Simulating User-Level Twitter Activity with XGBoost and Probabilistic Hybrid Models

02/18/2022
by   Fred Mubang, et al.
0

The Volume-Audience-Match simulator, or VAM was applied to predict future activity on Twitter related to international economic affairs. VAM was applied to do timeseries forecasting to predict the: (1) number of total activities, (2) number of active old users, and (3) number of newly active users over the span of 24 hours from the start time of prediction. VAM then used these volume predictions to perform user link predictions. A user-user edge was assigned to each of the activities in the 24 future timesteps. VAM considerably outperformed a set of baseline models in both the time series and user-assignment tasks

READ FULL TEXT
research
02/07/2021

Reconstructing Detailed Browsing Activities from Browser History

Users' detailed browsing activity - such as what sites they are spending...
research
01/25/2021

Linking the Dynamics of User Stance to the Structure of Online Discussions

This paper studies the dynamics of opinion formation and polarization in...
research
04/25/2019

TwitterMancer: Predicting Interactions on Twitter Accurately

This paper investigates the interplay between different types of user in...
research
05/09/2018

Wisdom in Sum of Parts: Multi-Platform Activity Prediction in Social Collaborative Sites

In this paper, we proposed a novel framework which uses user interests i...
research
11/27/2017

Scaling laws in geo-located Twitter data

We observe and report on a systematic relationship between population de...
research
09/17/2021

From Known to Unknown: Knowledge-guided Transformer for Time-Series Sales Forecasting in Alibaba

Time series forecasting (TSF) is fundamentally required in many real-wor...

Please sign up or login with your details

Forgot password? Click here to reset