An encoder framework for taxi-demand prediction using spatio-temporal function approximation

被引:1
|
作者
Bhanu, Manish [1 ]
Roy, Saswata [1 ]
Priya, Shalini [2 ]
Mendes-Moreira, Joao [3 ]
Chandra, Joydeep [1 ]
机构
[1] Indian Inst Technol Patna, Dept Comp Sci & Engn, Dayalpur Daulatpur, Bihar, India
[2] Oak Ridge Natl Lab, Oak Ridge, TN USA
[3] Univ Porto, Fac Engn, Dept Informat Engn, Porto, Portugal
关键词
Spatio-temporal; Encoder-decoder; Multi-step prediction; Time-series; Taxi-demand; TENSOR;
D O I
10.1016/j.engappai.2023.106760
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Predicting taxi demands in large cities can help in better traffic management as well as ensure better commuter satisfaction for an intelligent transportation system. However, the traffic demands across different locations have varying spatio-temporal correlations that are difficult to model. Despite the ability of the existing Deep Neural Network (DNN) models to capture the non-linearity in spatial and temporal characteristics of the demand time-series, capturing spatio-temporal characteristics in different real-world scenarios like varying historic and prediction time frame, spatio-temporal variations due to noise or missing data, etc. still remain a big challenge for the state-of-the-art models. In this paper, we introduce Encoder-ApproXimator (EnAppX), an encoder-decoder DNN-based model that uses Chebyshev function approximation in the decoding stage for taxi demand times-series prediction and can better estimate the time-series in the presence of large spatio-temporal variations. Opposed to any existing state-of-the-art model, the proposed model approximates complete spatiotemporal characteristics in the frequency domain which in turn enables the model to make a robust and improved prediction in different scenarios. Validation over two real-world taxi datasets from different cities shows a considerable improvement of around 23% in RMSE scores compared to the state-of-the-art baseline model. Unlike several existing state-of-the-art models, EnAppX also produces improved prediction accuracy across two regions for both to and fro demands.
引用
收藏
页数:11
相关论文
共 50 条
  • [1] ST-AGP: Spatio-Temporal aggregator predictor model for multi-step taxi-demand prediction in cities
    Bhanu, Manish
    Priya, Shalini
    Moreira, Joao Mendes
    Chandra, Joydeep
    APPLIED INTELLIGENCE, 2023, 53 (02) : 2110 - 2132
  • [2] ST-AGP: Spatio-Temporal aggregator predictor model for multi-step taxi-demand prediction in cities
    Manish Bhanu
    Shalini Priya
    João Mendes Moreira
    Joydeep Chandra
    Applied Intelligence, 2023, 53 : 2110 - 2132
  • [3] Privacy-Preserving Taxi-Demand Prediction Using Federated Learning
    Goto, Yumeki
    Matsumoto, Tomoya
    Rizk, Hamada
    Yanai, Naoto
    Yamaguchi, Hirozumi
    2023 IEEE INTERNATIONAL CONFERENCE ON SMART COMPUTING, SMARTCOMP, 2023, : 297 - 302
  • [4] A New Covariance Function and Spatio-Temporal Prediction (Kriging) for A Stationary Spatio-Temporal Random Process
    Rao, T. Subba
    Terdik, Gyorgy
    JOURNAL OF TIME SERIES ANALYSIS, 2017, 38 (06) : 936 - 959
  • [5] Scaling of spatio-temporal variations of taxi travel routes
    Feng, Xiaoyan
    Sun, Huijun
    Gross, Bnaya
    Wu, Jianjun
    Li, Daqing
    Yang, Xin
    Lv, Ying
    Zhou, Dong
    Gao, Ziyou
    Havlin, Shlomo
    NEW JOURNAL OF PHYSICS, 2022, 24 (04):
  • [6] Effect of Spatio-Temporal Granularity on Demand Prediction for Deep Learning Models
    Varghese, Ken Koshy
    Mahdaviabbasabad, Sajjad
    Gentile, Guido
    Eldafrawi, Mohamed
    TRANSPORT AND TELECOMMUNICATION JOURNAL, 2023, 24 (01) : 22 - 32
  • [7] Spatio-temporal modeling of yellow taxi demands in New York City using generalized STAR models
    Safikhani, Abolfazl
    Kamga, Camille
    Mudigonda, Sandeep
    Faghih, Sabiheh Sadat
    Moghimi, Bahman
    INTERNATIONAL JOURNAL OF FORECASTING, 2020, 36 (03) : 1138 - 1148
  • [8] Detecting Taxi Trajectory Anomaly Based on Spatio-Temporal Relations
    Qian, Shiyou
    Cheng, Bin
    Cao, Jian
    Xue, Guangtao
    Zhu, Yanmin
    Yu, Jiadi
    Li, Minglu
    Zhang, Tao
    IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2022, 23 (07) : 6883 - 6894
  • [9] Graph Multi-Head Convolution for Spatio-Temporal Attention in Origin Destination Tensor Prediction
    Bhanu, Manish
    Kumar, Rahul
    Roy, Saswata
    Mendes-Moreira, Joao
    Chandra, Joydeep
    ADVANCES IN KNOWLEDGE DISCOVERY AND DATA MINING, PAKDD 2022, PT I, 2022, 13280 : 459 - 471
  • [10] Lattice-based spatio-temporal ensemble prediction
    Samulevicius, Saulius
    Pitarch, Yoann
    Pedersen, Torben Bach
    KNOWLEDGE-BASED AND INTELLIGENT INFORMATION & ENGINEERING SYSTEMS 18TH ANNUAL CONFERENCE, KES-2014, 2014, 35 : 494 - 503