From Twitter to Traffic Predictor: Next-Day Morning Traffic Prediction Using Social Media Data

09/29/2020
by   Weiran Yao, et al.
0

The effectiveness of traditional traffic prediction methods is often extremely limited when forecasting traffic dynamics in early morning. The reason is that traffic can break down drastically during the early morning commute, and the time and duration of this break-down vary substantially from day to day. Early morning traffic forecast is crucial to inform morning-commute traffic management, but they are generally challenging to predict in advance, particularly by midnight. In this paper, we propose to mine Twitter messages as a probing method to understand the impacts of people's work and rest patterns in the evening/midnight of the previous day to the next-day morning traffic. The model is tested on freeway networks in Pittsburgh as experiments. The resulting relationship is surprisingly simple and powerful. We find that, in general, the earlier people rest as indicated from Tweets, the more congested roads will be in the next morning. The occurrence of big events in the evening before, represented by higher or lower tweet sentiment than normal, often implies lower travel demand in the next morning than normal days. Besides, people's tweeting activities in the night before and early morning are statistically associated with congestion in morning peak hours. We make use of such relationships to build a predictive framework which forecasts morning commute congestion using people's tweeting profiles extracted by 5 am or as late as the midnight prior to the morning. The Pittsburgh study supports that our framework can precisely predict morning congestion, particularly for some road segments upstream of roadway bottlenecks with large day-to-day congestion variation. Our approach considerably outperforms those existing methods without Twitter message features, and it can learn meaningful representation of demand from tweeting profiles that offer managerial insights.

READ FULL TEXT

page 8

page 12

research
10/23/2017

User-centric interdependent urban systems: using time-of-day electricity usage data to predict morning roadway congestion

Urban systems are interdependent as individuals' daily activities engage...
research
11/10/2020

Traffic congestion and travel time prediction based on historical congestion maps and identification of consensual days

In this paper, a new practice-ready method for the real-time estimation ...
research
01/27/2021

Deriving the Traveler Behavior Information from Social Media: A Case Study in Manhattan with Twitter

Social media platforms, such as Twitter, provide a totally new perspecti...
research
01/16/2018

Real-time Road Traffic Information Detection Through Social Media

In current study, a mechanism to extract traffic related information suc...
research
10/06/2019

Patterns of Urban Foot Traffic Dynamics

Using publicly available traffic camera data in New York City, we quanti...
research
05/18/2023

Ranking the locations and predicting future crime occurrence by retrieving news from different Bangla online newspapers

There have thousands of crimes are happening daily all around. But peopl...
research
09/20/2023

Leveraging Diversity in Online Interactions

This paper addresses the issue of connecting people online to help them ...

Please sign up or login with your details

Forgot password? Click here to reset