Estimating people flow from spatiotemporal population data via collective graphical mixture models

被引:17
|
作者
Iwata T. [1 ]
Shimizu H. [1 ]
Naya F. [1 ]
Ueda N. [1 ]
机构
[1] Communication Science Laboratories, 4, Hikaridai, Seikacho, Sorakugun, Kyoto
关键词
Collective graphical models; Mixture models; Population data; Spatiotemporal data; Variational Bayes;
D O I
10.1145/3080555
中图分类号
学科分类号
摘要
Thanks to the prevalence of mobile phones and GPS devices, spatiotemporal population data can be obtained easily. In this article, we propose a mixture of collective graphical models for estimating people flow from spatiotemporal population data. The spatiotemporal population data we use as input is the number of people in each grid cell area over time, which is aggregated information about many individuals; to preserve privacy, they do not contain trajectories of each individual. Therefore, it is impossible to directly estimate people flow. To overcome this problem, the proposed model assumes that transition populations are hidden variables and estimates the hidden transition populations and transition probabilities simultaneously. The proposed model can handle changes of people flow over time by segmenting time-of-day points into multiple clusters, where different clusters have different flow patterns. We develop an efficient variational Bayesian inference procedure for the collective graphical mixture model. In our experiments, the effectiveness of the proposed method is demonstrated by using four real-world spatiotemporal population datasets in Tokyo, Osaka, Nagoya, and Beijing. © 2017 ACM.
引用
收藏
相关论文
共 50 条
  • [21] Estimating cure rates from survival data: An alternative to two-component mixture models
    Tsodikov, AD
    Ibrahim, JG
    Yakovlev, AY
    JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION, 2003, 98 (464) : 1063 - 1078
  • [22] On estimating Hooded crow density from line transect data through exponential mixture models
    Giammarino, Mauro
    Quatto, Piero
    ENVIRONMENTAL AND ECOLOGICAL STATISTICS, 2014, 21 (04) : 689 - 696
  • [23] Estimating prey abundance and distribution from camera trap data using binomial mixture models
    Hemanta Kafley
    Babu R. Lamichhane
    Rupak Maharjan
    Bishnu Thapaliya
    Nishan Bhattarai
    Madhav Khadka
    Matthew E. Gompper
    European Journal of Wildlife Research, 2019, 65
  • [24] Estimating prey abundance and distribution from camera trap data using binomial mixture models
    Kafley, Hemanta
    Lamichhane, Babu R.
    Maharjan, Rupak
    Thapaliya, Bishnu
    Bhattarai, Nishan
    Khadka, Madhav
    Gompper, Matthew E.
    EUROPEAN JOURNAL OF WILDLIFE RESEARCH, 2019, 65 (05)
  • [25] Estimating sparse models from multivariate discrete data via transformed Lasso
    Roos, Teemu
    Yu, Bin
    2009 INFORMATION THEORY AND APPLICATIONS WORKSHOP, 2009, : 287 - +
  • [26] Learning from imprecise data: possibilistic graphical models
    Borgelt, C
    Kruse, R
    COMPUTATIONAL STATISTICS & DATA ANALYSIS, 2002, 38 (04) : 449 - 463
  • [27] Estimating graphical models for count data with applications to single-cell gene network
    Xiao, Feiyi
    Tang, Junjie
    Fang, Huaying
    Xi, Ruibin
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 35 (NEURIPS 2022), 2022,
  • [28] Estimating dengue transmission intensity from serological data: A comparative analysis using mixture and catalytic models
    Cox, Victoria
    O'Driscoll, Megan
    Imai, Natsuko
    Prayitno, Ari
    Hadinegoro, Sri Rezeki
    Taurel, Anne-Frieda
    Coudeville, Laurent
    Dorigatti, Ilaria
    PLOS NEGLECTED TROPICAL DISEASES, 2022, 16 (07):
  • [29] Estimating growth parameters and growth variability from length frequency data using hierarchical mixture models
    Batts, Luke
    Minto, Coilin
    Gerritsen, Hans
    Brophy, Deirdre
    ICES JOURNAL OF MARINE SCIENCE, 2019, 76 (07) : 2150 - 2163
  • [30] Estimating an Optimal Correlation Structure from Replicated Molecular Profiling Data using Finite Mixture Models
    Acharya, Lipi R.
    Zhu, Dongxiao
    EIGHTH INTERNATIONAL CONFERENCE ON MACHINE LEARNING AND APPLICATIONS, PROCEEDINGS, 2009, : 119 - 124