Xin Lin’s research while affiliated with China Mobile Group Design Institute Co. Ltd. and other places

What is this page?


This page lists works of an author who doesn't have a ResearchGate profile or hasn't added the works to their profile yet. It is automatically generated from public (personal) data to further our legitimate goal of comprehensive and accurate scientific recordkeeping. If you are this author and want this page removed, please let us know.

Publications (1)


Workflow of the proposed model in this study.
Study area (Shanghai, China).
Visualization of the similarity matrix. Non-zero entries in the matrix are painted black, while zero entries are not colored. The numbers aside are the indexes of permutated geographical units. Dashed lines are added to highlight the five darker blocks.
Geographical distribution of functional regions (five detected functional regions are rendered in different colors, and the numbered red dots are points of interest (POI) in Shanghai).
Distribution of eigenvalues in corresponding covariance matrix (the vertical axis indicates normalized eigenvalue and the horizontal axis denotes indexes of descending eigenvalues).

+5

A Multiple Subspaces-Based Model: Interpreting Urban Functional Regions with Big Geospatial Data
  • Article
  • Full-text available

February 2021

·

162 Reads

·

3 Citations

Jiawei Zhu

·

·

Xin Lin

·

[...]

·

Analyzing the urban spatial structure of a city is a core topic within urban geographical information science that has the ability to assist urban planning, site selection, location recommendation, etc. Among previous studies, comprehending the functionality of places is a central topic and corresponds to understanding how people use places. With the help of big geospatial data which contain affluent information about human mobility and activity, we propose a novel multiple subspaces-based model to interpret the urban functional regions. This model is based on the assumption that the temporal activity patterns of places lie in a high-dimensional space and can be represented by a union of low-dimensional subspaces. These subspaces are obtained through finding sparse representations using the data science method known as sparse subspace clustering (SSC). The paper details how to use this method in the context of detecting functional regions. With these subspaces, we can detect the functionality of urban regions in a designated study area and further explore the characteristics of functional regions. We conducted experiments using real data in Shanghai. The experimental results and outperformance of our proposed model against the single subspace-based method prove the efficacy and feasibility of our model.

Download

Citations (1)


... The complementarity of multiple prior decisions was considered, but the heterogeneity among decisions may lead to a low accuracy of UFR identification [13]. Semantically based methods identify functional regions based on a holistic understanding of the information behind the data [14][15][16]. Therefore, all of these methods can ascertain what each piece of data represents, why different data can be fused, and how they can mutually enhance each other's features. ...

Reference:

Context-Aware Matrix Factorization for the Identification of Urban Functional Regions with POI and Taxi OD Data
A Multiple Subspaces-Based Model: Interpreting Urban Functional Regions with Big Geospatial Data