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Academic Session 4-B : International Conference Presentation(Ⅳ) 국제학술발표(Ⅳ)

Pure-inTention : A Purpose-driven Trip Demand Estimation Model Development with Big Data and Machine Learning

초록

영어

Understanding an accurate trip demand by purpose is crucial for short-term regional planning but also long-term regional planning. In traditional approach, information of purpose-oriented trip demand has been derived from public survey in South Korea such as Travel Diary Survey. This type of data acquiring method maybe useful in a sense that it can capture a meaningful sample regarding to entire country, meanwhile it costs a tremendous amount of budget and time. In this research, we want to offer a novel framework for estimating purposeoriented trip demand with dynamic and effective fashions using data fusion in conjunction with Machine learning techniques. With primary results of this concept, this study showed how several state-of-the-art algorithms, including Deep neural network, UMAP, and random forest in conjunction with Genetic algorithm and Tabu-search for optimization, can contribute to this framework. Although tangible results are yet to come, we expect this framework can contribute to resilience planning such as COVID-19.

저자정보

  • Yohan Chang KRIHS Data Lab. Geospatial Analytics & Monitoring Center KRIHS Sejong-si, South Korea
  • Youngmin Lee KRIHS Data Lab. Geospatial Analytics & Monitoring Center KRIHS Sejong-si, South Korea
  • Seo hyeon Park Department of Urban Big Database Convergence University of Seoul Seoul, South Korea

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