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Daily activity pattern recognition by using support vector machines with multiple classes
Institution:1. School of Economics and Management, Beihang University, Beijing 100191, PR China;2. Urban Planning Group, Eindhoven University of Technology, Eindhoven PO Box 513, 5600 MB, the Netherlands;1. Department of Civil Engineering and Surveying, University of Puerto Rico, Mayagüez, Mayagüez 00680, Puerto Rico;2. Department of Civil Engineering, The City College of New York, New York, NY 10031, USA;1. Transportation Research Institute (IMOB), Hasselt University, Wetenschapspark 5, bus 6, B-3590 Diepenbeek, Belgium;2. Department of Transport Engineering, Harbin Institute of Technology (HIT), 1500 Harbin, China;3. Local Environment Management & Analysis (LEMA), University of Liège, Chemin des Chevreuils 1, Bât B.52/3, 4000 Liège, Belgium;1. University at Buffalo, Department of Industrial and Systems Engineering, United States;2. Rochester Institute of Technology, Golisano Institute for Sustainability, United States
Abstract:The focus of this paper is to learn the daily activity engagement patterns of travelers using Support Vector Machines (SVMs), a modeling approach that is widely used in Artificial intelligence and Machine Learning. It is postulated that an individual’s choice of activities depends not only on socio-demographic characteristics but also on previous activities of individual on the same day. In the paper, Markov Chain models are used to study the sequential choice of activities. The dependencies among activity type, activity sequence and socio-demographic data are captured by employing hidden Markov models. In order to learn model parameters, we use sequential multinomial logit models (MNL) and multiclass Support Vector Machines (K-SVM) with two different dependency structures. In the first dependency structure, it is assumed that type of activity at time ‘t’ depends on the last previous activity and socio-demographic data, whereas in the second structure we assume that activity selection at time ‘t’ depends on all of the individual’s previous activity types on the same day and socio-demographic characteristics. The models are applied to data drawn from a set of California households and a comparison of the accuracy of estimation of activity types and their sequence in the agenda, indicates the superiority of K-SVM models over MNL. Additionally, we show that accuracy in estimating activity patterns increases using different sets of explanatory variables or tuning parameters of the kernel function in K-SVM.
Keywords:Activity pattern recognition  Activity sequence  Support Vector Machines (SVMs)  Hidden Markov Models (HMMs)
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