作者
Tin T Nguyen, Panchamy Krishnakumari, Simeon C Calvert, Hai L Vu, Hans Van Lint
发表日期
2019/3/1
期刊
Transportation Research Part C: Emerging Technologies
卷号
100
页码范围
238-258
出版商
Pergamon
简介
Classification of congestion patterns is important in many areas in traffic planning and management, ranging from policy appraisal, database design, to prediction and real-time control. One of the key constraints in applying machine learning techniques for classification is the availability of sufficient data (traffic patterns) with clear and undisputed labels, e.g. traffic pattern X or Y. The challenge is that labelling traffic patterns (e.g. combinations of congested and freely flow areas over time and space) is highly subjective. In our view this means that assessment of how well algorithms label the data should also include a qualitative component that focuses on what the found patterns really mean for traffic flow operations and applications. In this study, we investigate the application of clustering analysis to obtain labels automatically from the data, where we indeed first qualitatively assess how meaningful the found labels …
引用总数
20192020202120222023202461420192311
学术搜索中的文章
TT Nguyen, P Krishnakumari, SC Calvert, HL Vu… - Transportation Research Part C: Emerging …, 2019