Abolfazl Safikhani, Spatio-temporal Modeling of Yellow Taxi Demand
Abstract:
The spatio-temporal variation in the demand for transportation, particularly taxis, in the highly dynamic urban space of a metropolis such as New York City is impacted by various factors such as commuting, weather, road work and closures, disruptions in transit services, etc. This study endeavors to explain the user demand for taxis through space and time by proposing a generalized spatio-temporal autoregressive (STAR) model. It deals with the high dimensionality of the model by proposing the use of LASSO-type penalized methods for tackling parameter estimation. The forecasting performance of the proposed models is measured using the out-of-sample mean squared prediction error (MSPE), and the proposed models are found to outperform other alternative models such as vector autoregressive (VAR) models. The proposed modeling framework has an easily interpretable parameter structure and is suitable for practical application by taxi operators. The efficiency of the proposed model also helps with model estimation in real-time applications. This is a joint work with Dr Camille Kamga, Dr Sandeep Mudigonda, and PhD candidates Sabiheh Faghih and Bahman Moghimi.
Bio:
Dr Safikhani is currently an assistant professor in the department of statistics at Columbia University. He received his PhD from the department of statistics and probability, Michigan State University in 2015. His main research interests can be characterized in three main fields: (a) high-dimensional statistics: space-time model, change point detection, variable selection; (b) applied probability: Gaussian random fields, covariance estimation, dimension reduction methods; (c) data science: demand prediction, smart cities, clinical trials, cancer symptom management.