Zhou
cs.CL updates on arXiv.org arxiv.org
Advanced driver assistance systems (ADAS) are designed to improve vehicle
safety. However, it is difficult to achieve such benefits without understanding
the causes and limitations of the current ADAS and their possible solutions.
This study 1) investigated the limitations and solutions of ADAS through a
literature review, 2) identified the causes and effects of ADAS through
consumer complaints using natural language processing models, and 3) compared
the major differences between the two. These two lines of research identified
similar categories …
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