Paper-Conference

Urban Vibrancy Embedding and Application on Traffic Prediction
Urban Vibrancy Embedding and Application on Traffic Prediction

Urban Vibrancy embeddings from real-time data improve traffic prediction via VAE and LSTM.

Feb 9, 2025

Improving Real Estate Appraisal with POI Integration and Areal Embedding
Improving Real Estate Appraisal with POI Integration and Areal Embedding

This study addresses the impact of Points of Interest (POI) on property values and introduces the AMMASI model, which enhances real estate appraisal by incorporating road-network-based Areal Embedding and masked multi-head attention, significantly improving house price prediction compared to existing models.

Nov 20, 2023

*Enhancing Spatiotemporal Traffic Prediction through Urban Human Activity Analysis
*Enhancing Spatiotemporal Traffic Prediction through Urban Human Activity Analysis

Improved traffic prediction using vehicle trajectory generation based on human activity for GCN models.

Oct 25, 2023

Exploring Commercial Gentrification using Instagram Data
Exploring Commercial Gentrification using Instagram Data

This paper proposes a novel method to estimate the status and progression of commercial gentrification in a target area using Instagram data by analyzing social features from images and texts, defining gentrification phases based on urban studies, and employing regression models for phase prediction, showing promising results for use by urban planners and policymakers.

Dec 7, 2020

Discovering Daily POI Exploitation Using LTE Cell Tower Access Traces in Urban Environment
Discovering Daily POI Exploitation Using LTE Cell Tower Access Traces in Urban Environment

This paper demonstrates that LTE cell tower access trace data can reveal the types of Points of Interest (POIs) in an area and introduces a daily POI exploitation discovery scheme to analyze how POIs are used daily, offering valuable insights for urban planning and tourism services.

Oct 7, 2020

Human Activity Recognition Using Semi-supervised Multi-modal DEC for Instagram Data
Human Activity Recognition Using Semi-supervised Multi-modal DEC for Instagram Data

This paper proposes a semi-supervised multi-modal deep embedding clustering method for Human Activity Recognition (HAR) on Instagram, which combines supervised and unsupervised learning to leverage both labeled and unlabeled data, improving recognition accuracy and outperforming existing approaches.

May 6, 2020