2023 |
Grzenda, Maciej; Luckner, Marcin; Wrona, Przemysław Urban Traveller Preference Miner: Modelling Transport Choices with Survey Data Streams Proceeding 13718 LNAI , 2023, ISSN: 16113349. Abstract | Links | BibTeX | Tags: Feature engineering, public transport, Stream mining @proceedings{Grzenda2023, title = {Urban Traveller Preference Miner: Modelling Transport Choices with Survey Data Streams}, author = {Maciej Grzenda and Marcin Luckner and Przemysław Wrona}, doi = {10.1007/978-3-031-26422-1_50}, issn = {16113349}, year = {2023}, date = {2023-01-01}, journal = {Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)}, volume = {13718 LNAI}, pages = {654--657}, abstract = {The unprecedented interest in sustainable transport modes for urban areas raises the question of what makes citizens select environmentally friendly transport modes such as public transport rather than private cars. While travel surveys are conducted to document real transport mode choices, they can also shed light on how these choices are made. In this paper, we demonstrate a system combining survey data with complex information documenting public transport features, as perceived by individual respondents. The system relies on a combination of big data modules to collect vehicle location records and travel planning engines to calculate candidate connection features, including disruptions faced by individuals. Hence a combination of streaming and batch modules is used to transform survey data into instances used to learn classification models. This takes place while taking into account concept drift. Real-life data from the city of Warsaw, including recently collected survey data, location records of trams and buses, and planned and true schedules, are used to demonstrate the system. A video related to this paper is available at https://youtu.be/fTcxUxEMGlk.}, keywords = {Feature engineering, public transport, Stream mining}, pubstate = {published}, tppubtype = {proceedings} } The unprecedented interest in sustainable transport modes for urban areas raises the question of what makes citizens select environmentally friendly transport modes such as public transport rather than private cars. While travel surveys are conducted to document real transport mode choices, they can also shed light on how these choices are made. In this paper, we demonstrate a system combining survey data with complex information documenting public transport features, as perceived by individual respondents. The system relies on a combination of big data modules to collect vehicle location records and travel planning engines to calculate candidate connection features, including disruptions faced by individuals. Hence a combination of streaming and batch modules is used to transform survey data into instances used to learn classification models. This takes place while taking into account concept drift. Real-life data from the city of Warsaw, including recently collected survey data, location records of trams and buses, and planned and true schedules, are used to demonstrate the system. A video related to this paper is available at https://youtu.be/fTcxUxEMGlk. |
Publications
2023 |
Urban Traveller Preference Miner: Modelling Transport Choices with Survey Data Streams Proceeding 13718 LNAI , 2023, ISSN: 16113349. |